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Distribution-free multivariate process control based on log-linear modeling

机译:基于对数线性建模的无分布多元过程控制

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摘要

This paper considers Statistical Process Control (SPC) when the process measurement is multivariate. In the literature, most existing multivariate SPC procedures assume that the in-control distribution of the multivariate process measurement is known and it is a Gaussian distribution. In applications, however, the measurement distribution is usually unknown and it needs to be estimated from data. Furthermore, multivariate measurements often do not follow a Gaussian distribution (e.g., cases when some measurement components are discrete). We demonstrate that results from conventional multivariate SPC procedures are usually unreliable when the data are non-Gaussian. Existing statistical tools for describing multivariate non-Gaussian data, or transforming the multivariate non-Gaussian data to multivariate Gaussian data, are limited, making appropriate multivariate SPC difficult in such cases. In this paper, we suggest a methodology for estimating the in-control multivariate measurement distribution when a set of in-control data is available, which is based on log-linear modeling and which takes into account the association structure among the measurement components. Based on this estimated in-control distribution, a multivariate CUSUM procedure for detecting shifts in the location parameter vector of the measurement distribution is also suggested for Phase II SPC. This procedure does not depend on the Gaussian distribution assumption; thus, it is appropriate to use for most multivariate SPC problems.
机译:当过程度量是多变量时,本文考虑统计过程控制(SPC)。在文献中,大多数现有的多元SPC程序都假定多元过程测量的控制中分布是已知的,并且它是高斯分布。但是,在应用程序中,测量分布通常是未知的,需要根据数据进行估算。此外,多变量测量通常不遵循高斯分布(例如,某些测量分量是离散的情况)。我们证明,当数据为非高斯数据时,常规多元SPC程序的结果通常不可靠。用于描述多元非高斯数据或将多元非高斯数据转换为多元高斯数据的现有统计工具是有限的,在这种情况下,很难使用适当的多元SPC。在本文中,我们提出了一种基于对数线性建模并考虑了测量组件之间的关联结构的,当一组可用的控制数据可用时估算控制中多元测量分布的方法。基于此估计的控制内分布,还建议对II期SPC使用多变量CUSUM程序来检测测量分布的位置参数矢量中的偏移。该过程不依赖于高斯分布假设。因此,适用于大多数多变量SPC问题。

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