基于模糊逻辑的过程FMEA事件更新模型的建立

K. Tay, C. Teh, D. Bong
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引用次数: 6

摘要

在传统的失效模式与影响分析(FMEA)中,风险优先级数(RPN)排序系统用于评估失效的风险等级,对失效进行排序,并对措施进行优先排序。RPN分数由用户估计的三个输入分数相乘确定,即严重性、发生和检测。尽管这种方法很简单,但问题之一是难以获得对严重程度、发生率和检测等级的良好估计。此外,它是一个繁琐的工作,更新评级不时。本文提出了基于模糊推理系统的FMEA系统框架,并在此框架下建立了基于模糊推理系统的事件发生模型来预测事件发生评分,并设计了模糊事件发生模型。在这里,我们提出了模糊发生模型的一个属性,即单调输出属性。我们试图推导出模糊出现模型为单调的条件,如导数为非负。从推导中,还提供了如何调整输入成员函数的指导方针。利用从半导体制造环境中收集的真实信息对仿真结果进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a fuzzy-logic-based Occurrence updating model for process FMEA
Risk priority number (RPN) ranking system is used to evaluate the risk level of failures, to rank failures, and to prioritize actions in traditional failure mode and effect analysis (FMEA). The RPN score is determined by multiplication of three input scores estimated by users, i.e., severity, occurrence, and detect. Even through this approach is simple, one of the problems is the difficulty in obtaining a good estimate of the severity, occurrence and detect ratings. Besides, it is a tedious job to update the ratings from time to time. In this paper, FMEA system with a proposed framework equipped with a fuzzy inference system based occurrence model to predict the occurrence score is proposed, and the fuzzy occurrence model is devised. In here, we propose a property for the fuzzy occurrence model, i.e., monotone output property. We try to derive the condition for the fuzzy occurrence model to be monotone such as that the derivative in non negative. From the derivation, a guideline on how input membership functions should be tuned is also provided. Simulation results are analyzed using real information collected from a semiconductor manufacturing environment.
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