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An intelligent decision making method for classification of manufacturing quality concerns

机译:制造质量问题分类的智能决策方法

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This paper presents an approach of using neural network and fuzzy logic methods for the diagnosis of fault root causes in a manufacturing environment. As the first step in this approach, data from all the valid test points were collected and studied based on their statistical characteristics. An information-gain-based procedure was then followed to quantitatively evaluate the relevance of each test point to the diagnosis process. Accordingly, an objective rank of all relevant test points waa generated for a particular reject. The root cause of rejects was then identified by a procedure based on an information-gain-weighted radial basis function neural network and a fuzzy multiple voting classification algorithm. This method has been tested with the top five rejects of the transmission main control component at Ford and promising results have been obtained.
机译:本文提出了一种利用神经网络和模糊逻辑方法,用于诊断制造环境中的故障根原因的诊断。 作为这种方法的第一步,基于其统计特征来收集和研究来自所有有效测试点的数据。 然后,随后进行信息增益的过程,以定量评估每个测试点与诊断过程的相关性。 因此,为特定拒绝产生的所有相关测试点的目标等级。 然后通过基于信息增益加权径向基函数神经网络和模糊多投票分类算法的过程识别拒绝的根本原因。 该方法已经用福特的传输主控制部件的前五个拒绝进行了测试,并且已经获得了有希望的结果。

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