荷载响应特性研究

Lei Wang, G. Wang, Gang Ma, Qingguang Yu, Le Li, Xiaoyu Li, M. Guo, Yuan Gao
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引用次数: 0

摘要

电力负荷预测对电力系统的安全调度和提高电力系统运行经济性具有重要作用。随着需求响应的发展,电动汽车、电采暖、部分工业负荷成为优良的响应资源,需要更精确的负荷预测方法。电力负荷参数受多维因素的影响。为了充分利用电力负荷数据的时间序列特征,提高电力负荷预测的准确性,本文提出了一种基于LightGBM特征选择和改进Transformer模型的负荷预测方法。以天津市智能能源服务平台的电力负荷数据为数据集,首先将负荷的输入特征分为时间特征、历史特征、天气特征和输入负荷特征,然后利用LightGBM模型对特征进行多重最优滤波,筛选出相关度较高的特征,最后利用改进的Transformer模型进行负荷预测。用实际算例将该方法与常用的预测模型进行了比较,算例结果表明,该方法可以提高电力负荷数据的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Response Characteristics of the Load
Electric load forecasting plays an important role in the safe dispatch of power systems and improving the economy of power system operation. With the development of demand response, electric vehicles, electric heating, and some industrial loads become excellent response resources and require more accurate load forecasting methods. Electric load parameters are influenced by multi-dimensional factors. In order to fully exploit the time-series features in electric load data and improve the accuracy of electric load forecasting, this paper proposes a method for load forecasting based on LightGBM feature selection and improved Transformer model. Using the electricity load data from the Tianjin Smart Energy Service Platform as the data set, the input features of the load are firstly divided into temporal features, historical features, weather features and input load features, and then the features are multi-optimally filtered using the LightGBM model to select the features with higher relevance, and finally the improved Transformer model is used for load forecasting. The method is compared with commonly used forecasting models using actual arithmetic examples, and the results of the arithmetic examples prove that the method can improve the forecasting accuracy of electricity load data.
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