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Quantifying and Predicting Residential Building Flexibility Using Machine Learning Methods (2403.01669v1)

Published 4 Mar 2024 in cs.LG, cs.SY, and eess.SY

Abstract: Residential buildings account for a significant portion (35\%) of the total electricity consumption in the U.S. as of 2022. As more distributed energy resources are installed in buildings, their potential to provide flexibility to the grid increases. To tap into that flexibility provided by buildings, aggregators or system operators need to quantify and forecast flexibility. Previous works in this area primarily focused on commercial buildings, with little work on residential buildings. To address the gap, this paper first proposes two complementary flexibility metrics (i.e., power and energy flexibility) and then investigates several mainstream machine learning-based models for predicting the time-variant and sporadic flexibility of residential buildings at four-hour and 24-hour forecast horizons. The long-short-term-memory (LSTM) model achieves the best performance and can predict power flexibility for up to 24 hours ahead with the average error around 0.7 kW. However, for energy flexibility, the LSTM model is only successful for loads with consistent operational patterns throughout the year and faces challenges when predicting energy flexibility associated with HVAC systems.

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References (12)
  1. “Use of electricity - U.S. Energy Information Administration (EIA),” https://www.eia.gov/energyexplained/electricity/use-of-electricity.php.
  2. H. Li, Z. Wang, T. Hong, and M. A. Piette, “Energy flexibility of residential buildings: A systematic review of characterization and quantification methods and applications,” Advances in Applied Energy, vol. 3, p. 100054, Aug. 2021.
  3. R. Hirmiz, H. M. Teamah, M. F. Lightstone, and J. S. Cotton, “Performance of heat pump integrated phase change material thermal storage for electric load shifting in building demand side management,” Energy and Buildings, vol. 190, pp. 103–118, May 2019.
  4. H. Cai and P. Heer, “Experimental implementation of an emission-aware prosumer with online flexibility quantification and provision,” Oct. 2023.
  5. H. Ren, Y. Sun, A. K. Albdoor, V. V. Tyagi, A. K. Pandey, and Z. Ma, “Improving energy flexibility of a net-zero energy house using a solar-assisted air conditioning system with thermal energy storage and demand-side management,” Applied Energy, vol. 285, p. 116433, Mar. 2021.
  6. H. Johra, P. Heiselberg, and J. L. Dréau, “Influence of envelope, structural thermal mass and indoor content on the building heating energy flexibility,” Energy and Buildings, vol. 183, pp. 325–339, Jan. 2019.
  7. A. V. Vesa, T. Cioara, I. Anghel, M. Antal, C. Pop, B. Iancu, I. Salomie, and V. T. Dadarlat, “Energy Flexibility Prediction for Data Center Engagement in Demand Response Programs,” Sustainability, vol. 12, no. 4, p. 1417, Jan. 2020.
  8. K. Amasyali, M. Olama, and A. Perumalla, “A Machine Learning-based Approach to Predict the Aggregate Flexibility of HVAC Systems,” in 2020 IEEE Power & Energy Society Innovative Smart Grid Technologies Conference (ISGT), Feb. 2020, pp. 1–5.
  9. F. Plaum, R. Ahmadiahangar, A. Rosin, and J. Kilter, “Aggregated demand-side energy flexibility: A comprehensive review on characterization, forecasting and market prospects,” Energy Reports, vol. 8, pp. 9344–9362, Nov. 2022.
  10. “NREL/EnergyPlus: EnergyPlus™ is a whole building energy simulation program that engineers, architects, and researchers use to model both energy consumption and water use in buildings.” https://github.com/NREL/EnergyPlus.
  11. “Prototype Building Models — Building Energy Codes Program,” https://www.energycodes.gov/prototype-building-models.
  12. K. S. Cetin, M. H. Fathollahzadeh, N. Kunwar, H. Do, and P. C. Tabares-Velasco, “Development and validation of an HVAC on/off controller in EnergyPlus for energy simulation of residential and small commercial buildings,” Energy and Buildings, vol. 183, pp. 467–483, Jan. 2019.

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