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Optimization of Correlated Multiple Quality Characteristics Robust Design Using Principal Component Analysis

机译:基于主成分分析的相关多重质量特征稳健设计优化

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摘要

The use of the Taguchi method for improving the design and quality of products and processes has become widespread among different industries. The traditional Taguchi method focused on one characteristic to optimize a combination of parameter conditions. In practice, most products have more than one quality characteristic. The methods of multiple quality characteristics design have become very important for industries/Several studies have presented approaches addressing multiple quality characteristics. Few published articles have focused primarily on optimizing correlated multiple quality characteristics. This research presents an approach to optimizing correlated multiple quality characteristics by using proportion of quality loss reduction and principal component analysis. The results reveal the advantages of this approach in that the optimal parameter design using proportion of quality loss reduction is the same as that using the Taguchi traditional method for one quality characteristic; the chosen optimal design is robust for optimizing correlated multiple quality characteristics.
机译:使用田口方法来改善产品和工艺的设计和质量已在不同行业中广泛使用。传统的Taguchi方法专注于一个特性,以优化参数条件的组合。实际上,大多数产品具有不止一种质量特征。多种质量特征设计的方法对于工业已经变得非常重要/一些研究提出了解决多种质量特征的方法。很少有已发表的文章主要关注于优化相关的多个质量特征。这项研究提出了一种通过使用质量损失减少比例和主成分分析来优化相关多个质量特征的方法。结果表明,该方法的优点在于,利用质量损失减少比例的最优参数设计与使用田口传统方法的一个质量特征相同。所选的最佳设计对于优化相关的多个质量特征具有鲁棒性。

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