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基于信息论与混合聚类分析的短期负荷预测方法研究
引用本文:谢真桢,杨秀,张鹏,徐磊. 基于信息论与混合聚类分析的短期负荷预测方法研究[J]. 电测与仪表, 2017, 54(19)
作者姓名:谢真桢  杨秀  张鹏  徐磊
作者单位:1. 上海电力学院电气工程学院,上海,200090;2. 国网上海市电力公司电力科学研究院,上海,200437
基金项目:国家自然科学基金资助项目,国家电网公司科技项目
摘    要:短期负荷预测中,影响用电量的因素众多,传统方法在其中作选择时,仅考虑每个因素与负荷的相关性,不考虑因素之间也存在相关性,造成选取的因素组合中存在相关性冗余和重叠。其次,传统聚类分析中,欧氏距离不能很好的度量负荷曲线形态上的相似性。因此,首先通过欧氏距离与余弦相似度混合度量,对负荷特性曲线聚类。然后,用信息论方法在9种影响因素中选取最优的组合,考虑了影响因素相互之间的相关性。最后,将与待预测用户同类的用户的负荷及其关联因素数据作为训练样本,建立支持向量机预测模型。通过对上海某地实际样本数据的分析,证明该方法预测结果平均相对误差为1.46%,相对误差控制在1%以内的概率达到72.72%,具有较好的实用性。

关 键 词:短期负荷预测  信息论  聚类分析  支持向量机  关联因素选择
收稿时间:2016-11-20
修稿时间:2017-01-11

Study on short-term load forecasting based on information theory and mixed clustering analysis
XIE Zhenzhen,YANG Xiu,ZHANG Peng and XU Lei. Study on short-term load forecasting based on information theory and mixed clustering analysis[J]. Electrical Measurement & Instrumentation, 2017, 54(19)
Authors:XIE Zhenzhen  YANG Xiu  ZHANG Peng  XU Lei
Affiliation:College of Electric Engineering,Shanghai University of Electric Power,College of Electric Engineering,Shanghai University of Electric Power,State Grid electric power research institute of Shanghai,College of Electric Engineering,Shanghai University of Electric Power
Abstract:The electricity consumption is affected by many factors in short-term load forecasting .In traditional method of associated factors selection , only the correlation between load and associated factor is considered , and the correla-tion between factors is ignored , which leads to the correlation redundancy .Besides, the Euclidean distance can't measure the similarity of the load curves well in the traditional cluster analysis .So, firstly, cluster analysis based on Euclidean distance mixed with the cosine similarity is made on the load curves .Then, information theory is used to select the optimal associated factors combination from 9 factors, which has considered the the correlation between fac-tors.Finally, load data and its associated factors data to be used are selected according to the classification of the load to be predicted, and the data is adopted to establish the support vector machine ( SVM) model.Through the analysis of the actual sample data in a certain area of Shanghai , the results prove that the average relative error of this method is 1.46%, and 72.72%of the relative errors are below 1%, which has a better practicability .
Keywords:short-term load forecasting  information theory  cluster analysis  support vector machine(SVM)  associ-ated factors selection
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