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利用粗糙集约简算法改进BP神经网络负荷预测模型
引用本文:李艳梅,孙薇. 利用粗糙集约简算法改进BP神经网络负荷预测模型[J]. 电力需求侧管理, 2008, 10(5): 21-23
作者姓名:李艳梅  孙薇
作者单位:华北电力大学,工商管理学院,河北,保定,071003;华北电力大学,工商管理学院,河北,保定,071003
摘    要:传统神经网络预测模型受网络结构复杂性和样本复杂性的影响,容易出现“过学习”或低泛化能力。利用粗糙集理论中的几种属性约简算法对与负荷相关的各种历史数据进行约简,剔除与决策信息不相关的属性。实例证明该方法简化了BP神经网络的输入变量,从而缩短了神经网络模型的训练时间,提高了预测性能。

关 键 词:负荷预测  BP神经网络  粗糙集约简算法

Use rough sets reduction algorithm to improve BP neural network load forecasting model
LI Yan-mei,SUN Wei. Use rough sets reduction algorithm to improve BP neural network load forecasting model[J]. Power Demand Side Management, 2008, 10(5): 21-23
Authors:LI Yan-mei  SUN Wei
Affiliation:LI Yan-mei,SUN Wei(North China Electric Power University,Baoding 071003,China)
Abstract:Traditional neural network load forecasting model is affected by the complexity of the network structure and complexity of the samples,easily leads to a over-study or low-generalization.The method uses several attribute reduction algorithms in rough sets theory to reduce the various historical data associated with load,eliminates the attributes that are not relevant to decision-making information.Examples prove that this method simplifies the BP neural network input variables,so as to shorten the neural net...
Keywords:load forecasting  BP neural network  rough sets reduction algorithm  
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