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应用GRNN模型对给水管网水质的综合评价
引用本文:王晓光,周慧,张有君.应用GRNN模型对给水管网水质的综合评价[J].沈阳理工大学学报,2011,30(4):63-66.
作者姓名:王晓光  周慧  张有君
作者单位:沈阳理工大学 理学院,辽宁沈阳,110159
摘    要:给水管网水质是多种污染因子的综合作用结果。为克服水质综合评价过程中的随机性与评价专家主观上的不确定性,利用神经网络的非线性和良好的函数逼近特性,建立了给水管网水质评价的广义回归神经网络(GRNN)模型。该模型具有网络结构自适应确定及输出与初始权值无关等优良特性。通过对在水质评价各等级间随机内插足够数量的训练样本的训练,确定合适的光滑因子。通过实例验证了模型评价结果与实际情况的一致性,为给水管网水质的评价提供了一种新方法.

关 键 词:给水管网  广义回归神经网络  综合评价

Synthetic Evaluation of Water Qualityin in Water Supply Networks Based on the GRNN Model
WANG Xiaoguang,ZHOU Hui,ZHANG Youjun.Synthetic Evaluation of Water Qualityin in Water Supply Networks Based on the GRNN Model[J].Transactions of Shenyang Ligong University,2011,30(4):63-66.
Authors:WANG Xiaoguang  ZHOU Hui  ZHANG Youjun
Affiliation:WANG Xiaoguang,ZHOU Hui,ZHANG Youjun(Shenyang Ligong University,Shenyang 110159,China)
Abstract:Water quality in water supply networks is affected by a number of factors.In order to avoid the random in the process of evaluation and idealistic uncertainty of experts,an evaluation model for water quality in water supply networks is constructed by using a general regression neural network(GRNN),which is nonlinear and has excellent character of function approximation.The GRNN model with a adaptive network structure and other excellent characteristics,the output has nothing to do with the initial weights.E...
Keywords:water supply networks  general regression neural network  synthetic evaluation  
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