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基于人工神经网络与回归分析的水质预测
引用本文:李亦芳,程万里,刘建厅,程银行.基于人工神经网络与回归分析的水质预测[J].盐城工学院学报(自然科学版),2008,21(1):45-48,53.
作者姓名:李亦芳  程万里  刘建厅  程银行
作者单位:1. 华北水利水电学院,数学与信息科学学院,河南,郑州,450011
2. 中国地质调查局,天津地质矿产研究所,天津,300170
摘    要:针对人工神经网络(Artificial Neural Networks,缩写ANN)在预测中出现的异常值现象,采用了回归分析模型得到的预测区间来控制异常值现象的方法.并且应用在黄河三门峡河段的水质预测中,氨氮通量预测的ANN模型控制前平均精度仅有50.05%,控制后该月的相对精度为90.08%,平均精度达到80.79%,整体预测精度明显提高.化学需氧量(COD)浓度的预测也有类似情况.实践表明该方法对于消除ANN模型预测中出现的异常值现象是较为有效的.

关 键 词:回归分析  人工神经网络  水质预测  工神经网络  回归分析模型  水质预测  Regression  Analysis  Artificial  Neural  Networks  Based  Water  Quality  实践  情况  浓度  化学需氧量  预测精度  相对精度  平均精度  通量  氨氮  河段  黄河三门峡  应用  方法
文章编号:1671-5322(2008)01-0045-04
修稿时间:2007年11月6日

The Forecast of Water Quality Based on Artificial Neural Networks and Regression Analysis
LI Yi-fang,CHENG Wan-li,LIU Jian-ting,CHENG Yinhang.The Forecast of Water Quality Based on Artificial Neural Networks and Regression Analysis[J].Journal of Yancheng Institute of Technology(Natural Science Edition),2008,21(1):45-48,53.
Authors:LI Yi-fang  CHENG Wan-li  LIU Jian-ting  CHENG Yinhang
Institution:1.College of Mathematics and Information Science,North China Institute of Water Conservancy and Hydroelectric Power,Henan Zhengzhou 450011,China;2.Tianjin Institute of Geology and Mineral Resources,Chinese Geological Survey, Tianjin 300170,China
Abstract:As to the abnormal phenomenon in the forecast of artificial neural networks(Artificial Neural Networks,acronym ANN),the method,in which the forecast range from the regression analysis model is used to control the abnormal phenomenon,has been adopted.In the forecast of the water quality of Yellow River in San Menxia,the average accuracy of the quantity of Ammonia and Nitrogen before the control of ANN is only 50.05 percent,this is because the forecast number is very different of the accurate number in June 2006,the relative error of the forecast number reach up to 214.88 percent,beyond the forecast range of regression,in order to have effect on the whole accuracy.The accuracy of this month is 90.08 percent,the average accuracy reaches up to 80.79 percent;the whole forecast accuracy is proved obviously.The practice shows that the method is effective to eliminate the abnormal phenomenon in the artificial neural networks.
Keywords:Regression analysis  Artificial neural networks  Water quality forecast
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