从模拟产品制造测试响应筛选异常值的稳健度量

Shaji Krishnan, H. Kerkhoff
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引用次数: 3

摘要

马氏距离是一种常用的多变量指标,可以很好地区分缺陷器件和非缺陷器件。与此方法相关的一个问题是鲁棒均值和协方差矩阵的估计。在缺乏这种可靠估计的情况下,特别是在测试响应测量的异常值存在的情况下,并且只有来自总体的子样本可用,距离度量就变得不可靠。为了避免这个问题,从选定的测试响应测量集计算多个马氏距离。然后,它们被适当地公式化,以推导出具有减少方差和对测量中的移位或偏差具有鲁棒性的度量。本文提出了这样一个公式来定性地筛选产品异常值,定量地衡量产品非缺陷值的可靠性。以某工业汽车产品的测试装置为例,说明了该方法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust metric for screening outliers from analogue product manufacturing tests responses
Mahalanobis distance is one of the commonly used multivariate metrics for finely segregating defective devices from non-defective ones. An associated problem with this approach is the estimation of a robust mean and a covariance matrix. In the absence of such robust estimates, especially in the presence of outliers to test-response measurements, and only a sub-sample from the population is available, the distance metric becomes unreliable. To circumvent this problem, multiple Mahalanobis distances are calculated from selected sets of test-response measurements. They are then suitably formulated to derive a metric that has a reduced variance and robust to shifts or deviations in measurements. In this paper, such a formulation is proposed to qualitatively screen product outliers and quantitatively measure the reliability of the non-defective ones. The application of method is exemplified over a test set of an industrial automobile product.
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