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Optimizing Mean and Variance of Multiresponse in a Multistage Manufacturing Process Using a Patient Rule Induction Method

机译:使用患者规则诱导方法优化多级制造过程中多态响应的平均值和方差

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Most manufacturing industries produce products through a series of sequential stages, known as a multistage process. In a multistage process, each stage is affected by its preceding stage, at the same time, it affects its following stage. Also, each stage often includes several response variables to be optimized. In this paper, we attempt to optimize the several response variables of the multistage process simultaneously considering the relationships among the stages. For this purpose, we use a particular data mining method, called a patient rule induction method. Because the relationships among the stages are often complicated, using a data mining method is a good approach for analyzing the relationships. According to the procedure of the patient rule induction method, the proposed method searches for an optimal setting of input variables directly from operational data at which mean and variance of the several response variables of the multistage process are optimized. The proposed method is explained by a step-by-step procedure using a steel manufacturing process example.
机译:大多数制造业通过一系列连续阶段生产产品,称为多级过程。在多级过程中,每个阶段受其前一级的影响,同时影响其以下阶段。此外,每个阶段通常包括多个响应变量进行优化。在本文中,我们尝试通过考虑阶段之间的关系来优化多级过程的几个响应变量。为此,我们使用特定的数据挖掘方法,称为患者规则诱导方法。因为阶段之间的关系通常复杂,所以使用数据挖掘方法是分析关系的良好方法。根据患者规则诱导方法的过程,所提出的方法可以直接从操作数据搜索输入变量的最佳设置,其中优化了多级过程的若干响应变量的均值和方差。所提出的方法是通过使用钢制造工艺示例的逐步过程来解释。

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