基于ICSO_RF_GRU网络的电力系统短期负荷预测模型

Liu Ming, Shang Shang
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引用次数: 0

摘要

短期负荷预测是电力市场实时运行的重要依据之一。预测精度的提高对于揭示电力消费特征,提供实时的电力系统规划具有重要意义。基于电力系统丰富的历史数据,提出了一种基于ICSO_RF_GRU网络的短期负荷预测模型。采用改进的鸡群算法(ICSO)对随机森林模型中的决策树数量和分割特征进行优化,使随机森林模型的性能达到最佳。然后,利用随机森林算法对3个不同结构的GRU网络进行融合并进行分组预测,得到不同分组的负荷预测结果;最后将各组预测结果相加,得到预测结果。采用江苏省某地级市电网历史负荷数据进行仿真分析。与传统的预测模型相比,本文提出的预测模型具有更好的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-Term Load Forecasting Model of the Power System Based on ICSO_RF_GRU Networks
Short-term load forecasting is one of the important bases for the operation of real-time power market. The improvement of forecasting accuracy is of great significance to revealing the characteristics of power consumption and providing real-time power system planning. Based on the rich historical data in power system, this paper proposed a method of short-term load forecasting model based on ICSO_RF_GRU network. The improved chicken swarm algorithm (ICSO) was used to optimize the number of decision trees and splitting characteristics in the random forest model, so that the performance of the random forest model is the best. Then, the random forest algorithm was used to fuse three GRU networks with different structures and perform group forecasting to get the load forecasting results of different groups. Finally, the forecasting results of each group were added to get the forecasting results. The historical load data of a prefecture level city power grid in Jiangsu Province is used for simulation analysis. Compared with the traditional prediction model, the prediction model proposed in this paper has better prediction accuracy.
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