Papers
Topics
Authors
Recent
Assistant
AI Research Assistant
Well-researched responses based on relevant abstracts and paper content.
Custom Instructions Pro
Preferences or requirements that you'd like Emergent Mind to consider when generating responses.
Gemini 2.5 Flash
Gemini 2.5 Flash 171 tok/s
Gemini 2.5 Pro 47 tok/s Pro
GPT-5 Medium 43 tok/s Pro
GPT-5 High 44 tok/s Pro
GPT-4o 94 tok/s Pro
Kimi K2 180 tok/s Pro
GPT OSS 120B 438 tok/s Pro
Claude Sonnet 4.5 36 tok/s Pro
2000 character limit reached

AutoPV: Automated photovoltaic forecasts with limited information using an ensemble of pre-trained models (2212.06797v1)

Published 13 Dec 2022 in cs.LG

Abstract: Accurate PhotoVoltaic (PV) power generation forecasting is vital for the efficient operation of Smart Grids. The automated design of such accurate forecasting models for individual PV plants includes two challenges: First, information about the PV mounting configuration (i.e. inclination and azimuth angles) is often missing. Second, for new PV plants, the amount of historical data available to train a forecasting model is limited (cold-start problem). We address these two challenges by proposing a new method for day-ahead PV power generation forecasts called AutoPV. AutoPV is a weighted ensemble of forecasting models that represent different PV mounting configurations. This representation is achieved by pre-training each forecasting model on a separate PV plant and by scaling the model's output with the peak power rating of the corresponding PV plant. To tackle the cold-start problem, we initially weight each forecasting model in the ensemble equally. To tackle the problem of missing information about the PV mounting configuration, we use new data that become available during operation to adapt the ensemble weights to minimize the forecasting error. AutoPV is advantageous as the unknown PV mounting configuration is implicitly reflected in the ensemble weights, and only the PV plant's peak power rating is required to re-scale the ensemble's output. AutoPV also allows to represent PV plants with panels distributed on different roofs with varying alignments, as these mounting configurations can be reflected proportionally in the weighting. Additionally, the required computing memory is decoupled when scaling AutoPV to hundreds of PV plants, which is beneficial in Smart Grids with limited computing capabilities. For a real-world data set with 11 PV plants, the accuracy of AutoPV is comparable to a model trained on two years of data and outperforms an incrementally trained model.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (17)
  1. UNFCCC “Paris Agreement” In United Nations Treaty Collection Chapter XXVII 7. d, 2015
  2. “Smart Grid – The new and improved power grid: A survey” In IEEE Communications Surveys & Tutorials 14.4, 2012, pp. 944–980
  3. Lars Dannecker “Energy time series forecasting” Wiesbaden, Germany: Springer, 2015
  4. Oscar Perpiñán Lamigueiro “solaR: Solar radiation and photovoltaic systems with R” In Journal of Statistical Software 50.9 American Statistical Association, 2012, pp. 1–32
  5. William F. Holmgren, Clifford W. Hansen and Mark A. Mikofski “pvlib Python: A Python package for modeling solar energy systems” In Journal of Open Source Software 3.29 The Open Journal, 2018, pp. 884
  6. “PV-Net: An innovative deep learning approach for efficient forecasting of short-term photovoltaic energy production” In Journal of Cleaner Production 303 Elsevier, 2021, pp. 127037
  7. “Two-stage attention over LSTM with Bayesian optimization for day-ahead solar power forecasting” In IEEE Access 9, 2021, pp. 107387–107398
  8. Kejun Wang, Xiaoxia Qi and Hongda Liu “A comparison of day-ahead photovoltaic power forecasting models based on deep learning neural network” In Applied Energy 251.C, 2019, pp. 1–1
  9. “Review of automated time series forecasting pipelines” In WIREs Data Mining and Knowledge Discovery 12.6, 2022, pp. e1475
  10. “Concepts for automated machine learning in Smart Grid applications” In Proceedings - 31. Workshop Computational Intelligence : Berlin, 25. - 26. November 2021. Hrsg.: H. Schulte; F. Hoffmann; R. Mikut KIT Scientific Publishing, 2021, pp. 11–35
  11. “Evaluation of a tree-based pipeline optimization tool for automating data science” In Proceedings of the Genetic and Evolutionary Computation Conference 2016, GECCO ’16 Denver, Colorado, USA: ACM, 2016, pp. 485–492
  12. “pyWATTS: Python workflow automation tool for time series” In arXiv:2106.10157, 2021
  13. “Scikit-learn: Machine learning in Python” In Journal of Machine Learning Research 12, 2011, pp. 2825–2830
  14. “Tune: A research platform for distributed model selection and training” In arXiv:1807.05118, 2018
  15. James Bergstra, Daniel Yamins and David Cox “Making a science of model search: Hyperparameter optimization in hundreds of dimensions for vision architectures” In International conference on machine learning, 2013, pp. 115–123 PMLR
  16. David Shaub “Fast and accurate yearly time series forecasting with forecast combinations” In International Journal of Forecasting 36.1, 2020, pp. 116–120
  17. “SciPy 1.0: Fundamental algorithms for scientific computing in Python” In Nature Methods 17, 2020, pp. 261–272
Citations (6)

Summary

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

Dice Question Streamline Icon: https://streamlinehq.com

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Lightbulb Streamline Icon: https://streamlinehq.com

Continue Learning

We haven't generated follow-up questions for this paper yet.

List To Do Tasks Checklist Streamline Icon: https://streamlinehq.com

Collections

Sign up for free to add this paper to one or more collections.