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A comparison of RoHS risk assessment using the Logistic Regression Model and Artificial Neural Network Model

机译:使用Logistic回归模型和人工神经网络模型进行RoHS风险评估的比较

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Under the RoHS Directive enacted in the European Union, there exist a number of green quality uncertainties and risks at various stages during product lifecycle management. The green product management system designed in this study, consisting of green design management, supplier management and green production management, is mainly in charge of controlling quality uncertainties and risks to prevent from producing non-green products at various stages. There is a great deal of uncertainties associated with the introduction of green quality control at every stage, and risks will rise correspondingly, thereby causing goodwill and cost losses. Consequently, green quality should be controlled in advance. To assess the extent and severity of the impact of the risk on enterprises, to focus on risk factors with strong impacts based on the priority of risk control, and to reduce the probability of risk, this study uses two approaches — Artificial Neural Network Model and Logistic Regression Model — to integrate green quality control information flow among green design management, supplier management and green production management.
机译:根据欧盟颁布的RoHS指令,在产品生命周期管理的各个阶段,存在许多绿色质量不确定性和风险。本研究设计的绿色产品管理系统包括绿色设计管理,供应商管理和绿色生产管理,主要负责控制质量不确定性和风险,以防止在各个阶段生产非绿色产品。在每个阶段引入绿色质量控制都会带来很多不确定性,风险也会相应增加,从而导致商誉和成本损失。因此,应预先控制绿色质量。为了评估风险对企业的影响的程度和严重性,基于风险控制的优先级,重点关注具有强烈影响的风险因素,并降低风险发生的可能性,本研究使用了两种方法-人工神经网络模型和Logistic回归模型-在绿色设计管理,供应商管理和绿色生产管理之间集成绿色质量控制信息流。

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