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基于主成分BP人工神经网络的参考作物腾发量预测
引用本文:欧建锋,程吉林. 基于主成分BP人工神经网络的参考作物腾发量预测[J]. 灌溉排水学报, 2008, 27(2)
作者姓名:欧建锋  程吉林
作者单位:扬州大学,水利科学与工程学院,江苏,扬州,225009;江苏省水利工程规划办公室,南京,210029;扬州大学,水利科学与工程学院,江苏,扬州,225009
摘    要:影响参考作物腾发量的气象因素众多,且相关程度较高。基于主成分分析原理,将影响ET0的7个主要气象因素以及旬序数进行特征提取,形成3个综合影响因子,既可保证气象信息的完整性,又可避免气象信息的交叉重叠。以江苏省无锡市某区作物腾发量预测为例,经主成分分析并简化的参考作物腾发量BP神经网络模型具有结构简单、收敛快、精度高的特点,可用于ET0预测。

关 键 词:参考作物腾发量  主成分分析  BP神经网络  预测

Reference Evapotranspiration Prediction Based on the PCA-BP Artificial Neural Networks
OU Jian-feng,CHENG Ji-lin. Reference Evapotranspiration Prediction Based on the PCA-BP Artificial Neural Networks[J]. Journal of Irrigation and Drainage, 2008, 27(2)
Authors:OU Jian-feng  CHENG Ji-lin
Affiliation:OU Jian-feng1,2,CHENG Ji-lin1(1.Hydraulic Science , Engineering College of Yangzhou university,Yangzhou 225009,China,2.Jiangsu Water Resources Planning Bureau,Nanjing 210029,China)
Abstract:Reference evapotranspiration is affected by many high correlated meteorologic factors.Based on principal component analysis(PCA),the ordinal of ten days and seven main meteorologic factors related to the ET0 are synthesized into three synthetic factors.Therefore,not only the completeness of the meteorologic information can be achieved,but the overlapping information can be avoided.Exemplified with a case study in Wuxi,Jiangsu province,the reference evapotranspiration BP networks simplified with PCA have suc...
Keywords:reference evapotranspiration  principal component analysis  BP neural network  prediction  
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