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Multiobjective Genetic Algorithm Approach to the Economic Statistical Design of Control Charts with an Application toXbar and S~2 Charts

机译:控制图经济统计设计的多目标遗传算法方法在Xbar和S〜2图中的应用

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摘要

Control charts are the primary tools of statistical process control. These charts may be designed by using a simple rule suggested by Shewhart, a statistical criterion, an economic criterion, or a joint economic statistical criterion. Each method has its strengths and weaknesses. One weakness of the methods of design listed is their lack of flexibility and adaptability, a primary objective of practical mathematical models. In this article, we explore multiobjective models as an alternative for the methods listed. These provide a set of optimal solutions rather than a single optimal solution and thus allow the user to tailor their solution to the temporal imperative of a specific industrial situation. We present a solution to a well-known industrial problem and compare optimal multiobjective designs with economic designs, statistical designs, economic statistical designs, and heuristic designs.
机译:控制图是统计过程控制的主要工具。可以通过使用Shewhart建议的简单规则,统计标准,经济标准或联合经济统计标准来设计这些图表。每种方法都有其优点和缺点。所列设计方法的一个弱点是它们缺乏灵活性和适应性,这是实用数学模型的主要目标。在本文中,我们将探索多目标模型,以替代所列方法。这些提供了一组最佳解决方案,而不是单个最佳解决方案,因此允许用户根据特定行业情况的时间要求来调整其解决方案。我们提出了一个解决著名工业问题的解决方案,并将最佳多目标设计与经济设计,统计设计,经济统计设计和启发式设计进行了比较。

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