2024
DOI: 10.1049/tje2.12409
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A novel ensemble deep reinforcement learning model for short‐term load forecasting based on Q‐learning dynamic model selection

Xin He,
Wenlu Zhao,
Licheng Zhang
et al.

Abstract: Short‐term load forecasting is critical for power system planning and operations, and ensemble forecasting methods for electricity loads have been shown to be effective in obtaining accurate forecasts. However, the weights in ensemble prediction models are usually preset based on the overall performance after training, which prevents the model from adapting in the face of different scenarios, limiting the improvement of prediction performance. In order to improve the accurateness and validity of the ensemble p… Show more

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