Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
97 tokens/sec
GPT-4o
11 tokens/sec
Gemini 2.5 Pro Pro
47 tokens/sec
o3 Pro
5 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Comprehensive Taxonomies of Nature- and Bio-inspired Optimization: Inspiration versus Algorithmic Behavior, Critical Analysis and Recommendations (from 2020 to 2024) (2002.08136v5)

Published 19 Feb 2020 in cs.AI

Abstract: In recent years, bio-inspired optimization methods, which mimic biological processes to solve complex problems, have gained popularity in recent literature. The proliferation of proposals prove the growing interest in this field. The increase in nature- and bio-inspired algorithms, applications, and guidelines highlights growing interest in this field. However, the exponential rise in the number of bio-inspired algorithms poses a challenge to the future trajectory of this research domain. Along the five versions of this document, the number of approaches grows incessantly, and where having a new biological description takes precedence over real problem-solving. This document presents two comprehensive taxonomies. One based on principles of biological similarity, and the other one based on operational aspects associated with the iteration of population models that initially have a biological inspiration. Therefore, these taxonomies enable researchers to categorize existing algorithmic developments into well-defined classes, considering two criteria: the source of inspiration, and the behavior exhibited by each algorithm. Using these taxonomies, we classify 518 algorithms based on nature-inspired and bio-inspired principles. Each algorithm within these categories is thoroughly examined, allowing for a critical synthesis of design trends and similarities, and identifying the most analogous classical algorithm for each proposal. From our analysis, we conclude that a poor relationship is often found between the natural inspiration of an algorithm and its behavior. Furthermore, similarities in terms of behavior between different algorithms are greater than what is claimed in their public disclosure: specifically, we show that more than one-fourth of the reviewed solvers are versions of classical algorithms. The conclusions from the analysis of the algorithms lead to several learned lessons.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (627)
  1. Comprehensive taxonomies of nature-and bio-inspired optimization: Inspiration versus algorithmic behavior, critical analysis recommendations. Cognitive Computation. 2020;12; p. 897–939.
  2. Nature-and bio-inspired optimization: the good, the bad, the ugly and the hopeful. DYNA Ingeniería e Industria. 2022;97(2); p. 114–117.
  3. Bio-inspired computation: Where we stand and what’s next. Swarm and Evolutionary Computation. 2019;48; p. 220–250.
  4. A prescription of methodological guidelines for comparing bio-inspired optimization algorithms. Swarm and Evolutionary Computation. 2021;67; p. 100973.
  5. A Tutorial On the design, experimentation and application of metaheuristic algorithms to real-World optimization problems. Swarm and Evolutionary Computation. 2021;64; p. 100888.
  6. Pintea CM. Bio-inspired Computing. In: Advances in Bio-inspired Computing for Combinatorial Optimization Problems. Springer Berlin Heidelberg; 2014. p. 3–19.
  7. Metaheuristics in large-scale global continues optimization: A survey. Information Sciences. 2015;295; p. 407–428.
  8. Lights and shadows in Evolutionary Deep Learning: Taxonomy, critical methodological analysis, cases of study, learned lessons, recommendations and challenges. Information Fusion. 2021;67; p. 161–194.
  9. Sörensen K. Metaheuristics–the metaphor exposed. International Transactions In Operational Research. 2015;22(1); p. 3–18.
  10. A new population-based nature-inspired algorithm every month: is the current era coming to the end. In: Proceedings of the 3rd Student Computer Science Research Conference; 2016. p. 33–37.
  11. Weyland D. A critical analysis of the harmony search algorithm – how not to solve sudoku. Operations Research Perspectives. 2015;2; p. 97–105.
  12. Metaheuristics in structural optimization and discussions on harmony search algorithm. Swarm and Evolutionary Computation. 2016;28; p. 88–97.
  13. How novel is the “novel” black hole optimization approach? Information Sciences. 2014;267; p. 191–200.
  14. Grey Wolf, Firefly and Bat Algorithms: Three Widespread Algorithms that Do Not Contain Any Novelty. In: International Conference on Swarm Intelligence. vol. 12421; 2020. p. 121–133.
  15. Tzanetos A, Dounias G. Nature inspired optimization algorithms or simply variations of metaheuristics? Artificial Intelligence Review. 2021;54(3); p. 1841–1862.
  16. Metaphor-based metaheuristics, a call for action: the elephant in the room. Swarm Intelligence. 2022;16; p. 1–6.
  17. Piotrowski AP, Napiorkowski JJ. Some metaheuristics should be simplified. Information Sciences. 2018;427; p. 32–62.
  18. Why the Intelligent Water Drops Cannot Be Considered as a Novel Algorithm. In: Swarm Intelligence; 2018. p. 302–314.
  19. The intelligent water drops algorithm: why it cannot be considered a novel algorithm: A brief discussion on the use of metaphors in optimization. Swarm Intelligence. 2019;13; p. 173–192.
  20. An analysis of why cuckoo search does not bring any novel ideas to optimization. Computers & Operations Research. 2022;142; p. 105747.
  21. Kudela J. A critical problem in benchmarking and analysis of evolutionary computation methods. Nature Machine Intelligence. 2022;4(12); p. 1238–1245.
  22. Campelo F, Aranha C. Lessons from the Evolutionary Computation Bestiary. Artificial Life. 2023;29(4); p. 421–432.
  23. Tzanetos A. Does the Field of Nature-Inspired Computing Contribute to Achieving Lifelike Features? Artificial Life. 2023;29(4); p. 487–511.
  24. Exposing the grey wolf, moth-flame, whale, firefly, bat, and antlion algorithms: six misleading optimization techniques inspired by bestial metaphors. International Transactions in Operational Research. 2023;30(6); p. 2945–2971.
  25. Kudela J. The Evolutionary Computation Methods No One Should Use; 2023.
  26. Research orientation and novelty discriminant for new metaheuristic algorithms. Applied Soft Computing. 2024;157; p. 111521.
  27. Similarity in metaheuristics: A gentle step towards a comparison methodology. Natural Computing. 2022;21; p. 265–287.
  28. Metaheuristics "In the Large”. European Journal of Operational Research. 2022;297(2); p. 393–406.
  29. Designing New Metaheuristics: Manual Versus Automatic Approaches. Intelligent Computing. 2023;2; p. 0048.
  30. Jia H, Lu C. Guided learning strategy: A novel update mechanism for metaheuristic algorithms design and improvement. Knowledge-Based Systems. 2024;286; p. 111402.
  31. Walden A, Buzdalov M. A Simple Statistical Test Against Origin-Biased Metaheuristics. In: International Conference on the Applications of Evolutionary Computation; 2024. p. 322–337.
  32. On detecting the novelties in metaphor-based algorithms. In: Proceedings of the Genetic and Evolutionary Computation Conference Companion; 2021. p. 71–72.
  33. A new taxonomy of global optimization algorithms. Natural Computing. 2020;(21); p. 219–242.
  34. An exhaustive review of the metaheuristic algorithms for search and optimization: Taxonomy, applications, and open challenges. Artificial Intelligence Review. 2023;56; p. 13187–13257.
  35. Initialization of metaheuristics: comprehensive review, critical analysis, and research directions. International Transactions in Operational Research. 2023;30(6); p. 3361–3397.
  36. Ferrer J, Delgado-Pérez P. Metaheuristics in a Nutshell. In: Optimising the Software Development Process with Artificial Intelligence. Springer; 2023. p. 279–307.
  37. Sharma P, Raju S. Metaheuristic optimization algorithms: A comprehensive overview and classification of benchmark test functions. Soft Computing. 2024;28(4); p. 3123–3186.
  38. A literature review and critical analysis of metaheuristics recently developed. Archives of Computational Methods in Engineering. 2024;31; p. 125–146.
  39. Metaheuristic Optimization Algorithms: an overview. HCMCOU Journal of Science–Advances in Computational Structures. 2024;14(1); p. 1–28.
  40. 50 years of metaheuristics. In Press European Journal of Operational Research. 2024;DOI: 10.1016/j.ejor.2024.04.004.
  41. Tang K, Yao X. Learn to Optimize-A Brief Overview. National Science Review. 2024;p. 1–10.
  42. Kar AK. Bio inspired computing – A review of algorithms and scope of applications. Expert Systems with Applications. 2016;59; p. 20–32.
  43. A walk into metaheuristics for engineering optimization: principles, methods and recent trends. International Journal of Computational Intelligence Systems. 2015;8(4); p. 606–636.
  44. An Insight into Bio-inspired and Evolutionary Algorithms for Global Optimization: Review, Analysis, and Lessons Learnt over a Decade of Competitions. Cognitive Computation. 2018;10(4); p. 517–544.
  45. A survey of multi-objective metaheuristics applied to structural optimization. Structural and Multidisciplinary Optimization. 2014;49(4); p. 537–558.
  46. Bio-Inspired Computation in Telecommunications. Morgan Kaufmann; 2015. p. 1–21.
  47. Beni G, Wang J. Swarm Intelligence in Cellular Robotic Systems. In: Robots and Biological Systems: Towards a New Bionics?; 1993. p. 703–712.
  48. Fong S. Opportunities and Challenges of Integrating Bio-Inspired Optimization and Data Mining Algorithms. In: Swarm Intelligence and Bio-Inspired Computation. Elsevier; 2013. p. 385–402.
  49. Bioinspired computational intelligence and transportation systems: a long road ahead. IEEE Transactions on Intelligent Transportation Systems. 2019;21(2); p. 466–495.
  50. Particle Swarm Optimization: Basic Concepts, Variants and Applications in Power Systems. IEEE Transactions on Evolutionary Computation. 2008;12(2); p. 171–195.
  51. Dressler F, Akan OB. A survey on bio-inspired networking. Computer Networks. 2010;54(6); p. 881 – 900.
  52. José-García A, Gómez-Flores W. Automatic clustering using nature-inspired metaheuristics: A survey. Applied Soft Computing. 2016;41; p. 192 – 213.
  53. The Impact of Bio-Inspired Approaches Toward the Advancement of Face Recognition. ACM Computing Surveys. 2015;48(5); p. 1–33.
  54. Bio-inspired optimization for the molecular docking problem: State of the art, recent results and perspectives. Applied Soft Computing. 2019;79; p. 30–45.
  55. Swarm intelligence in intrusion detection: A survey. Computers and Security. 2011;30(8); p. 625–642.
  56. A review of particle swarm optimization. Part I: background and development. Natural Computing. 2007;6(4); p. 467–484.
  57. Neri F, Tirronen V. Recent advances in differential evolution: a survey and experimental analysis. Artificial Intelligence Review. 2010;33; p. 61–106.
  58. Das S, Suganthan PN. Differential Evolution: A Survey of the State-of-the-Art. IEEE Transactions on Evolutionary Computation. 2011;15(1); p. 4–31.
  59. Recent advances in differential evolution – An updated survey. Swarm and Evolutionary Computation. 2016;27; p. 1–30.
  60. A comprehensive survey: artificial bee colony (ABC) algorithm and applications. Artificial Intelligence Review. 2014;42; p. 21–57.
  61. A survey on bee colony algorithms. In: 2010 IEEE International Symposium on Parallel Distributed Processing, Workshops and Phd Forum (IPDPSW); 2010. p. 1–8.
  62. Bacterial Foraging Optimization Algorithm: Theoretical Foundations, Analysis, and Applications. In: Foundations of Computational Intelligence Volume 3: Global Optimization. Springer Berlin Heidelberg; 2009. p. 23–55.
  63. Yang XS, He X. Bat Algorithm: Literature Review and Applications. International Journal of Bio-Inspired Computation. 2013;5(3); p. 141–149.
  64. Swarm intelligence: from natural to artificial systems. Oxford University press; 1999.
  65. Yang XS. Nature-Inspired Optimization Algorithms. Elsevier; 2014.
  66. Particle Swarm Optimization and Differential Evolution Algorithms: Technical Analysis, Applications and Hybridization Perspectives. In: Advances of Computational Intelligence in Industrial Systems. Springer Berlin Heidelberg; 2008. p. 1–38.
  67. Comparison among five evolutionary-based optimization algorithms. Advanced Engineering Informatics. 2005;19(1); p. 43–53.
  68. A study on recent bio-inspired optimization algorithms. In: 2017 Fourth International Conference on Signal Processing, Communication and Networking (ICSCN); 2017. p. 1–6.
  69. Nature-Inspired Meta-Heuristics on Modern GPUs: State of the Art and Brief Survey of Selected Algorithms. International Journal of Parallel Programming. 2014;42(5); p. 681–709.
  70. Swarm Intelligence and Evolutionary Algorithms: performance versus speed. Information Sciencies. 2017;384; p. 34–85.
  71. El-Abd M. Performance assessment of foraging algorithms vs. evolutionary algorithms. Information Sciences. 2012;182(1); p. 243–263.
  72. Bi-level multi-objective evolution of a Multi-Layered Echo-State Network Autoencoder for data representations. Neurocomputing. 2019;341; p. 195–211.
  73. PSO-based analysis of Echo State Network parameters for time series forecasting. Applied Soft Computing. 2017;55; p. 211–225.
  74. A Brief Review of Nature-Inspired Algorithms for Optimization. Elektrotehniski Vestnik. 2013;80(3); p. 1–7.
  75. A survey of nature inspired algorithms. International Journal of Applied Engineering Research. 2015;10; p. 19313–19324.
  76. A survey on nature inspired meta-heuristic algorithms with its domain specifications. In: 2016 International Conference on Communication and Electronics Systems (ICCES); 2016. p. 1–6.
  77. Kumar Kar A. Bio inspired computing – A review of algorithms and scope of applications. Expert Systems With Applications. 2016;59; p. 20–32.
  78. Learning–interaction–diversification framework for swarm intelligence optimizers: a unified perspective. Neural Computing and Applications. 2020;(32); p. 1789––1809.
  79. Optimization by Simulated Annealing. Science. 1989;220(4598); p. 671–680.
  80. Eberhart R, Kennedy J. A new optimizer using particle swarm theory. In: MHS’95. Proceedings of the Sixth International Symposium on Micro Machine and Human Science; 1995. p. 39–43.
  81. Braik MS. Chameleon Swarm Algorithm: A bio-inspired optimizer for solving engineering design problems. Expert Systems with Applications. 2021;174; p. 114685.
  82. Adham M, Bentley P. An Artificial Ecosystem Algorithm applied to static and Dynamic Travelling Salesman Problems. In: IEEE SSCI 2014 - 2014 IEEE Symposium Series on Computational Intelligence - IEEE ICES: 2014 IEEE International Conference on Evolvable Systems, Proceedings; 2015. p. 149–156.
  83. Artificial ecosystem-based optimization: a novel nature-inspired meta-heuristic algorithm. Neural Computing and Applications. 2020;32; p. 9383–9425.
  84. Huang G. Artificial infectious disease optimization: A SEIQR epidemic dynamic model-based function optimization algorithm. Swarm and Evolutionary Computation. 2016;27; p. 31–67.
  85. ARO: A new model-free optimization algorithm inspired from asexual reproduction. Applied Soft Computing. 2010;10(4); p. 1284–1292.
  86. Simon D. Biogeography-Based Optimization. IEEE Transactions on Evolutionary Computation. 2008;12(6); p. 702–713.
  87. Askarzadeh A. Bird mating optimizer: An optimization algorithm inspired by bird mating strategies. Communications in Nonlinear Science and Numerical Simulation. 2014;19(4); p. 1213 – 1228.
  88. Post-disaster restoration based on fuzzy preference relation and Bean Optimization Algorithm. In: 2010 IEEE Youth Conference on Information, Computing and Telecommunications; 2010. p. 271–274.
  89. Coronavirus mask protection algorithm: A new bio-inspired optimization algorithm and its applications. Journal of Bionic Engineering. 2023;20; p. 1747–1765.
  90. COVIDOA: a novel evolutionary optimization algorithm based on coronavirus disease replication lifecycle. Neural Computing and Applications. 2022;34(24); p. 22465–22492.
  91. The coral reefs optimization algorithm: a novel metaheuristic for efficiently solving optimization problems. The Scientific World Journal. 2014;2014; p. 739768.
  92. Introducing dendritic cells as a novel immune-inspired algorithm for anomaly detection. In: International Conference on Artificial Immune Systems; 2005. p. 153–167.
  93. Price K, Storn R. A simple and efficient heuristic for global optimization over continuous spaces. Journal of Global Optimization. 1997;11(4); p. 341–359.
  94. Ecogeography-based optimization: Enhancing biogeography-based optimization with ecogeographic barriers and differentiations. Computers and Operations Research. 2014;50; p. 115–127.
  95. Parpinelli RS, Lopes HS. An eco-inspired evolutionary algorithm applied to numerical optimization. In: 2011 Third World Congress on Nature and Biologically Inspired Computing; 2011. p. 466–471.
  96. Earthworm optimisation algorithm: a bio-inspired metaheuristic algorithm for global optimisation problems. IJBIC. 2018;12(1); p. 1–22.
  97. Beyer HG, Schwefel HP. Evolution strategies – A comprehensive introduction. Natural Computing. 2002;1; p. 3–52.
  98. Genetic algorithms: concepts and applications [in engineering design]. IEEE Transactions on Industrial Electronics. 1996;43(5); p. 519–534.
  99. Ferreira C. Gene Expression Programming in Problem Solving. In: Soft Computing and Industry: Recent Applications. Springer London; 2002. p. 635–653.
  100. A hybrid rice optimization algorithm. In: 2016 11th International Conference on Computer Science Education (ICCSE); 2016. p. 169–174.
  101. Viral System to Solve Optimization Problems: An Immune-Inspired Computational Intelligence Approach. In: Artificial Immune Systems; 2008. p. 83–94.
  102. Research on permutation flow-shop scheduling problem based on improved genetic immune algorithm with vaccinated offspring. Procedia Computer Science. 2017;112; p. 427–436.
  103. Mehrabian AR, Lucas C. A novel numerical optimization algorithm inspired from weed colonization. Ecological Informatics. 2006;1(4); p. 355–366.
  104. Abbass HA. MBO: marriage in honey bees optimization-a Haplometrosis polygynous swarming approach. In: Proceedings of the 2001 IEEE Congress on Evolutionary Computation. vol. 1; 2001. p. 207–214.
  105. Mushroom Reproduction Optimization (MRO): A Novel Nature-Inspired Evolutionary Algorithm. In: 2018 IEEE Congress on Evolutionary Computation (CEC); 2018. p. 1–10.
  106. Sung Hoon Jung. Queen-bee evolution for genetic algorithms. Electronics Letters. 2003;39(6); p. 575–576.
  107. A new evolutionary algorithm based on bacterial evolution and its application for scheduling a flexible manufacturing system. Jurnal Teknik Industri. 2012;14(1); p. 1–12.
  108. Stem Cells Optimization Algorithm. In: Bio-Inspired Computing and Applications; 2012. p. 394–403.
  109. A new evolutionary algorithm based on sheep flocks heredity model and its application to scheduling problem. In: IEEE SMC’99 Conference Proceedings. 1999 IEEE International Conference on Systems, Man, and Cybernetics. vol. 6; 1999. p. 503–508.
  110. Swine Influenza Models Based Optimization (SIMBO). Applied Soft Computing. 2013;13(1); p. 628–653.
  111. Zelinka I. SOMA — Self-Organizing Migrating Algorithm. In: New Optimization Techniques in Engineering. Springer Berlin Heidelberg; 2004. p. 167–217.
  112. T Cell Immune Algorithm: A Novel Nature-Inspired Algorithm for Engineering Applications. IEEE Access. 2023;11; p. 95545–95566.
  113. Variable mesh optimization for continuous optimization problems. Soft Computing. 2012;16(3); p. 511–525.
  114. Jaderyan M, Khotanlou H. Virulence Optimization Algorithm. Applied Soft Computing. 2016;43; p. 596–618.
  115. The Ant System: Optimization by a colony of cooperating agents. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics). 1996;26(1); p. 29–41.
  116. Karaboga D, Basturk B. A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm. Journal of Global Optimization. 2007;39(3); p. 459–471.
  117. Yang XS. Firefly Algorithms for Multimodal Optimization. In: Stochastic Algorithms: Foundations and Applications; 2009. p. 169–178.
  118. Grasshopper Optimisation Algorithm: Theory and application. Advances in Engineering Software. 2017;105; p. 30–47.
  119. Brabazon A, McGarraghy S. Foraging-Inspired Optimisation Algorithms. Natural Computing Series, Springer; 2018.
  120. Artificial algae algorithm (AAA) for nonlinear global optimization. Applied Soft Computing. 2014;31; p. 153–171.
  121. An artificial beehive algorithm for continuous optimization. International Journal of Intelligent Systems. 2009;24(11); p. 1080–1093.
  122. Mathematical models and a hunting search algorithm for the no-wait flowshop scheduling with parallel machines. International Journal of Production Research. 2014;52(9); p. 2667–2681.
  123. Odili JB, Mohmad Kahar MN. Solving the Traveling Salesman’s Problem Using the African Buffalo Optimization. Computational Intelligence and Neuroscience. 2016;2016; p. 1510256.
  124. Almonacid B, Soto R. Andean Condor Algorithm for cell formation problems. Natural Computing. 2019;18(2); p. 351–381.
  125. Lamy JB. Artificial Feeding Birds (AFB): a new metaheuristic inspired by the behavior of pigeons. In: Advances in nature-inspired computing and applications; 2019. p. 43–60.
  126. Artificial hummingbird algorithm: A new bio-inspired optimizer with its engineering applications. Computer Methods in Applied Mechanics and Engineering. 2022;388; p. 114194.
  127. The archerfish hunting optimizer: A novel metaheuristic algorithm for global optimization. Arabian Journal for Science and Engineering. 2022;47(2); p. 2513–2553.
  128. Animal migration optimization: an optimization algorithm inspired by animal migration behavior. Neural Computing and Applications. 2014;24(7); p. 1867–1877.
  129. An aphid inspired metaheuristic optimization algorithm and its application to engineering. Scientific Reports. 2022;12; p. 18064.
  130. Mirjalili S. The Ant Lion Optimizer. Advances in Engineering Software. 2015;83; p. 80–98.
  131. Aquila Optimizer: A novel meta-heuristic optimization algorithm. Computers & Industrial Engineering. 2021;157; p. 107250.
  132. Pook MF, Ramlan EI. The Anglerfish algorithm: a derivation of randomized incremental construction technique for solving the traveling salesman problem. Evolutionary Intelligence. 2019;12; p. 11–20.
  133. The Arithmetic Optimization Algorithm. Computer Methods in Applied Mechanics and Engineering. 2021;376; p. 113609.
  134. Artificial rabbits optimization: A new bio-inspired meta-heuristic algorithm for solving engineering optimization problems. Engineering Applications of Artificial Intelligence. 2022;114; p. 105082.
  135. Artificial Searching Swarm Algorithm for solving constrained optimization problems. In: 2009 IEEE International Conference on Intelligent Computing and Intelligent Systems. vol. 1; 2009. p. 562–565.
  136. Artificial tribe algorithm and its performance analysis. Journal of Software. 2012;7(3); p. 651–656.
  137. A New Engineering Optimization Method African Wild Dog Algorithm. International Journal of Soft Computing. 2013;8(3); p. 163–170.
  138. Mohapatra S, Mohapatra P. American zebra optimization algorithm for global optimization problems. Scientific Reports. 2023;13; p. 5211.
  139. Novel meta-heuristic bald eagle search optimisation algorithm. Artificial Intelligence Review. 2019;(53); p. 2237–2264.
  140. The Bees Algorithm — A Novel Tool for Complex Optimisation Problems. In: Intelligent Production Machines and Systems; 2006. p. 454–459.
  141. Comellas F, Martinez-Navarro J. Bumblebees: A Multiagent Combinatorial Optimization Algorithm Inspired by Social Insect Behaviour. In: Proceedings of the First ACM/SIGEVO Summit on Genetic and Evolutionary Computation; 2009. p. 811–814.
  142. Proposal of a new swarm optimization method inspired in bison behavior. Advances in Intelligent Systems and Computing. 2019;837; p. 146–156.
  143. Häckel S, Dippold P. The Bee Colony-inspired Algorithm (BCiA): A Two-stage Approach for Solving the Vehicle Routing Problem with Time Windows. In: Proceedings of the 11th Annual Conference on Genetic and Evolutionary Computation; 2009. p. 25–32.
  144. Teodorović D, Dell’Orco M. Bee colony optimization - A cooperative learning approach to complex transportation problems. Advanced OR and AI Methods in Transportation. 2005;51; p. 51–60.
  145. Niu B, Wang H. Bacterial Colony Optimization: Principles and Foundations. In: Emerging Intelligent Computing Technology and Applications; 2012. p. 501–506.
  146. Optimization Based on Bacterial Chemotaxis. IEEE Transactions On Evolutionary Computation. 2002;6(1); p. 16–29.
  147. Border Collie Optimization. IEEE Access. 2020;8; p. 109177–109197.
  148. Lui Y, Passino KM. Biomimicry of Social Foraging Bacteria for Distributed Optimization: Models, Principles, and Emergent Behaviors. Journal of Optimization Theory and Applications. 2002;115(3); p. 603–628.
  149. A Novel Optimization Approach: Bacterial-GA Foraging. In: Second International Conference on Innovative Computing, Informatio and Control (ICICIC 2007); 2007. p. 391–391.
  150. BeeHive: An Efficient Fault-Tolerant Routing Algorithm Inspired by Honey Bee Behavior. In: Ant Colony Optimization and Swarm Intelligence, Proceeding; 2004. p. 83–94.
  151. Fog computing job scheduling optimization based on bees swarm. Enterprise Information Systems. 2018;12(4); p. 373–397.
  152. Bat intelligence search with application to multi-objective multiprocessor scheduling optimization. International Journal of Advanced Manufacturing Technology. 2012;60(9-12); p. 1071–1086.
  153. Yang XS. A New Metaheuristic Bat-Inspired Algorithm. In: Nature Inspired Cooperative Strategies for Optimization (NICSO 2010). Springer; 2010. p. 65–74.
  154. Biology migration algorithm: a new nature-inspired heuristic methodology for global optimization. Soft Computing. 2019;23(16); p. 7333–7358.
  155. Barnacles Mating Optimizer Algorithm for Optimization. In: Proceedings of the 10th National Technical Seminar on Underwater System Technology 2018; 2019. p. 211–218.
  156. A robust clustering method based on blind, naked mole-rats (BNMR) algorithm. Swarm and Evolutionary Computation. 2013;10; p. 1–11.
  157. Butterfly optimizer. In: 2015 IEEE Workshop on Computational Intelligence: Theories, Applications and Future Directions (WCI); 2015. p. 1–6.
  158. Das AK, Pratihar DK. A new bonobo optimizer (BO) for real-parameter optimization. In: 2019 IEEE Region 10 Symposium (TENSYMP); 2019. p. 108–113.
  159. Findik O. Bull optimization algorithm based on genetic operators for continuous optimization problems. Turkish Journal of Electrical Engineering & Computer Sciences. 2015;23; p. 2225–2239.
  160. Sato T, Hagiwara M. Bee System: Finding solution by a concentrated search. In: Proceedings of the IEEE International Conference on Systems, Man and Cybernetics. vol. 4; 1997. p. 3954–3959.
  161. Lucic P, Teodorovic D. Transportation modeling: an artificial life approach. In: Proceedings of the 14th IEEE International Conference on Tools with Artificial Intelligence (ICTAI 2002); 2002. p. 216–223.
  162. A new bio-inspired optimisation algorithm: Bird Swarm Algorithm. Journal of Experimental and Theoretical Artificial Intelligence. 2016;28(4); p. 673–687.
  163. A novel bee swarm optimization algorithm for numerical function optimization. Communications in Nonlinear Science and Numerical Simulation. 2010;15(10); p. 3142–3155.
  164. Bioluminescent Swarm Optimization Algorithm. In: Evolutionary Algorithms. IntechOpen; 2011. .
  165. Biological survival optimization algorithm with its engineering and neural network applications. Soft Computing. 2023;27(10); p. 6437–6463.
  166. Cooperative Bees Swarm for Solving the Maximum Weighted Satisfiability Problem. In: Computational Intelligence and Bioinspired Systems; 2005. p. 318–325.
  167. Buzzard optimization algorithm: a nature-inspired metaheuristic algorithm. Majlesi Journal of Electrical Engineering. 2019;13(3); p. 83–98.
  168. Hayyolalam V, Pourhaji Kazem AA. Black Widow Optimization Algorithm: A novel meta-heuristic approach for solving engineering optimization problems. Engineering Applications of Artificial Intelligence. 2020;87; p. 103249.
  169. Beluga whale optimization: A novel nature-inspired metaheuristic algorithm. Knowledge-Based Systems. 2022;251; p. 109215.
  170. Binary whale optimization algorithm: a new metaheuristic approach for profit-based unit commitment problems in competitive electricity markets. Engineering Optimization. 2019;51(3); p. 369–389.
  171. An algorithm for global optimization inspired by collective animal behavior. Discrete Dynamics in Nature and Society. 2012;2012; p. 638275.
  172. Cheetah based optimization algorithm: A novel swarm intelligence paradigm. In: ESANN 2018 - Proceedings, European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning; 2018. p. 685–690.
  173. Improved binary particle swarm optimization using catfish effect for feature selection. Expert Systems with Applications. 2011;38(10); p. 12699–12707.
  174. Canayaz M, Karci A. Cricket behaviour-based evolutionary computation technique in solving engineering optimization problems. Applied Intelligence. 2016;44(2); p. 362–376.
  175. Cultural coyote optimization algorithm applied to a heavy duty gas turbine operation. Energy Conversion and Management. 2019;199; p. 111932.
  176. Chaotic crow search algorithm for fractional optimization problems. Applied Soft Computing. 2018;71; p. 1161–1175.
  177. Chaotic dragonfly algorithm: an improved metaheuristic algorithm for feature selection. Applied Intelligence. 2019;49; p. 188–205.
  178. Cuttlefish Algorithm – A Novel Bio-Inspired Optimization Algorithm. International Journal of Scientific and Engineering Research. 2013;4(9); p. 1978–1986.
  179. Iordache S. A Hierarchical Cooperative Evolutionary Algorithm. In: Proceedings of the 12th Annual Conference on Genetic and Evolutionary Computation; 2010. p. 225–232.
  180. Camel Herds Algorithm: a New Swarm Intelligent Algorithm to Solve Optimization Problems. International Journal on Perceptive and Cognitive Computing. 2017;3(1); p. 1–5.
  181. Khishe M, Mosavi MR. Chimp optimization algorithm. Expert Systems with Applications. 2020;149; p. 113338.
  182. Rajabioun R. Cuckoo Optimization Algorithm. Applied Soft Computing. 2011;11(8); p. 5508–5518.
  183. Ibrahim MK, Salim Ali R. Novel Optimization Algorithm Inspired by Camel Traveling Behavior. Iraq Journal Electrical and Electronic Engineering. 2016;12(2); p. 167–177.
  184. Pierezan J, Dos Santos Coelho L. Coyote Optimization Algorithm: A New Metaheuristic for Global Optimization Problems. In: 2018 IEEE Congress on Evolutionary Computation (CEC); 2018. p. 1–8.
  185. Naruei I, Keynia F. A new optimization method based on COOT bird natural life model. Expert Systems with Applications. 2021;183; p. 115352.
  186. Coati Optimization Algorithm: A new bio-inspired metaheuristic algorithm for solving optimization problems. Knowledge-Based Systems. 2023;259; p. 110011.
  187. Crested Porcupine Optimizer: A new nature-inspired metaheuristic. Knowledge-Based Systems. 2024;284; p. 111257.
  188. Yang X, Deb S. Cuckoo Search via Lévy flights. In: 2009 World Congress on Nature Biologically Inspired Computing (NaBIC); 2009. p. 210–214.
  189. Askarzadeh A. A novel metaheuristic method for solving constrained engineering optimization problems: Crow search algorithm. Computers and Structures. 2016;169; p. 1–12.
  190. Circle search algorithm: A geometry-based metaheuristic optimization algorithm. Mathematics. 2022;10(10); p. 1626.
  191. Cat Swarm Optimization. In: PRICAI 2006: Trends in Artificial Intelligence; 2006. p. 854–858.
  192. A New Bio-inspired Algorithm: Chicken Swarm Optimization. In: Advances in Swarm Intelligence; 2014. p. 86–94.
  193. Mirjalili S. Dragonfly algorithm: a new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems. Neural Computing and Applications. 2016;27(4); p. 1053–1073.
  194. Bhardwaj S, Kim DS. Dragonfly-based swarm system model for node identification in ultra-reliable low-latency communication. Neural Computing and Applications. 2020;33; p. 1837–1880.
  195. Kaveh A, Farhoudi N. A new optimization method: Dolphin echolocation. Advances in Engineering Software. 2013;59; p. 53–70.
  196. Dynamic Hunting Leadership optimization: Algorithm and applications. Journal of Computational Science. 2023;69; p. 102010.
  197. Deer Hunting Optimization Algorithm: A New Nature-Inspired Meta-heuristic Paradigm. The Computer Journal. 2019;p. 1–20.
  198. Dwarf Mongoose Optimization Algorithm. Computer Methods in Applied Mechanics and Engineering. 2022;391; p. 114570.
  199. Dandelion Optimizer: A nature-inspired metaheuristic algorithm for engineering applications. Engineering Applications of Artificial Intelligence. 2022;114; p. 105075.
  200. Dingo optimizer: a nature-inspired metaheuristic approach for engineering problems. Mathematical Problems in Engineering. 2021;2021; p. 2571863.
  201. A Dolphin Partner Optimization. In: 2009 WRI Global Congress on Intelligent Systems. vol. 1; 2009. p. 124–128.
  202. DTO: Donkey Theorem Optimization. In: 2019 27th Iranian Conference on Electrical Engineering (ICEE); 2019. p. 1855–1859.
  203. Kusuma PD, Hasibuan FC. Enriched Coati Osprey Algorithm: A Swarm-based Metaheuristic and Its Sensitivity Evaluation of Its Strategy. IAENG International Journal of Applied Mathematics. 2024;54(2).
  204. Electric eel foraging optimization: A new bio-inspired optimizer for engineering applications. Expert Systems with Applications. 2024;238; p. 122200.
  205. Yilmaz S, Sen S. Electric fish optimization: a new heuristic algorithm inspired by electrolocation. Neural Computing and Applications. 2020;32(15); p. 11543–11578.
  206. Elephant Herding Optimization. In: 2015 3rd International Symposium on Computational and Business Intelligence (ISCBI); 2015. p. 1–5.
  207. Elk herd optimizer: a novel nature-inspired metaheuristic algorithm. Artificial Intelligence Review. 2024;57(3); p. 48.
  208. Ebola Optimization Search Algorithm: A New Nature-Inspired Metaheuristic Optimization Algorithm. IEEE Access. 2022;10; p. 16150–16177.
  209. Emperor Penguins Colony: a new metaheuristic algorithm for optimization. Evolutionary Intelligence. 2019;12; p. 211–226.
  210. Dhiman G, Kumar V. Emperor penguin optimizer: a bio-inspired algorithm for engineering problems. Knowledge-Based Systems. 2018;159; p. 20–50.
  211. Yang XS, Deb S. Eagle Strategy Using Lévy Walk and Firefly Algorithms for Stochastic Optimization. In: Nature Inspired Cooperative Strategies for Optimization (NICSO 2010). Springer Berlin Heidelberg; 2010. p. 101–111.
  212. Elephant Search Algorithm for optimization problems. In: 2015 Tenth International Conference on Digital Information Management (ICDIM); 2015. p. 249–255.
  213. Mandal S. Elephant swarm water search algorithm for global optimization. Sādhanā. 2018;43; p. 1–21.
  214. Egyptian Vulture Optimization Algorithm – A New Nature Inspired Meta-heuristics for Knapsack Problem. In: The 9th International Conference on Computing and InformationTechnology (IC2IT2013); 2013. p. 227–237.
  215. A flocking based algorithm for document clustering analysis. Journal of Systems Architecture. 2006;52(8-9); p. 505–515.
  216. A Fast Bacterial Swarming Algorithm for high-dimensional function optimization. In: 2008 IEEE Congress on Evolutionary Computation (IEEE World Congress on Computational Intelligence); 2008. p. 3135–3140.
  217. Frog call-inspired self-organizing anti-phase synchronization for wireless sensor networks. In: 2009 2nd International Workshop on Nonlinear Dynamics and Synchronization; 2009. p. 81–88.
  218. Fire Hawk Optimizer: A novel metaheuristic algorithm. Artificial Intelligence Review. 2023;56; p. 287–363.
  219. Bellaachia A, Bari A. Flock by Leader: A Novel Machine Learning Biologically Inspired Clustering Algorithm. In: Advances in Swarm Intelligence; 2012. p. 117–126.
  220. Frilled Lizard Optimization: A Novel Nature-Inspired Metaheuristic Algorithm for Solving Optimization Problems. Preprints. 2024;p. 1–44.
  221. Pan WT. A new Fruit Fly Optimization Algorithm: Taking the financial distress model as an example. Knowledge-Based Systems. 2012;26; p. 69–74.
  222. Design of heat exchangers using Falcon Optimization Algorithm. Applied Thermal Engineering. 2019;156; p. 119–144.
  223. Mohammed H, Rashid T. FOX: a FOX-inspired optimization algorithm. Applied Intelligence. 2023;53; p. 1030–1050.
  224. Optimizing method based on autonomous animats: Fish-swarm Algorithm. System Engineering Theory and Practice. 2002;22(11); p. 32–38.
  225. Tsai HC, Lin YH. Modification of the fish swarm algorithm with particle swarm optimization formulation and communication behavior. Applied Soft Computing. 2011;11(8); p. 5367 – 5374.
  226. A novel search algorithm based on fish school behavior. In: 2008 IEEE International Conference on Systems, Man and Cybernetics; 2008. p. 2646–2651.
  227. Green Anaconda Optimization: A New Bio-Inspired Metaheuristic Algorithm for Solving Optimization Problems. Biomimetics. 2023;8(1); p. 121.
  228. Giant Armadillo Optimization: A New Bio-Inspired Metaheuristic Algorithm for Solving Optimization Problems. Biomimetics. 2023;8(8); p. 619.
  229. Min H, Wang Z. Design and analysis of Group Escape Behavior for distributed autonomous mobile robots. In: 2011 IEEE International Conference on Robotics and Automation; 2011. p. 6128–6135.
  230. Golden eagle optimizer: A nature-inspired metaheuristic algorithm. Computers & Industrial Engineering. 2021;152; p. 107050.
  231. Chopra N, Mohsin Ansari M. Golden jackal optimization: A novel nature-inspired optimizer for engineering applications. Expert Systems with Applications. 2022;198; p. 116924.
  232. Genghis Khan shark optimizer: A novel nature-inspired algorithm for engineering optimization. Advanced Engineering Informatics. 2023;58; p. 102210.
  233. Good Lattice Swarm Algorithm for Constrained Engineering Design Optimization. In: 2007 International Conference on Wireless Communications, Networking and Mobile Computing; 2007. p. 6421–6424.
  234. Gazelle optimization algorithm: a novel nature-inspired metaheuristic optimizer. Neural Computing and Applications. 2023;35; p. 4099–4131.
  235. De SK. The goat search algorithms. Artificial Intelligence Review. 2022;(56); p. 8265–8301.
  236. Glowworm Swarm Optimization For Optimization Dispatching System Of Public Transit Vehicles. Journal of Theoretical and Applied Information Technology. 2013;52; p. 205–210.
  237. Group Search Optimizer: An Optimization Algorithm Inspired by Animal Searching Behavior. IEEE Transactions on Evolutionary Computation. 2009;13(5); p. 973–990.
  238. Wang J, Wang D. Particle swarm optimization with a leader and followers. Progress in Natural Science. 2008;18(11); p. 1437–1443.
  239. Artificial gorilla troops optimizer: A new nature-inspired metaheuristic algorithm for global optimization problems. International Journal of Intelligent Systems. 2021;36(10); p. 5887–5958.
  240. Grey Wolf Optimizer. Advances in Engineering Software. 2014;69; p. 46–61.
  241. A novel metaheuristic inspired by Hitchcock birds’ behavior for efficient optimization of large search spaces of high dimensionality. Soft Computing. 2020;24(8); p. 5633–5655.
  242. Honey-Bees Mating Optimization (HBMO) Algorithm: A New Heuristic Approach for Water Resources Optimization. Water Resources Management. 2006;20; p. 661–680.
  243. Hunger games search: Visions, conception, implementation, deep analysis, perspectives, and towards performance shifts. Expert Systems with Applications. 2021;177; p. 114864.
  244. Harris hawks optimization: Algorithm and applications. Future Generation Computer Systems. 2019;97; p. 849–872.
  245. New Hoopoe Heuristic Optimization. International Journal of Science and Advanced Technology. 2012;2(9); p. 85–90.
  246. A novel metaheuristic inspired by horned lizard defense tactics. Artificial Intelligence Review. 2024;57(3); p. 1–59.
  247. Moldovan D. Horse Optimization Algorithm: A Novel Bio-Inspired Algorithm for Solving Global Optimization Problems. In: Artificial Intelligence and Bioinspired Computational Methods; 2020. p. 195–209.
  248. A novel meta-heuristic optimization algorithm inspired by group hunting of animals: Hunting search. Computers and Mathematics with Applications. 2010;60(7); p. 2087–2098.
  249. Quijano N, Passino KM. Honey Bee Social Foraging Algorithms for Resource Allocation, Part I: Algorithm and Theory. In: 2007 American Control Conference; 2007. p. 3383–3388.
  250. Hierarchical Swarm Model: A New Approach to Optimization. Discrete Dynamics in Nature and Society. 2010;2010; p. 379649.
  251. On Nature-Inspired Dynamic Route Planning: Hammerhead Shark Optimization Algorithm. In: 2019 15th International Conference on Emerging Technologies (ICET); 2019. p. 1–6.
  252. Anaraki MV, Farzin S. Humboldt Squid Optimization Algorithm (HSOA): A Novel Nature-Inspired Technique for Solving Optimization Problems. IEEE Access. 2023;11; p. 122069–122115.
  253. A novel hybrid metaheuristic optimization method: hypercube natural aggregation algorithm. Soft Computing. 2020;(24); p. 8823–8856.
  254. Torabi S, Safi-Esfahani F. Improved Raven Roosting Optimization algorithm (IRRO). Swarm and Evolutionary Computation. 2018;40; p. 144–154.
  255. ITGO: Invasive tumor growth optimization algorithm. Applied Soft Computing. 2015;36; p. 670–698.
  256. A Novel Metaheuristic: Jaguar Algorithm with Learning Behavior. In: 2015 IEEE International Conference on Systems, Man, and Cybernetics; 2015. p. 1595–1600.
  257. Chou JS, Truong DN. A novel metaheuristic optimizer inspired by behavior of jellyfish in ocean. Applied Mathematics and Computation. 2021;389; p. 125535.
  258. Hernández H, Blum C. Distributed graph coloring: an approach based on the calling behavior of Japanese tree frogs. Swarm Intelligence. 2012;6(2); p. 117–150.
  259. Hossein Gandomi A, Hossein Alavi A. Krill herd: A new bio-inspired optimization algorithm. Communications in Nonlinear Science and Numerical Simulation. 2012;17(12); p. 4831–4845.
  260. Kookaburra Optimization Algorithm: A New Bio-Inspired Metaheuristic Algorithm for Solving Optimization Problems. Biomimetics. 2023;8(6); p. 470.
  261. Kestrel-Based Search Algorithm for Association Rule Mining and Classification of Frequently Changed Items. In: 2016 8th International Conference on Computational Intelligence and Communication Networks (CICN); 2016. p. 356–360.
  262. Killer whale algorithm: an algorithm inspired by the life of killer whale. Procedia Computer Science. 2017;124; p. 151–157.
  263. Rajakumar BR. The Lion’s Algorithm: A New Nature-Inspired Search Algorithm. Procedia Technology. 2012;6; p. 126–135.
  264. Seven-Spot Ladybird Optimization: A Novel and Efficient Metaheuristic Algorithm for Numerical Optimization. The Scientific World Journal. 2013;2013; p. 378515.
  265. Lyrebird Optimization Algorithm: A New Bio-Inspired Metaheuristic Algorithm for Solving Optimization Problems. Biomimetics. 2023;8(6); p. 507.
  266. Hosseini E. Laying chicken algorithm: A new meta-heuristic approach to solve continuous programming problems. Journal of Applied & Computational Mathematics. 2017;6(1); p. 344–351.
  267. Yazdani M, Jolai F. Lion Optimization Algorithm (LOA): A nature-inspired metaheuristic algorithm. Journal of Computational Design and Engineering. 2016;3(1); p. 24–36.
  268. Lion pride optimizer: An optimization algorithm inspired by lion pride behavior. Science China Information Sciences. 2012;55(10); p. 2369–2389.
  269. Chen S. An Analysis of Locust Swarms on Large Scale Global Optimization Problems. In: Artificial Life: Borrowing from Biology; 2009. p. 211–220.
  270. Leopard seal optimization (LSO): A natural inspired meta-heuristic algorithm. Communications in Nonlinear Science and Numerical Simulation. 2023;125; p. 107338.
  271. An optimisation algorithm based on the behaviour of locust swarms. International Journal of Bio-Inspired Computation. 2015;7; p. 402–407.
  272. Zervoudakis K, Tsafarakis S. A mayfly optimization algorithm. Computers & Industrial Engineering. 2020;145; p. 106559.
  273. Mo H, Xu L. Magnetotactic bacteria optimization algorithm for multimodal optimization. In: 2013 IEEE Symposium on Swarm Intelligence (SIS); 2013. p. 240–247.
  274. Monarch butterfly optimization. Neural Computing and Applications. 2015;(31); p. 1995–2014.
  275. Migrating Birds Optimization: A new metaheuristic approach and its performance on quadratic assignment problem. Information Sciences. 2012;217; p. 65–77.
  276. Jahani E, Chizari M. Tackling global optimization problems with a novel algorithm – Mouth Brooding Fish algorithm. Applied Soft Computing Journal. 2018;62; p. 987–1002.
  277. Kusuma PD, Kallista M. Migration-Crossover Algorithm: A Swarm-based Metaheuristic Enriched with Crossover Technique and Unbalanced Neighbourhood Search. International Journal of Intelligent Engineering & Systems. 2024;17(1).
  278. Modified cuckoo search: A new gradient free optimisation algorithm. Chaos, Solitons and Fractals. 2011;44(9); p. 710–718.
  279. Obagbuwa IC, Adewumi AO. An Improved Cockroach Swarm Optimization. ScientificWorld Journal. 2014;p. 375358.
  280. Mirjalili S. Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm. Knowledge-Based Systems. 2015;89; p. 228–249.
  281. Alauddin M. Mosquito flying optimization (MFO). In: 2016 International Conference on Electrical, Electronics, and Optimization Techniques (ICEEOT); 2016. p. 79–84.
  282. Klein CE, Coelho LDS. Meerkats-inspired algorithm for global optimization problems; 2018. p. 679–684.
  283. Introduction to the Mycorrhiza Optimization Algorithm. In: Mycorrhiza Optimization Algorithm. Springer Nature Switzerland; 2023. p. 1–84.
  284. ul Amir Afsar Minhas F, Arif M. MOX: A novel global optimization algorithm inspired from Oviposition site selection and egg hatching inhibition in mosquitoes. Applied Soft Computing. 2011;11(8); p. 4614–4625.
  285. Marine Predators Algorithm: A nature-inspired metaheuristic. Expert Systems with Applications. 2020;152; p. 113377.
  286. Mucherino A, Seref O. Monkey search: a novel metaheuristic search for global optimization. In: American Institute of Physics. vol. 953; 2007. p. 162–173.
  287. Wang GG. Moth search algorithm: a bio-inspired metaheuristic algorithm for global optimization problems. Memetic Computing. 2018;10(2); p. 151–164.
  288. Mantis Search Algorithm: A novel bio-inspired algorithm for global optimization and engineering design problems. Computer Methods in Applied Mechanics and Engineering. 2023;415; p. 116200.
  289. A new metaheuristic algorithm for real-parameter optimization: Natural aggregation algorithm. In: 2016 IEEE Congress on Evolutionary Computation (CEC); 2016. p. 94–103.
  290. Salgotra R, Singh U. The naked mole-rat algorithm. Neural Computing and Applications. 2019;(31); p. 8837––8857.
  291. Nutcracker optimizer: A novel nature-inspired metaheuristic algorithm for global optimization and engineering design problems. Knowledge-Based Systems. 2023;262; p. 110248.
  292. Salih SQ, Alsewari AA. A new algorithm for normal and large-scale optimization problems: Nomadic People Optimizer. Neural Computing and Applications. 2020;(32); p. 10359–10386.
  293. A New Swarm Algorithm Based on Orcas Intelligence for Solving Maze Problems. In: Trends and Innovations in Information Systems and Technologies; 2020. p. 788–797.
  294. OptBees - A Bee-Inspired Algorithm for Solving Continuous Optimization Problems. In: 2013 BRICS Congress on Computational Intelligence and 11th Brazilian Congress on Computational Intelligence; 2013. p. 142–151.
  295. Zhu GY, Zhang WB. Optimal foraging algorithm for global optimization. Applied Soft Computing. 2017;51; p. 294–313.
  296. Metaheuristic inspired on owls behavior applied to heat exchangers design. Thermal Science and Engineering Progress. 2019;14; p. 100431.
  297. Dehghani M, Trojovskỳ P. Osprey optimization algorithm: A new bio-inspired metaheuristic algorithm for solving engineering optimization problems. Frontiers in Mechanical Engineering. 2023;8; p. 1126450.
  298. Orca predation algorithm: A novel bio-inspired algorithm for global optimization problems. Expert Systems with Applications. 2022;188; p. 116026.
  299. Pity beetle algorithm – A new metaheuristic inspired by the behavior of bark beetles. Advances in Engineering Software. 2018;121; p. 147–166.
  300. Połap D, Wozniak M. Polar Bear Optimization Algorithm: Meta-Heuristic with Fast Population Movement and Dynamic Birth and Death Mechanism. Symmetry. 2017;9(203); p. 1–20.
  301. A novel Physarum-inspired competition algorithm for discrete multi-objective optimisation problems. Soft Computing. 2023;p. 1–21.
  302. Prairie Dog Optimization Algorithm. Neural Computing and Applications. 2022;34(22); p. 20017–20065.
  303. Duan H, Qiao P. Pigeon-inspired optimization: a new swarm intelligence optimizer for air robot path planning. International Journal of Intelligent Computing and Cybernetics. 2014;7(1); p. 24–37.
  304. A Method for Training RBF Neural Networks Based on Population Migration Algorithm. In: Proceedings of the 2009 International Conference on Artificial Intelligence and Computational Intelligence. vol. 1; 2009. p. 165–169.
  305. Puma optimizer (PO): A novel metaheuristic optimization algorithm and its application in machine learning. Cluster Computing. 2024;p. 1–49.
  306. Trojovskỳ P, Dehghani M. Pelican Optimization Algorithm: A Novel Nature-Inspired Algorithm for Engineering Applications. Sensors. 2022;22(3); p. 855.
  307. Pufferfish Optimization Algorithm: A New Bio-Inspired Metaheuristic Algorithm for Solving Optimization Problems. Biomimetics. 2024;9(2).
  308. Tilahun SL, Choon Ong H. Prey-predator algorithm: A new metaheuristic algorithm for optimization problems. International Journal of Information Technology and Decision Making. 2015;14(6); p. 1331–1352.
  309. Gheraibia Y, Moussaoui A. Penguins Search Optimization Algorithm (PeSOA). In: Recent Trends in Applied Artificial Intelligence; 2013. p. 222–231.
  310. Arora S, Singh S. Butterfly optimization algorithm: a novel approach for global optimization. Soft Computing. 2019;23(3); p. 715–734.
  311. Fard AF, Hajiaghaei-Keshteli M. Red Deer Algorithm (RDA); a new optimization algorithm inspired by Red Deers’ mating. In: International Conference on Industrial Engineering, IEEE.,(2016 e); 2016. p. 33–34.
  312. Połap D, Woźniak M. Red fox optimization algorithm. Expert Systems with Applications. 2021;166; p. 114107.
  313. A novel metaheuristic algorithm inspired by rhino herd behavior. In: Proceedings of The 9th EUROSIM Congress on Modelling and Simulation, EUROSIM 2016, The 57th SIMS Conference on Simulation and Modelling SIMS 2016; 2018. p. 1026–1033.
  314. Rock Hyraxes Swarm Optimization: A New Nature-Inspired Metaheuristic Optimization Algorithm. Computers, Materials & Continua. 2021;68(1); p. 643–654.
  315. Roach Infestation Optimization. In: 2008 IEEE Swarm Intelligence Symposium, SIS 2008; 2008. p. 1–7.
  316. Raccoon Optimization Algorithm. IEEE Access. 2019;7; p. 5383–5399.
  317. Sharma A. A new optimizing algorithm using reincarnation concept. In: 2010 11th International Symposium on Computational Intelligence and Informatics (CINTI); 2010. p. 281–288.
  318. Red piranha optimization (RPO): a natural inspired meta-heuristic algorithm for solving complex optimization problems. Journal of Ambient Intelligence and Humanized Computing. 2023;14(6); p. 7621–7648.
  319. Red Panda Optimization Algorithm: An Effective Bio-Inspired Metaheuristic Algorithm for Solving Engineering Optimization Problems. IEEE Access. 2023;11; p. 57203–57227.
  320. The Raven Roosting Optimisation Algorithm. Soft Computing. 2016;20(2); p. 525–545.
  321. Red-tailed hawk algorithm for numerical optimization and real-world problems. Scientific Reports. 2023;13(1); p. 12950.
  322. Reptile Search Algorithm (RSA): A nature-inspired meta-heuristic optimizer. Expert Systems with Applications. 2022;191; p. 116158.
  323. A novel algorithm for global optimization: rat swarm optimizer. Journal of Ambient Intelligence and Humanized Computing. 2021;12; p. 8457–8482.
  324. Ringed Seal Search for Global Optimization via a Sensitive Search Model. PLOS ONE. 2015;11(1); p. 1–31.
  325. The shark-search algorithm. An application: tailored Web site mapping. Computer Networks and ISDN Systems. 1998;30(1-7); p. 317–326.
  326. Kusuma PD, Dinimaharawati A. Swarm Bipolar Algorithm: A Metaheuristic Based on Polarization of Two Equal Size Sub Swarms. International Journal of Intelligent Engineering & Systems. 2024;17(2).
  327. McCaffrey JD. Generation of pairwise test sets using a simulated bee colony algorithm. In: 2009 IEEE International Conference on Information Reuse Integration; 2009. p. 115–119.
  328. Samareh Moosavi SH, Khatibi Bardsiri V. Satin bowerbird optimizer: A new optimization algorithm to optimize ANFIS for software development effort estimation. Engineering Applications of Artificial Intelligence. 2017;60; p. 1–15.
  329. Mirjalili S. SCA: A Sine Cosine Algorithm for solving optimization problems. Knowledge-Based Systems. 2016;96; p. 120–133.
  330. Seyyedabbasi A, Kiani F. Sand Cat swarm optimization: A nature-inspired algorithm to solve global optimization problems. Engineering with Computers. 2023;39; p. 2627–2651.
  331. Rakhshani H, Rahati A. Snap-drift cuckoo search: A novel cuckoo search optimization algorithm. Applied Soft Computing. 2017;52; p. 771 – 794.
  332. Shuffled frog-leaping algorithm: a memetic metaheuristic for discrete optimization. Engineering Optimization. 2006;38(2); p. 129–154.
  333. Dhiman G, Kumar V. Spotted hyena optimizer: a novel bio-inspired based metaheuristic technique for engineering applications. Advances in Engineering Software. 2017;114; p. 48–70.
  334. A global optimization algorithm inspired in the behavior of selfish herds. Biosystems. 2017;160; p. 39–55.
  335. Sea-horse optimizer: a novel nature-inspired meta-heuristic for global optimization problems. Applied Intelligence. 2023;53(10); p. 11833–11860.
  336. A swarm-inspired projection algorithm. Pattern Recognition. 2009;42(11); p. 2764–2786.
  337. Monismith DR, Mayfield BE. Slime Mold as a model for numerical optimization. In: 2008 IEEE Swarm Intelligence Symposium; 2008. p. 1–8.
  338. Raouf O, M Hezam I. Sperm motility algorithm: a novel metaheuristic approach for global optimisation. International Journal of Operational Research. 2017;28; p. 143.
  339. Spider Monkey Optimization algorithm for numerical optimization. Memetic Computation. 2014;6; p. 31–47.
  340. Starling murmuration optimizer: A novel bio-inspired algorithm for global and engineering optimization. Computer Methods in Applied Mechanics and Engineering. 2022;392; p. 114616.
  341. Seeker Optimization Algorithm. In: Computational Intelligence and Security; 2007. p. 167–176.
  342. Dhiman G, Kumar V. Seagull optimization algorithm: Theory and its applications for large-scale industrial engineering problems. Knowledge-Based Systems. 2019;165; p. 169–196.
  343. Sandpiper optimization algorithm: a novel approach for solving real-life engineering problems. Applied Intelligence. 2020;50(2); p. 582–619.
  344. The Sailfish Optimizer: A novel nature-inspired metaheuristic algorithm for solving constrained engineering optimization problems. Engineering Applications of Artificial Intelligence. 2019;80; p. 20–34.
  345. Dehghani M, Trojovskỳ P. Serval Optimization Algorithm: A New Bio-Inspired Approach for Solving Optimization Problems. Biomimetics. 2022;7(4); p. 204.
  346. Cheng MY, Prayogo D. Symbiotic Organisms Search: A new metaheuristic optimization algorithm. Computers and Structures. 2014;139; p. 98–112.
  347. Dhiman G, Kaur A. STOA: A bio-inspired based optimization algorithm for industrial engineering problems. Engineering Applications of Artificial Intelligence. 2019;82; p. 148–174.
  348. Yu JJQ, Li VOK. A social spider algorithm for global optimization. Applied Soft Computing. 2015;30; p. 614–627.
  349. A novel nature-inspired algorithm for optimization: Squirrel search algorithm. Swarm and Evolutionary Computation. 2019;44; p. 148–175.
  350. Salp Swarm Algorithm: A bio-inspired optimizer for engineering design problems. Advances in Engineering Software. 2017;114; p. 163–191.
  351. Xue J, Shen B. A novel swarm intelligence optimization approach: sparrow search algorithm. Systems Science & Control Engineering. 2020;8(1); p. 22–34.
  352. R AL, S P. Sling-shot spider optimization algorithm based packet length control in wireless sensor network and Internet of Things-based networks. International Journal of Communication Systems. 2023;36(4); p. e5406.
  353. A New Metaheuristic Algorithm Based on Shark Smell Optimization. Complexity. 2016;21(5); p. 97–116.
  354. Swallow swarm optimization algorithm: a new method to optimization. Neural Computing and Applications. 2013;23(2); p. 429–454.
  355. A swarm optimization algorithm inspired in the behavior of the social-spider. Expert Systems with Applications. 2013;40(16); p. 6374–6384.
  356. The Multi-Objective Optimization Algorithm Based on Sperm Fertilization Procedure (MOSFP) Method for Solving Wireless Sensor Networks Optimization Problems in Smart Grid Applications. Energies. 2018;11; p. 97.
  357. SSPCO Optimization Algorithm (See-See Partridge Chicks Optimization). In: 2015 Fourteenth Mexican International Conference on Artificial Intelligence (MICAI); 2015. p. 101–106.
  358. Haiyan Q, Xinling S. A Surface-Simplex Swarm Evolution Algorithm. Advances in Engineering Software. 2017;22; p. 38–50.
  359. Siberian Tiger Optimization: A New Bio-Inspired Metaheuristic Algorithm for Solving Engineering Optimization Problems. IEEE Access. 2022;10; p. 132396–132431.
  360. Ebrahimi A, Khamehchi E. Sperm whale algorithm: An effective metaheuristic algorithm for production optimization problems. Journal of Natural Gas Science and Engineering. 2016;29; p. 211–222.
  361. Spider wasp optimizer: A novel meta-heuristic optimization algorithm. Artificial Intelligence Review. 2023;56; p. 11675––11738.
  362. Termite-hill: Performance optimized swarm intelligence based routing algorithm for wireless sensor networks. Journal of Network and Computer Applications. 2012;35(6); p. 1901–1917.
  363. Majumder A. Termite alate optimization algorithm: a swarm-based nature inspired algorithm for optimization problems. Evolutionary Intelligence. 2023;16(3); p. 997–1017.
  364. Termite colony optimization: A novel approach for optimizing continuous problems. In: 2010 18th Iranian Conference on Electrical Engineering; 2010. p. 553–558.
  365. Tasmanian Devil Optimization: A New Bio-Inspired Optimization Algorithm for Solving Optimization Algorithm. IEEE Access. 2022;10; p. 19599–19620.
  366. Panteleev AV, Kolessa AA. Application of the Tomtit Flock Metaheuristic Optimization Algorithm to the Optimal Discrete Time Deterministic Dynamical Control Problem. Algorithms. 2022;15(9); p. 301.
  367. Bio-inspired methods for fast and robust arrangement of thermoelectric modulus. International Journal of Bio-Inspired Computation (IJBIC). 2013;5(1); p. 19–34.
  368. Termite life cycle optimizer. Expert Systems with Applications. 2023;213; p. 119211.
  369. Tyrannosaurus optimization algorithm: A new nature-inspired meta-heuristic algorithm for solving optimal control problems. e-Prime - Advances in Electrical Engineering, Electronics and Energy. 2023;5; p. 100243.
  370. Tunicate Swarm Algorithm: A new bio-inspired based metaheuristic paradigm for global optimization. Engineering Applications of Artificial Intelligence. 2020;90; p. 103541.
  371. Layeb A. Tangent search algorithm for solving optimization problems. Neural Computing and Applications. 2022;34(11); p. 8853–8884.
  372. Application of Virtual Ant Algorithms in the Optimization of CFRP Shear Strengthened Precracked Structures. In: Computational Science - ICCS 2006, 6th International Conference, Proceedings, Part I; 2006. p. 834–837.
  373. Yang XS. Engineering Optimizations via Nature-Inspired Virtual Bee Algorithms. In: Artificial Intelligence and Knowledge Engineering Applications: A Bioinspired Approach; 2005. p. 317–323.
  374. A novel nature-inspired algorithm for optimization: Virus colony search. Advances in Engineering Software. 2016;92; p. 65–88.
  375. Virus Optimization Algorithm (VOA): A novel metaheuristic for solving continuous optimization problems. In: Proceedings of the 2009 Asia Pacific Industrial Engineering and Management Systems Conference (APIEMS 2009); 2009. p. 2166–2174.
  376. Viral systems: A new bio-inspired optimisation approach. Computers and Operations Research. 2008;35; p. 2840–2860.
  377. Task differentiation in Polistes wasp colonies: a model for self-organizing groups of robots. In: Proceedings of the First International Conference on Simulation of Adaptive Behavior: From Animals to Animates; 1991. p. 346–355.
  378. The Wolf Colony Algorithm and Its Application. Chinese Journal of Electronics. 2011;20; p. 212–216.
  379. Arnaout JP. Worm Optimization: A novel optimization algorithm inspired by C. Elegans. In: Proceedings of the 2014 International Conference on Industrial Engineering and Operations Management; 2014. p. 2499–2505.
  380. Mirjalili S, Lewis A. The Whale Optimization Algorithm. Advances in Engineering Software. 2016;95; p. 51–67.
  381. Trojovskỳ P, Dehghani M. A new bio-inspired metaheuristic algorithm for solving optimization problems based on walruses behavior. Scientific Reports. 2023;13; p. 8775.
  382. Algorithm of Marriage in Honey Bees Optimization Based on the Wolf Pack Search. In: Proceedings of the The 2007 International Conference on Intelligent Pervasive Computing; 2007. p. 462–467.
  383. Weightless Swarm Algorithm (WSA) for Dynamic Optimization Problems. In: Network and Parallel Computing, IFIP International Conference on Network and Parallel Computing; 2012. p. 508–515.
  384. Wolf search algorithm with ephemeral memory. In: Seventh International Conference on Digital Information Management (ICDIM 2012); 2012. p. 165–172.
  385. Wasp swarm optimization of logistic systems. In: Adaptive and Natural Computing Algorithms; 2005. p. 264–267.
  386. White Shark Optimizer: A novel bio-inspired meta-heuristic algorithm for global optimization problems. Knowledge-Based Systems. 2022;243; p. 108457.
  387. A novel bio-inspired optimization model based on Yellow Saddle Goatfish behavior. Biosystems. 2018;174; p. 1–21.
  388. Zebra Optimization Algorithm: A New Bio-Inspired Optimization Algorithm for Solving Optimization Algorithm. IEEE Access. 2022;10; p. 49445–49473.
  389. Nguyen HT, Bhanu B. Zombie Survival Optimization: A Swarm Intelligence Algorithm Inspired By Zombie Foraging. In: 21st International Conference on Pattern Recognition (ICPR 2012); 2012. p. 987–990.
  390. Multi-species Cuckoo Search Algorithm for Global Optimization. Cognitive Computation. 2018;10(6); p. 1085–1095.
  391. GSA: A Gravitational Search Algorithm. Information Sciences. 2009;179(13); p. 2232–2248.
  392. Hatamlou A. Black hole: A new heuristic optimization approach for data clustering. Information Sciences. 2013;222; p. 175–184.
  393. Shah-Hosseini H. Principal components analysis by the galaxy-based search algorithm: a novel metaheuristic for continuous optimisation. International Journal of Computational Science and Engineering. 2011;6(1-2); p. 132–140.
  394. Lee KS, Geem ZW. A new meta-heuristic algorithm for continuous engineering optimization: harmony search theory and practice. Computer Methods in Applied Mechanics and Engineering. 2005;194; p. 3902–3933.
  395. Yadav A, Yadav A. AEFA: Artificial electric field algorithm for global optimization. Swarm and Evolutionary Computation. 2019;48; p. 93–108.
  396. Archimedes optimization algorithm: a new metaheuristic algorithm for solving optimization problems. Applied Intelligence. 2021;51; p. 1531–1551.
  397. General framework of Artificial Physics Optimization Algorithm. In: 2009 World Congress on Nature Biologically Inspired Computing (NaBIC); 2009. p. 1321–1326.
  398. Atom search optimization and its application to solve a hydrogeologic parameter estimation problem. Knowledge-Based Systems. 2019;163; p. 283–304.
  399. Erol OK, Eksin I. A new optimization method: Big Bang–Big Crunch. Advances in Engineering Software. 2006;37(2); p. 106–111.
  400. Kaveh A, Mahdavi VR. Colliding bodies optimization: A novel meta-heuristic method. Computers and Structures. 2014;139; p. 18–27.
  401. Crystal Energy Optimization Algorithm. Computational Intelligence. 2016;32(2); p. 284–322.
  402. Formato RA. Central Force Optimization: A New Nature Inspired Computational Framework for Multidimensional Search and Optimization. In: Nature Inspired Cooperative Strategies for Optimization (NICSO 2007). Springer Berlin Heidelberg; 2008. p. 221–238.
  403. Kaveh A, Talatahari S. A novel heuristic optimization method: charged system search. Acta Mechanica. 2010;213(3-4); p. 267–289.
  404. Electromagnetic field optimization: A physics-inspired metaheuristic optimization algorithm. Swarm and Evolutionary Computation. 2016;26; p. 8–22.
  405. Ilker Birbil S, Fang SC. An Electromagnetism-like Mechanism for Global Optimization. Journal of Global Optimization. 2003;25(3); p. 263–282.
  406. Khalafallah A, Abdel-Raheem M. Electimize: new evolutionary algorithm for optimization with application in construction engineering. Journal of Computing in Civil Engineering. 2011;25(3); p. 192–201.
  407. Rahmanzadeh S, Pishvaee MS. Electron radar search algorithm: a novel developed meta-heuristic algorithm. Soft Computing. 2020;24(11); p. 8443–8465.
  408. Kundu S. Gravitational clustering: A new approach based on the spatial distribution of the points. Pattern Recognition. 1999;32(7); p. 1149–1160.
  409. Gravitational emulation local search algorithm for advanced reservation and scheduling in grid systems. In: 2009 First Asian Himalayas International Conference on Internet; 2009. p. 1–5.
  410. Gravitation field algorithm and its application in gene cluster. Algorithms for Molecular Biology. 2010;5(32); p. 1–11.
  411. Geyser inspired algorithm: A new geological-inspired meta-heuristic for real-parameter and constrained engineering optimization. Journal of Bionic Engineering. 2023;p. 1–35.
  412. Gravitational Interactions Optimization. In: Learning and Intelligent Optimization; 2011. p. 226–237.
  413. Beiranvand H, Rokrok E. General Relativity Search Algorithm: A Global Optimization Approach. International Journal of Computational Intelligence and Applications. 2015;14(3); p. 1–29.
  414. Muthiah-Nakarajan V, Noel MM. Galactic Swarm Optimization: A new global optimization metaheuristic inspired by galactic motion. Applied Soft Computing. 2016;38; p. 771–787.
  415. Hydrological Cycle Algorithm for Continuous Optimization Problems. Journal of Optimization. 2017;2017; p. 1–25.
  416. Lambda algorithm. Journal of Uncertain Systems. 2010;4(1); p. 22–33.
  417. Using Hysteresis for Optimization. Physical Review Letters. 2002;89(15); p. 150201.
  418. Rbouh I, El Imrani AA. Hurricane-based Optimization Algorithm. AASRI Procedia. 2014;6; p. 26–33.
  419. Askari H, Zahiri SH. Intelligent Gravitational Search Algorithm for optimum design of fuzzy classifier. In: 2012 2nd International eConference on Computer and Knowledge Engineering, ICCKE 2012; 2012. p. 98–104.
  420. Shah-Hosseini H. The intelligent water drops algorithm: a nature-inspired swarm-based optimization algorithm. International Journal of Bio-inspired computation. 2009;1(1); p. 71–79.
  421. Jihong Shen, Jialian Li. The principle analysis of Light Ray Optimization Algorithm. In: 2010 Second International Conference on Computational Intelligence and Natural Computing. vol. 2; 2010. p. 154–157.
  422. Lightning search algorithm. Applied Soft Computing. 2015;36; p. 315–333.
  423. Tayarani-N MH, Akbarzadeh-T MR. Magnetic Optimization Algorithms a new synthesis. In: 2008 IEEE Congress on Evolutionary Computation (IEEE World Congress on Computational Intelligence); 2008. p. 2659–2664.
  424. An optimization algorithm inspired by musical composition. Artificial Intelligence Review. 2014;41(3); p. 301–315.
  425. Ashrafi SM, Dariane AB. A novel and effective algorithm for numerical optimization: Melody Search (MS). In: 2011 11th International Conference on Hybrid Intelligent Systems (HIS); 2011. p. 109–114.
  426. Multi-Verse Optimizer: a nature-inspired algorithm for global optimization. Neural Computing and Applications. 2016;27(2); p. 495–513.
  427. Newton-Raphson-based optimizer: A new population-based metaheuristic algorithm for continuous optimization problems. Engineering Applications of Artificial Intelligence. 2024;128; p. 107532.
  428. Kashan AH. A new metaheuristic for optimization: Optics inspired optimization (OIO). Computers and Operations Research. 2015;55; p. 99–125.
  429. A populational particle collision algorithm applied to a nuclear reactor core design optimization. In: Joint International Topical Meeting on Mathematics and Computations and Supercomputing in Nuclear Applications, 2007; 2007. p. 1–10.
  430. Taillard ÉD, Voss S. Popmusic — Partial Optimization Metaheuristic under Special Intensification Conditions. In: Essays and Surveys in Metaheuristics. Springer US; 2002. p. 613–629.
  431. Saire JEC, Túpac VYJ. An approach to real-coded quantum inspired evolutionary algorithm using particles filter. In: 2015 Latin America Congress on Computational Intelligence (LA-CCI); 2015. p. 1–6.
  432. Rain-fall optimization algorithm: A population based algorithm for solving constrained optimization problems. Journal of Computational Science. 2017;19; p. 31–42.
  433. Rain Water Algorithm: Newton’s Law of Rain Water Movements during Free Fall and Uniformly Accelerated Motion Utilization. AIP Conference Proceedings. 2019;2088(1); p. 020053.
  434. Using River Formation Dynamics to Design Heuristic Algorithms. In: Unconventional Computation; 2007. p. 163–177.
  435. Rahmani R, Yusof R. A new simple, fast and efficient algorithm for global optimization over continuous search-space problems: Radial Movement Optimization. Applied Mathematics and Computation. 2014;248; p. 287–300.
  436. Kaveh A, Khayatazad M. A new meta-heuristic method: Ray Optimization. Computers and Structures. 2012;112–113; p. 283–294.
  437. Deng L, Liu S. Snow ablation optimizer: A novel metaheuristic technique for numerical optimization and engineering design. Expert Systems with Applications. 2023;225; p. 120069.
  438. A novel optimization algorithm: space gravitational optimization. In: 2005 IEEE International Conference on Systems, Man and Cybernetics. vol. 3; 2005. p. 2323–2328.
  439. Tzanetos A, Dounias G. A new metaheuristic method for optimization: sonar inspired optimization. In: International Conference on Engineering Applications of Neural Networks; 2017. p. 417–428.
  440. An optimization algorithm inspired by the States of Matter that improves the balance between exploration and exploitation. Applied Intelligence. 2014;40; p. 256–272.
  441. Tamura K, Yasuda K. Primary Study of Spiral Dynamics Inspired Optimization. IEEJ Transactions On Electrical And Electronic Engineering. 2011;6; p. 98–100.
  442. Jin GG, Tran TD. A nature-inspired evolutionary algorithm based on spiral movements. In: Proceedings of SICE Annual Conference 2010; 2010. p. 1643–1647.
  443. Novel Type of Phase Transition in a System of Self-Driven Particles. Physical Review Letters. 1995;75(6); p. 1226–1229.
  444. The Solar System Algorithm: A Novel Metaheuristic Method for Global Optimization. IEEE Access. 2021;9; p. 4542–4565.
  445. A novel and effective optimization algorithm for global optimization and its engineering applications: Turbulent Flow of Water-based Optimization (TFWO). Engineering Applications of Artificial Intelligence. 2020;92; p. 103666.
  446. Kaveh A, Ilchi Ghazaan M. Vibrating particles system algorithm for truss optimization with multiple natural frequency constraints. Acta Mechanica. 2017;228; p. 307–322.
  447. Dogan B, Ölmez T. A new metaheuristic for numerical function optimization: Vortex Search algorithm. Information Sciences. 2015;293; p. 125–145.
  448. Water cycle algorithm – A novel metaheuristic optimization method for solving constrained engineering optimization problems. Computers and Structures. 2012;110–111; p. 151–166.
  449. Kaveh A, Bakhshpoori T. Water Evaporation Optimization: A novel physically inspired optimization algorithm. Computers and Structures. 2016;167; p. 69–85.
  450. Yang FC, Wang YP. Water flow-like algorithm for object grouping problems. Journal of the Chinese Institute of Industrial Engineers. 2007;24(6); p. 475–488.
  451. Text line extraction from multi-skewed handwritten documents. Pattern Recognition. 2007;40(6); p. 1825–1839.
  452. Tran TH, Ng KM. A water-flow algorithm for flexible flow shop scheduling with intermediate buffers. Journal of Scheduling. 2011;14(5); p. 483–500.
  453. Zheng YJ. Water wave optimization: A new nature-inspired metaheuristic. Computers and Operations Research. 2015;55; p. 1–11.
  454. Irizarry R. A generalized framework for solving dynamic optimization problems using the artificial chemical process paradigm: Applications to particulate processes and discrete dynamic systems. Chemical Engineering Science. 2005;60(21); p. 5663–5681.
  455. Alatas B. ACROA: Artificial Chemical Reaction Optimization Algorithm for global optimization. Expert Systems with Applications. 2011;38; p. 13170–13180.
  456. Optimal design of type-2 and type-1 fuzzy tracking controllers for autonomous mobile robots under perturbed torques using a new chemical optimization paradigm. Expert Systems with Applications. 2013;40(8); p. 3185–3195.
  457. Lam AYS, Li VOK. Chemical-Reaction-Inspired Metaheuristic for Optimization. IEEE Transactions on Evolutionary Computation. 2010;14(3); p. 381–399.
  458. Gases Brownian Motion Optimization: an Algorithm for Optimization (GBMO). Applied Soft Computing. 2013;13; p. 2932–2946.
  459. Patel VK, Savsani VJ. Heat transfer search (HTS): a novel optimization algorithm. Information Science. 2015;324; p. 217–246.
  460. Ions motion algorithm for solving optimization problems. Applied Soft Computing. 2015;32; p. 72–79.
  461. Chuang CL, Jiang JA. Integrated radiation optimization: inspired by the gravitational radiation in the curvature of space-time. In: 2007 IEEE Congress on Evolutionary Computation; 2007. p. 3157–3164.
  462. Moein S, Logeswaran R. KGMO: A swarm optimization algorithm based on the kinetic energy of gas molecules. Information Sciences. 2014;275; p. 127–144.
  463. Murase H. Finite element inverse analysis using a photosynthetic algorithm. Computers and Electronics in Agriculture. 2000;29(1-2); p. 115–123.
  464. Synergistic Fibroblast Optimization. In: Artificial Intelligence and Evolutionary Computations in Engineering Systems; 2017. p. 285–294.
  465. Kaveh A, Dadras A. A novel meta-heuristic optimization algorithm: Thermal exchange optimization. Advances in Engineering Software. 2017;110; p. 69–84.
  466. Ideology algorithm: a socio-inspired optimization methodology. Neural Computing and Applications. 2017;28(1); p. 845–876.
  467. Atashpaz-Gargari E, Lucas C. Imperialist competitive algorithm: An algorithm for optimization inspired by imperialistic competition. In: 2007 IEEE Congress on Evolutionary Computation; 2007. p. 4661–4667.
  468. Moosavian N, Roodsari BK. Soccer league competition algorithm: A novel meta-heuristic algorithm for optimal design of water distribution networks. Swarm and Evolutionary Computation. 2014;17; p. 14–24.
  469. Shi Y. Brain Storm Optimization Algorithm. In: Advances in Swarm Intelligence; 2011. p. 303–309.
  470. El-Abd M. Global-best brain storm optimization algorithm. Swarm and Evolutionary Computation. 2017;37; p. 27 – 44.
  471. Bogar E, Beyhan S. Adolescent Identity Search Algorithm (AISA): A novel metaheuristic approach for solving optimization problems. Applied Soft Computing. 2020;95; p. 106503.
  472. Ahmadi-Javid A. Anarchic Society Optimization: A human-inspired method. In: 2011 IEEE Congress of Evolutionary Computation (CEC); 2011. p. 2586–2592.
  473. Alpine skiing optimization: A new bio-inspired optimization algorithm. Advances in Engineering Software. 2022;170; p. 103158.
  474. Bodaghi M, Samieefar K. Meta-heuristic bus transportation algorithm. Iran Journal of Computer Science. 2019;2; p. 23–32.
  475. Collective decision optimization algorithm: A new heuristic optimization method. Neurocomputing. 2017;221; p. 123–137.
  476. Cognitive behavior optimization algorithm for solving optimization problems. Applied Soft Computing. 2016;39; p. 199–222.
  477. COOA: Competitive optimization algorithm. Swarm and Evolutionary Computation. 2016;30; p. 39–63.
  478. Milani A, Santucci V. Community of scientist optimization: An autonomy oriented approach to distributed optimization. AI Communications. 2012;25; p. 157–172.
  479. Xidong Jin, Reynolds RG. Using knowledge-based evolutionary computation to solve nonlinear constraint optimization problems: a cultural algorithm approach. In: Proceedings of the 1999 Congress on Evolutionary Computation-CEC99. vol. 3; 1999. p. 1672–1678.
  480. Duelist algorithm: an algorithm inspired by how duelist improve their capabilities in a duel. In: International Conference on Swarm Intelligence; 2016. p. 39–47.
  481. Emami H, Derakhshan F. Election algorithm: A new socio-politically inspired strategy. AI Communications. 2015;28(3); p. 591–603.
  482. Fadakar E, Ebrahimi M. A new metaheuristic football game inspired algorithm. In: 2016 1st Conference on Swarm Intelligence and Evolutionary Computation (CSIEC); 2016. p. 6–11.
  483. A New Meta-Heuristic Optimization Algorithm Inspired by FIFA World Cup Competitions: Theory and Its Application in PID Designing for AVR System. Journal of Control, Automation and Electrical Systems. 2016;27(4); p. 419–440.
  484. Golden ball: a novel meta-heuristic to solve combinatorial optimization problems based on soccer concepts. Applied Intelligence. 2014;41(1); p. 145–166.
  485. Eita MA, Fahmy MM. Group counseling optimization. Applied Soft Computing. 2010;22; p. 585–604.
  486. Daskin A, Kais S. Group leaders optimization algorithm. Molecular Physics. 2011;109(5); p. 761–772.
  487. Lenord Melvix JSM. Greedy Politics Optimization: Metaheuristic inspired by political strategies adopted during state assembly elections. In: 2014 IEEE International Advance Computing Conference (IACC); 2014. p. 1157–1162.
  488. A nature-inspired meta-heuristic knowledge-based algorithm for solving multiobjective optimization problems. Journal of Engineering Mathematics. 2023;143; p. 5.
  489. Zhang Y, Jin Z. Group Teaching Optimization Algorithm: A Novel Metaheuristic Method for Solving Global Optimization Problems. Expert Systems with Applications. 2020;148; p. 113246.
  490. Human evolutionary model: A new approach to optimization. Information Sciences. 2007;177(10); p. 2075–2098.
  491. Thammano A, Moolwong J. A new computational intelligence technique based on human group formation. Expert Systems with Applications. 2010;37(2); p. 1628–1634.
  492. Human-Inspired Algorithms for continuous function optimization. In: 2009 IEEE International Conference on Intelligent Computing and Intelligent Systems; 2009. p. 318–321.
  493. Human urbanization algorithm: A novel metaheuristic approach. Mathematics and Computers in Simulation. 2020;178; p. 1–15.
  494. Srivastava A, Das DK. A new Kho-Kho optimization Algorithm: An application to solve combined emission economic dispatch and combined heat and power economic dispatch problem. Engineering Applications of Artificial Intelligence. 2020;94; p. 103763.
  495. Kashan AH. League Championship Algorithm (LCA): An algorithm for global optimization inspired by sport championships. Applied Soft Computing. 2014;16; p. 171–200.
  496. A novel life choice-based optimizer. Soft Computing. 2020;24(12); p. 9121–9141.
  497. Gonzalez-Fernandez Y, Chen S. Leaders and followers - A new metaheuristic to avoid the bias of accumulated information. In: 2015 IEEE Congress on Evolutionary Computation (CEC); 2015. p. 776–783.
  498. Old Bachelor Acceptance: A New Class of Non-Monotone Threshold Accepting Methods. ORSA Journal on Computing. 1995;7(4); p. 417–425.
  499. Application of oriented search algorithm in reactive power optimization of power system. In: 2008 Third International Conference on Electric Utility Deregulation and Restructuring and Power Technologies; 2008. p. 2856–2861.
  500. Political Optimizer: A novel socio-inspired meta-heuristic for global optimization. Knowledge-Based Systems. 2020;195; p. 105709.
  501. Borji A, Hamide M. A new approach to global optimization motivated by parliamentary political competitions. International Journal of Innovative Computing, Information and Control. 2009;5; p. 1643–1653.
  502. Samareh Moosavi SH, Bardsiri VK. Poor and rich optimization algorithm: A new human-based and multi populations algorithm. Engineering Applications of Artificial Intelligence. 2019;86; p. 165–181.
  503. Queuing search algorithm: A novel metaheuristic algorithm for solving engineering optimization problems. Applied Mathematical Modelling. 2018;63; p. 464–490.
  504. A new optimization algorithm based on search and rescue operations. Mathematical Problems in Engineering. 2019;2019; p. 1–24.
  505. Ray T, Liew KM. Society and Civilization: An Optimization Algorithm Based on the Simulation of Social Behavior. IEEE Transactions On Evolutionary Computation. 2003;7(4); p. 386–396.
  506. Social cognitive optimization for nonlinear programming problems. In: Proceedings. International Conference on Machine Learning and Cybernetics. vol. 2; 2002. p. 779—783.
  507. Social Cognitive Optimization Algorithm with Reactive Power Optimization of Power System. In: 2010 International Conference on Computational Aspects of Social Networks; 2010. p. 11–14.
  508. Social Emotional Optimization Algorithm for Nonlinear Constrained Optimization Problems. In: Swarm, Evolutionary, and Memetic Computing; 2010. p. 583–590.
  509. Emami H. Stock exchange trading optimization algorithm: a human-inspired method for global optimization. The Journal of Supercomputing. 2022;78(2); p. 2125–2174.
  510. A novel particle swarm optimization algorithm with stochastic focusing search for real-parameter optimization. In: 2008 11th IEEE Singapore International Conference on Communication Systems; 2008. p. 583–587.
  511. Dwi Purnomo H. Soccer Game Optimization: Fundamental Concept. Jurnal Sistem Komputer. 2012;4(1); p. 25–36.
  512. Student psychology based optimization algorithm: A new population based optimization algorithm for solving optimization problems. Advances in Engineering Software. 2020;146; p. 102804.
  513. Application of a novel metaheuristic algorithm inspired by stadium spectators in global optimization problems. Scientific Reports. 2024;14; p. 3078.
  514. Rashid MFFA. Tiki-taka algorithm: a novel metaheuristic inspired by football playing style. Engineering Computations. 2020;38; p. 313–343.
  515. TGA: Team game algorithm. Future Computing and Informatics Journal. 2018;3(2); p. 191–199.
  516. Teaching–learning-based optimization: A novel method for constrained mechanical design optimization problems. Computer-Aided Design. 2011;43(3); p. 303–315.
  517. Thieves and Police, a New Optimization Algorithm: Theory and Application in Probabilistic Power Flow. IETE Journal of Research. 2021;67(6); p. 951–968.
  518. Tactical unit algorithm: A novel metaheuristic algorithm for optimal loading distribution of chillers in energy optimization. Applied Thermal Engineering. 2024;238; p. 122037.
  519. Kaveh A, Zolghadr A. A Novel Meta-Heuristic Algorithm: Tug Of War Optimization. International Journal Of Optimization In Civil Engineering. 2014;6(4); p. 469–492.
  520. Ardjmand E, Amin-Naseri MR. Unconscious Search - A New Structured Search Algorithm for Solving Continuous Engineering Optimization Problems Based on the Theory of Psychoanalysis. In: Advances in Swarm Intelligence; 2012. p. 233–242.
  521. Moghdani R, Salimifard K. Volleyball Premier League Algorithm. Applied Soft Computing. 2018;64; p. 161–185.
  522. Yampolskiy RV, EL-Barkouky A. Wisdom of artificial crowds algorithm for solving NP-hard problems. International Journal of Bio-Inspired Computation. 2011;3(6); p. 358–369.
  523. Ghaemi M, Feizi-Derakhshi MR. Forest Optimization Algorithm. Expert Systems with Applications. 2014;41(15); p. 6676–6687.
  524. Artificial Flora (AF) Optimization Algorithm. Applied Sciences. 2018;8(3); p. 329.
  525. Artificial Plant Optimization Algorithm for Constrained Optimization Problems. In: 2011 Second International Conference on Innovations in Bio-inspired Computing and Applications; 2011. p. 120–123.
  526. A new optimization algorithm based on the behavior of BrunsVigia flower. In: 2018 IEEE International Conference on Systems, Man, and Cybernetics (SMC); 2018. p. 263–267.
  527. A carnivorous plant algorithm for solving global optimization problems. Applied Soft Computing. 2021;98; p. 106833.
  528. Korani W, Mouhoub M. Discrete Mother Tree Optimization for the Traveling Salesman Problem. In: Neural Information Processing: 27th International Conference, ICONIP 2020, Bangkok, Thailand, November 23–27, 2020, Proceedings, Part II; 2020. p. 25––37.
  529. Yang XS. Flower Pollination Algorithm for Global Optimization. In: Unconventional Computation and Natural Computation, Proceeding; 2012. p. 240–249.
  530. Lotus effect optimization algorithm (LEA): a lotus nature-inspired algorithm for engineering design optimization. The Journal of Supercomputing. 2023;80; p. 761–799.
  531. Natural Forest Regeneration Algorithm: A New Meta-Heuristic. Iranian Journal of Science and Technology, Transactions of Civil Engineering. 2016;40(4); p. 311–326.
  532. A Global Optimization Algorithm Based on Plant Growth Theory: Plant Growth Optimization. In: 2008 International Conference on Intelligent Computation Technology and Automation (ICICTA). vol. 1; 2008. p. 1194–1199.
  533. A Plant Propagation Algorithm for Constrained Engineering Optimisation Problems. Mathematical Problems in Engineering. 2014;2014; p. 1–10.
  534. A new biologically inspired optimization algorithm. In: 2009 International Conference on Industrial and Information Systems (ICIIS); 2009. p. 279–284.
  535. A novel algorithm inspired by plant root growth with self-similarity propagation. In: 2015 1st International Conference on Industrial Networks and Intelligent Systems (INISCom); 2015. p. 157–162.
  536. A new rooted tree optimization algorithm for economic dispatch with valve-point effect. International Journal of Electrical Power & Energy Systems. 2016;79; p. 298–311.
  537. Merrikh-Bayat F. The runner-root algorithm: A metaheuristic for solving unimodal and multimodal optimization problems inspired by runners and roots of plants in nature. Applied Soft Computing. 2015;33; p. 292–303.
  538. Karci A. Theory of Saplings Growing Up Algorithm. In: Adaptive and Natural Computing Algorithms; 2007. p. 450–460.
  539. A new optimization meta-heuristic algorithm based on self-defense mechanism of the plants with three reproduction operators. Soft Computing. 2018;22(15); p. 4907–4920.
  540. Emami H. Seasons optimization algorithm. Engineering with Computers. 2022;38(2); p. 1845–1865.
  541. Merrikh-Bayat F. A Numerical Optimization Algorithm Inspired by the Strawberry Plant; 2014.
  542. Smart Root Search (SRS): A Novel Nature-Inspired Search Algorithm. Symmetry. 2020;12(12); p. 2025.
  543. Tree Growth Algorithm (TGA): A novel approach for solving optimization problems. Engineering Applications of Artificial Intelligence. 2018;72; p. 393–414.
  544. Halim H, Ismail I. Tree Physiology Optimization in Constrained Optimization Problem. Telkomnika (Telecommunication Computing Electronics and Control). 2018;16; p. 876–882.
  545. Kiran MS. TSA: Tree-seed algorithm for continuous optimization. Expert Systems with Applications. 2015;42(19); p. 6686–6698.
  546. Punnathanam V, Kotecha P. Yin-Yang-pair Optimization: A novel lightweight optimization algorithm. Engineering Applications of Artificial Intelligence. 2016;54; p. 62–79.
  547. Scientific algorithms for the Car Renter Salesman Problem. In: 2014 IEEE Congress on Evolutionary Computation (CEC); 2014. p. 873–879.
  548. The Social Engineering Optimizer (SEO). Engineering Applications of Artificial Intelligence. 2018;72; p. 267–293.
  549. Salimi H. Stochastic Fractal Search: A powerful metaheuristic algorithm. Knowledge-Based Systems. 2015;75; p. 1–18.
  550. Toz M, Toz G. Re-formulated snowflake optimization algorithm (SFO-R). Evolutionary Intelligence. 2023;p. 1–20.
  551. Search group algorithm: A new metaheuristic method for the optimization of truss structures. Computers and Structures. 2015;153; p. 165–184.
  552. Hasançebi O, Azad SK. An efficient metaheuristic algorithm for engineering optimization: SOPT. International Journal of Optimization in Civil Engineering. 2012;2(4); p. 479–487.
  553. Ship Rescue Optimization: A New Metaheuristic Algorithm for Solving Engineering Problems. Journal of Internet Technology. 2024;25(1); p. 61–78.
  554. Small-World Optimization Algorithm for Function Optimization. In: Advances in Natural Computation; 2006. p. 264–273.
  555. Dueck G. New optimization heuristics; The great deluge algorithm and the record-to-record travel. Journal of Computational Physics. 1993;104(1); p. 86–92.
  556. Wind Driven Optimization (WDO): A novel nature-inspired optimization algorithm and its application to electromagnetics. In: 2010 IEEE Antennas and Propagation Society International Symposium; 2010. p. 1–4.
  557. Gao-Wei Y, Zhanju H. A Novel Atmosphere Clouds Model Optimization Algorithm. In: 2012 International Conference on Computing, Measurement, Control and Sensor Network; 2012. p. 217–220.
  558. Civicioglu P. Artificial cooperative search algorithm for numerical optimization problems. Information Sciences. 2012;229; p. 58–76.
  559. Pijarski P, Kacejko P. A new metaheuristic optimization method: the algorithm of the innovative gunner (AIG). Engineering Optimization. 2019;51(12); p. 1–21.
  560. Wu G. Across neighborhood search for numerical optimization. Information Sciences. 2016;329; p. 597–618.
  561. Botox Optimization Algorithm: A New Human-Based Metaheuristic Algorithm for Solving Optimization Problems. Biomimetics. 2024;9(3); p. 137.
  562. Rahkar Farshi T. Battle royale optimization algorithm. Neural Computing and Applications. 2021;33(4); p. 1139–1157.
  563. Del Acebo E, De La Rosa JL. Introducing bar systems: A class of swarm intelligence optimization algorithms. In: AISB 2008 Convention: Communication, Interaction and Social Intelligence - Proceedings of the AISB 2008 Symposium on Swarm Intelligence Algorithms and Applications; 2008. p. 18–23.
  564. Civicioglu P. Backtracking Search Optimization Algorithm for numerical optimization problems. Applied Mathematics and Computation. 2012;219(15); p. 8121–8144.
  565. Zhu C, Ni J. Cloud Model-Based Differential Evolution Algorithm for Optimization Problems. In: 2012 Sixth International Conference on Internet Computing for Science and Engineering; 2012. p. 55–59.
  566. Li B, Jiang W. Optimizing complex functions by chaos search. Cybernetics and Systems. 1998;29(4); p. 409–419.
  567. Nunes de Castro L, Von Zuben FJ. The Clonal Selection Algorithm with Engineering Applications. In: Workshop Proceedings of GECCO. vol. 10; 2000. p. 36–37.
  568. COVID-19 Optimizer Algorithm, Modeling and Controlling of Coronavirus Distribution Process. IEEE Journal of Biomedical and Health Informatics. 2020;24(10); p. 2765–2775.
  569. DGO: Dice game optimizer. Gazi University Journal of Science. 2019;32(3); p. 871–882.
  570. Kadioglu S, Sellmann M. Dialectic Search. In: Principles and Practice of Constraint Programming - CP 2009; 2009. p. 486–500.
  571. Civicioglu P. transforming geocentric cartesian coordinates to geodetic coordinates by using differential search algorithm. Computers and Geosciences. 2012;46; p. 229–247.
  572. Ghorbani N, Babaei E. Exchange market algorithm. Applied Soft Computing. 2014;19; p. 177–187.
  573. Boettcher S, Percus AG. Extremal Optimization: Methods Derived from Co-evolution. In: Proceedings of the 1st Annual Conference on Genetic and Evolutionary Computation. vol. 1; 1999. p. 825–832.
  574. Equilibrium optimizer: A novel optimization algorithm. Knowledge-Based Systems. 2020;191; p. 105190.
  575. Tan Y, Zhu Y. Fireworks Algorithm for Optimization. In: Advances in Swarm Intelligence; 2010. p. 355–364.
  576. Shayanfar H, Gharehchopogh FS. Farmland fertility: A new metaheuristic algorithm for solving continuous optimization problems. Applied Soft Computing. 2018;71; p. 728–746.
  577. Ahrari A, Atai AA. Grenade Explosion Method—A novel tool for optimization of multimodal functions. Applied Soft Computing. 2010;10; p. 1132–1140.
  578. Tanyildizi E, Demir G. Golden sine algorithm: a novel math-inspired algorithm. Advances in Electrical and Computer Engineering. 2017;17(2); p. 71–79.
  579. The Golf Sport Inspired Search metaheuristic algorithm and the game theoretic analysis of its operators’ effectiveness. Soft Computing. 2024;28(2); p. 1073–1125.
  580. Hatamlou A. Heart: a novel optimization algorithm for cluster analysis. Progress in Artificial Intelligence. 2014;2(2); p. 167–173.
  581. Sellmann M, Tierney K. Hyper-parameterized Dialectic Search for Non-linear Box-Constrained Optimization with Heterogenous Variable Types. In: Learning and Intelligent Optimization; 2020. p. 102–116.
  582. Hosseini SH, Ebrahimi A. Ideological Sublations: Resolution of Dialectic in Population-based Optimization; 2017.
  583. Gandomi AH. Interior search algorithm (ISA): A novel approach for global optimization. ISA Transactions. 2014;53(4); p. 1168–1183.
  584. Hajiaghaei-Keshteli M, Aminnayeri M. Solving the integrated scheduling of production and rail transportation problem by Keshtel algorithm. Applied Soft Computing. 2014;25; p. 184–203.
  585. Kidney-inspired algorithm for optimization problems. Communications in Nonlinear Science and Numerical Simulation. 2017;42; p. 358–369.
  586. De Melo VV. Kaizen Programming. In: Proceedings of the 2014 Annual Conference on Genetic and Evolutionary Computation; 2014. p. 895–902.
  587. Liver Cancer Algorithm: A novel bio-inspired optimizer. Computers in Biology and Medicine. 2023;165; p. 107389.
  588. Literature Research Optimizer: A New Human-Based Metaheuristic Algorithm for Optimization Problems. Arabian Journal for Science and Engineering. 2024;p. 1–49.
  589. Nishida TY. Membrane Algorithms: Approximate Algorithms for NP-Complete Optimization Problems. In: Applications of Membrane Computing. Springer Berlin Heidelberg; 2006. p. 303–314.
  590. Mine blast algorithm: A new population based algorithm for solving constrained engineering optimization problems. Applied Soft Computing. 2013;13(5); p. 2592–2612.
  591. Asil Gharebaghi S, Ardalan Asl M. New meta-heuristic optimization algorithm using neuronal communication. Iran University of Science & Technology. 2017;7(3); p. 413–431.
  592. Khouni SE, Menacer T. Nizar optimization algorithm: A novel metaheuristic algorithm for global optimization and engineering applications. The Journal of Supercomputing. 2024;80(3); p. 3229–3281.
  593. Plasma generation optimization: A new physically-based metaheuristic algorithm for solving constrained optimization problems. Engineering Computations. 2020;38(4); p. 1554–1606.
  594. A hyper-heuristic inspired by pearl hunting. In: International Conference on Learning and Intelligent Optimization; 2012. p. 349–353.
  595. Savsani P, Savsani V. Passing vehicle search (PVS): A novel metaheuristic algorithm. Applied Mathematical Modelling. 2016;40(5–6); p. 3951–3978.
  596. Optimal approximation of stable linear systems with a novel and efficient optimization algorithm. In: Proceedings of the IEEE Congress on Evolutionary Computation, CEC; 2014. p. 840–844.
  597. Reactive Dialectic Search Portfolios for MaxSAT. In: Proceedings of the Thirty-First AAAI Conference on Artificial Intelligence; 2017. p. 765––772.
  598. Dorigo M, Stützle T. Ant Colony Optimization. MIT Press; 2004.
  599. Sörensen K. Metaheuristics - the metaphor exposed. International Transactions in Operational Research. 2015;22; p. 3–18.
  600. Since CEC 2005 competition on real-parameter optimisation: a decade of research, progress and comparative analysis’s weakness. Soft Computing. 2017;21(19); p. 5573–5583.
  601. Performance evaluation of automatically tuned continuous optimizers on different benchmark sets. Applied Soft Computing. 2015;27; p. 490–503.
  602. Bosman PAN, Gallagher M. The importance of implementation details and parameter settings in black-box optimization: a case study on Gaussian estimation-of-distribution algorithms and circles-in-a-square packing problems. Soft Computing. 2018;22(4); p. 1209–1223.
  603. Biedrzycki R. On Equivalence of Algorithm’s Implementations: The CMA-ES Algorithm and Its Five Implementations. In: Proceedings of the Genetic and Evolutionary Computation Conference Companion; 2019. p. 247–248.
  604. A software framework based on a conceptual unified model for evolutionary multiobjective optimization: ParadisEO-MOEO. European Journal of Operational Research. 2011;209(2); p. 104–112.
  605. Durillo JJ, Nebro AJ. jMetal: A Java framework for multi-objective optimization. Advances in Engineering Software. 2011;42(10); p. 760–771.
  606. NiaPy: Python microframework for building nature-inspired algorithms. Journal of Open Source Software. 2018;3(23); p. 613.
  607. jMetalPy: A Python framework for multi-objective optimization with metaheuristics. Swarm and Evolutionary Computation. 2019;51; p. 100598.
  608. PlatEMO: A MATLAB platform for evolutionary multi-objective optimization. IEEE Computational Intelligence Magazine. 2017;12(4); p. 73–87.
  609. Valadi J, Siarry P. Applications of metaheuristics in process engineering. vol. 31. Springer; 2014.
  610. Metaheuristic Applications in Structures and Infrastructures. New York: Springer; 2013.
  611. Metaheuristics in logistics and supply chain management. Journal of Business Logistics. 2012;33(2); p. 90–106.
  612. Surrogate-Assisted Evolutionary Generative Design Of Breakwaters Using Deep Convolutional Networks. In: 2022 IEEE Congress on Evolutionary Computation (CEC); 2022. p. 1–8.
  613. An evolved antenna for deployment on nasa’s space technology 5 mission. Genetic Programming Theory and Practice II. 2005;p. 301–315.
  614. Schmidt M, Lipson H. Symbolic regression of implicit equations. In: Genetic programming theory and practice VII. Springer; 2009. p. 73–85.
  615. Automatic design of machine learning via evolutionary computation: A survey. Applied Soft Computing. 2023;143; p. 110412.
  616. A review on the self and dual interactions between machine learning and optimisation. Progress in Artif Intell. 2019;8(2); p. 143–165.
  617. AutoML-Zero: Evolving Machine Learning Algorithms From Scratch. In: Proceedings of the 37th International Conference on Machine Learning. vol. 119; 2020. p. 8007–8019.
  618. A Survey on Evolutionary Neural Architecture Search. IEEE Transactions on Neural Networks and Learning Systems. 2023;34(2); p. 550–570.
  619. Dufourq E, Bassett BA. EDEN: Evolutionary deep networks for efficient machine learning. In: Pattern Recognition Association of South Africa and Robotics and Mechatronics (PRASA-RobMech); 2017. p. 110–115.
  620. DENSER: deep evolutionary network structured representation. Genetic Programming and Evolvable Machines. 2019;20; p. 5–35.
  621. Akiba T, et al.. Evolutionary Optimization of Model Merging Recipes; 2024.
  622. AutoML: A survey of the state-of-the-art. Knowledge-Based Systems. 2021;212; p. 106622.
  623. What makes evolutionary multi-task optimization better: A comprehensive survey. Appl Soft Comput. 2023 Sep;145; p. 110545.
  624. Reproducibility in Evolutionary Computation. ACM Transactions on Evolutionary Learning and Optimization. 2021;1(4).
  625. General Purpose Artificial Intelligence Systems (GPAIS): Properties, definition, taxonomy, societal implications and responsible governance. Information Fusion. 2024;103; p. 102135.
  626. Guo Q, et al. Connecting Large Language Models with Evolutionary Algorithms Yields Powerful Prompt Optimizers. In: The Twelfth International Conference on Learning Representations; 2024. .
  627. EGANS: Evolutionary Generative Adversarial Network Search for Zero-Shot Learning. IEEE Transactions on Evolutionary Computation. 2023;p. In Press.
Citations (146)

Summary

We haven't generated a summary for this paper yet.

X Twitter Logo Streamline Icon: https://streamlinehq.com