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Reinforcement Learning based Dynamic Model Selection for Short-Term Load Forecasting

机译:基于加强学习的短期负荷预测动态模型选择

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With the growing prevalence of smart grid technology, short-term load forecasting (STLF) becomes particularly important in power system operations. There is a large collection of methods developed for STLF, but selecting a suitable method under varying conditions is still challenging. This paper develops a novel reinforcement learning based dynamic model selection (DMS) method for STLF. A forecasting model pool is first built, including ten state-of-the-art machine learning based forecasting models. Then a Q-learning agent learns the optimal policy of selecting the best forecasting model for the next time step, based on the model performance. The optimal DMS policy is applied to select the best model at each time step with a moving window. Numerical simulations on two-year load and weather data show that the Q-learning algorithm converges fast, resulting in effective and efficient DMS. The developed STLF model with Q-learning based DMS improves the forecasting accuracy by approximately 50%, compared to the state-of-the-art machine learning based STLF models.
机译:随着智能电网技术不断增长的普遍性,短期负荷预测(STLF)在电力系统操作中尤为重要。为STLF开发了大量的方法,但在不同条件下选择合适的方法仍然具有挑战性。本文为STLF开发了一种基于新型加强学习的动态模型选择(DMS)方法。首先建造预测模型池,包括基于10个最先进的机器学习预测模型。然后,Q学习代理基于模型性能,了解在下次步骤中选择最佳预测模型的最佳策略。应用最佳DMS策略以在每次使用移动窗口时选择最佳模型。两年负荷和天气数据的数值模拟表明,Q学习算法会收敛快,导致有效且高效的DMS。与基于最先进的机器学习的STLF模型相比,基于Q学习的DMS的发达的STLF模型将预测精度提高了大约50%。

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