基于支持向量机的变电站工业负荷构成比例预测

Chunguang He, Xinran Li, Z. Xu, Weijian Liu, Jinming Guo, Huilin Ouyang
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引用次数: 2

摘要

针对变电站综合负荷模型参数随机时变的问题,提出了一种基于支持向量机的变电站工业负荷比例预测新方法。利用支持向量机算法预测变电站日负荷曲线,提取变电站日负荷特征量。在此基础上,结合负荷控制系统用户日负荷曲线,通过模糊c均值聚类得到各行业的典型特征量,并分别对各变电站日负荷特征量进行权重投影。通过进一步的权重计算,最终得出各行业的负荷比例。根据某地区电力的特点,采用该预测方法预测该地区某变电站在夏季负荷高峰日的行业负荷构成比例。结果表明,该方法与网格的实际运行情况相吻合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industry load composition proportion forecasting of substation based on SVM
A new methodology based on support vector machines (SVM) for the industry load proportion forecasting of a substation is presented to solve the problem that parameters of substation composite load model are randomly time-varying. The SVM algorithm is used to forecast a substation daily load curve and extract characteristic quantities of the substation daily load. Based on this, typical characteristic quantities of each industry are obtained through fuzzy C-means clustering with the consumer daily load curve from load control system and then project weights on the substation daily load characteristic quantities respectively. Load proportion of each industry is finally worked out by further calculation of the weights. According to the characteristics of a region's electricity, this prediction method is taken to forecast industry load composition proportion of a substation in the region on its summer peak load day. The result shows that the approach is consistent with the actual operation of the grid.
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