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A decision support system for order selection in electronic commerce based on fuzzy neural network supported by real-coded genetic algorithm

机译:实编码遗传算法支持的基于模糊神经网络的电子商务订单选择决策支持系统

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摘要

This research attempts to develop a decision support system for order selection. The proposed system is able to integrate both the quantitative and qualitative factors together. For the qualitative factors, the fuzzy IF-THEN rules are summarized from the questionnaire survey for the production experts and learned by a proposed fuzzy neural network (FNN) with initial weights generated by real-coded genetic algorithm (GA). Then, a feedforward artificial neural network (ANN) with error back-propagation (EBP) learning algorithm is employed to integrate the above two parts together. Both the simulation and real-life problem provided by an internationally OEM company results show that the proposed FNN can well learn the fuzzy IF-THEN rules. In addition, real-coded GA is proved to be better than the binary GA both in speed and accuracy. Considering both the quantitative and qualitative factors has more accurate results compared with considering only the quantitative factors.
机译:这项研究试图开发用于订单选择的决策支持系统。所提出的系统能够将定量和定性因素整合在一起。对于定性因素,从针对生产专家的问卷调查中总结了模糊的IF-THEN规则,并通过拟议的模糊神经网络(FNN)进行了学习,其初始权重由实编码遗传算法(GA)生成。然后,采用带有误差反向传播(EBP)学习算法的前馈人工神经网络(ANN)将上述两个部分集成在一起。一家国际OEM公司提供的仿真结果和实际问题都表明,所提出的FNN可以很好地学习模糊IF-THEN规则。另外,实数编码GA在速度和准确性上都比二进制GA更好。与仅考虑定量因素相比,同时考虑定量因素和定性因素的结果更为准确。

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