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Quantity Modeling and Application of Multivariable Correlation Analysis

机译:多变量相关分析的数量建模与应用

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This study focuses on quantitative correlation problem of four Railway Parcel traffic parameters: Number of Initial trains (NIT), GDP of cities, Number of Parcel Traffic Agencies (NPTA) and Number of Parcel traffic Nodes (NPTN). It can be seen as a multivariable systems that called Multiple-Input Single-Output (MISO). Then ANN is used in to resolve the multivariable Correlation Analysis problems in China Railway Parcel forecast. Based on Artificial Neural Networks (ANN), the prediction of China Railway Parcel Traffic Volume is modeling. The model can effectively solve the variable multiple correlation problem. Good performance is demonstrated when Application proves the accuracy of the model and its contribution.
机译:本研究重点介绍四个铁路包裹交通参数的定量相关问题:初始列车数量(NIT),城市GDP,包裹交通代理数量(NPTA)和包裹交通节点数量(NPTN)。它可以看作是一种称为多输入单输出(MISO)的多变量系统。然后ANN用于解决中国铁路包裹预测中的多变量相关分析问题。基于人工神经网络(ANN),中国铁路包裹交通量的预测是建模。该模型可以有效地解决了变量的多个相关问题。申请证明模型的准确性及其贡献时,表现出良好的性能。

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