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Short-term Load Combination Forecasting Model Based on Causality Mining of Influencing Factors

机译:基于影响因素因果区的短期负荷组合预测模型

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With the continuous development of the reform of the power market system, the operation of the power system is becoming more flexible and uncertain, and the traditional load forecasting method is difficult to cope with more influencing factors and stronger randomness. To solve this problem, a short-term load combination prediction model based on causal relationship mining of influencing factors is proposed in this paper. Firstly, the historical load series is decomposed into three components by using Optimal Variational Mode Decomposition (OVMD). Then, the Granger causality algorithm is used to mine the influencing factors closely related to each wave type load. Finally, a short-term load combination prediction model based on causality mining is established. Simulation results show that the proposed short-term load forecasting method can significantly improve the accuracy of short-term load forecasting.
机译:随着电力市场体系改革的不断发展,电力系统的运行变得越来越灵活,不确定,传统的负荷预测方法难以应对更多的影响因素和更强的随机性。 为了解决这个问题,本文提出了一种基于影响因素的因果关系采矿的短期负荷组合预测模型。 首先,使用最佳变分模式分解(OVMD),历史负载系列被分解为三个组件。 然后,GRANGER因果关系算法用于挖掘与每个波型负荷密切相关的影响因素。 最后,建立了基于因果挖掘的短期负载组合预测模型。 仿真结果表明,所提出的短期负荷预测方法可以显着提高短期负荷预测的准确性。

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