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Research on Supply Chain Performance Evaluation of Fresh Agriculture Products Based on BP Neural Network

机译:基于BP神经网络的新鲜农产品供应链绩效评价研究。

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摘要

Evaluating supply chain performance of fresh agricultural products is one of the key techniques and a research hotspot in supply chain management and in fields related. The paper designs a new evaluation indicator system and presents a new model for evaluating supply chain performance of fresh agriculture product companies. First, based on analyzing the specific characteristics of the supply chain performance evaluation of fresh agriculture products, the paper designs a new evaluation indicator system including external and internal performance. Second, some improvements, such as adjusting dynamic strategy and the value of momentum factor, are taken to speed up calculation convergence and simplify the structure and to improve evaluating accuracy of the original BP evaluation model. Finally the model is realized with the data from certain supply chains of three fresh agriculture product companies and the experimental results show that the algorithm can improve calculation efficiency and evaluation accuracy when used for supply chain performance evaluation of fresh agriculture product companies practically.
机译:评估新鲜农产品的供应链绩效是关键技术之一,也是供应链管理及相关领域的研究热点。本文设计了一种新的评估指标体系,并提出了一种评估新鲜农产品公司供应链绩效的新模型。首先,在分析新鲜农产品供应链绩效评价的具体特征的基础上,设计了一种新的评价指标体系,包括外部绩效和内部绩效。其次,采取了一些改进措施,例如调整动态策略和动量因子的值,以加快计算的收敛速度,简化结构并提高原始BP评估模型的评估准确性。最后,利用三个生鲜农产品公司特定供应链的数据实现了该模型,实验结果表明,该算法在实际用于生鲜农产品公司供应链绩效评价时,可以提高计算效率和评价精度。

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