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Generalized Regression Neural Network Cargo Flow Forecast Model in Logistics Park Based on Radial Basis Function

机译:基于径向基函数的物流园区广义回归神经网络货物流量预测模型

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摘要

According to cargo flow, the strength of the logistics supply need could be predicted. Improving predicting accuracy can provide a scientific basis for the construction and operation on the logistics park. Generalized regression neural network model of logistics park is introduced under the impact of supply chain management, and designing steps about the prediction model is given. And the prediction model predicts Jinan Gaijiagou Logistics Park well.
机译:根据货物流量,可以预测物流供应的强度。提高预测精度可以为物流园区的建设和运营提供科学依据。在供应链管理的影响下引入了物流园区的广义回归神经网络模型,并给出了关于预测模型的设计步骤。并且预测模型预测了济南盖家沟物流园区。

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