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基于BP与RBF级联神经网络的日负荷预测
引用本文:陈刚,周杰,张雪君,张忠静. 基于BP与RBF级联神经网络的日负荷预测[J]. 电网技术, 2009, 33(12): 118-123
作者姓名:陈刚  周杰  张雪君  张忠静
作者单位:陈刚,周杰,张雪君,CHEN Gang,ZHOU Jie,ZHANG Xue-jun(输配电装备及系统安全与新技术国家重点实验室(重庆大学),重庆市,沙坪坝区,400044);张忠静,ZHANG Zhong-jing(贵州电网公司,贵阳供电局,贵州省,贵阳市550002)  
摘    要:在采用分段预测方法的基础上,利用小规模BP(back propagation)神经网络学习时间短和径向基函数(radial basis function,RBF)神经网络自身训练速度快的优点,提出了基于BP和RBF网络的级联神经网络日负荷预测模型,将影响日负荷变化的非负荷因素(气象、日类型等)与历史负荷因素分别加入BP和RBF网络中分开考虑,进一步简化了预测模型。计算实例表明,该模型较一般级联神经网络模型收敛更快速、高效,预测精度有了很大提高。

关 键 词:日负荷预测  BP神经网络  径向基函数神经网络  级联神经网络
收稿时间:2008-08-07
修稿时间:2009-02-18

A Daily Load Forecasting Method Based on Cascaded Back Propagation and Radial Basis Function Neural Networks
CHEN Gang,ZHOU Jie,ZHANG Xue-jun,ZHANG Zhong-jing. A Daily Load Forecasting Method Based on Cascaded Back Propagation and Radial Basis Function Neural Networks[J]. Power System Technology, 2009, 33(12): 118-123
Authors:CHEN Gang  ZHOU Jie  ZHANG Xue-jun  ZHANG Zhong-jing
Affiliation:1.State Key Laboratory of Power Transmission Equipment & System Security and New Technology (Chongqing University),Shapingba District,Chongqing 400044,China;2.Guiyang Power Supply Bureau,Guizhou Power Grid Corporation,Guiyang 550002,Guizhou Province,China
Abstract:Based on subsection forecasting and utilizing the advantages of back propagation(BP) neural network and radial basis function(RBF) neural network,such as short learning time of small-scale BP network and quick training of RBF network itself,a daily load forecasting method based on cascaded neural networks(CNN) is put forward.In this model non-load factors,i.e.,weather factors,day styles and so on which affect the changes of daily load,and historical load factors are added into BP and RBF neural networks and...
Keywords:daily load forecast  back propagation (BP) neural network  radial basis function (RBF) neural network  cascaded neural network
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