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Residential net load interval prediction based on stacking ensemble learning

Author

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  • He, Yan
  • Zhang, Hongli
  • Dong, Yingchao
  • Wang, Cong
  • Ma, Ping

Abstract

In response to the high uncertainty associated with residential net load due to the coupling of distributed photovoltaic generation and user demand, this paper proposed a novel cluster-based stacking ensemble learning model for net load interval prediction. Firstly, the k-means algorithm is employed to discover the similarity in user electricity consumption patterns. Then, a RIME optimization algorithm with local enhancement (LRIME) is developed to optimize the parameters and weights of the base learners in stacking ensemble learning. Subsequently, base learners with strong predictive capabilities and significant diversity are chosen as the first-layer predictive models, extreme learning machine (ELM) is utilized as the second-layer predictive model, ultimately resulting in the proposed stacking ensemble learning prediction model. And utilizing the bootstrap method to fit the volatility of point predictions, different prediction intervals are obtained at varying confidence levels, aiming to quantify the integrated uncertainty in photovoltaic generation and load. Testing on the open Ausgrid electricity load data in Australia provided robust validation of the proposed method's effectiveness. In comparison with other outstanding prediction models, the proposed ensemble model can effectively capture the uncertainty in integrating photovoltaic generation and user load.

Suggested Citation

  • He, Yan & Zhang, Hongli & Dong, Yingchao & Wang, Cong & Ma, Ping, 2024. "Residential net load interval prediction based on stacking ensemble learning," Energy, Elsevier, vol. 296(C).
  • Handle: RePEc:eee:energy:v:296:y:2024:i:c:s0360544224009071
    DOI: 10.1016/j.energy.2024.131134
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    2. Tan, Tao & Huang, Zetao & Li, Zuhao & Huhe, Taoli & Zhang, Zhige & Chen, Yushu & Chen, Yong, 2025. "Introducing an improved rime algorithm combined with gate current unit as an innovative stability monitoring and controlling model for flexible biogas-to-hydrogen/methanol system," Renewable Energy, Elsevier, vol. 247(C).
    3. Jian Liu & Xiaotian He & Kangji Li & Wenping Xue, 2025. "A Review of State-of-the-Art AI and Data-Driven Techniques for Load Forecasting," Energies, MDPI, vol. 18(16), pages 1-27, August.
    4. Neshat, Mehdi & Thilakaratne, Menasha & El-Abd, Mohammed & Mirjalili, Seyedali & Gandomi, Amir H. & Boland, John, 2025. "Smart buildings energy consumption forecasting using adaptive evolutionary bagging extra tree learning models," Energy, Elsevier, vol. 333(C).

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