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首页> 外文期刊>Journal of statistical computation and simulation >A spatial rank-based EWMA chart for monitoring linear profiles
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A spatial rank-based EWMA chart for monitoring linear profiles

机译:基于空间等级的EWMA图表,用于监视线性轮廓

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摘要

Profile monitoring has been recently considered as one of the most promising areas of research in statistical process monitoring (SPM). It is a technique for monitoring the stability of a functional relationship between a dependent variable and one or more independent variables over time. The monitoring of linear profiles is the most popular one because the relationship between the dependent variable and the independent variables is easy to describe by linearity, in addition to its flexibility and simplicity. Furthermore, almost all existing charting schemes for monitoring linear profiles assume that error terms are normally distributed. In some applications, however, the normality assumption of error terms is not justified. This makes the existing charting schemes not only inappropriate but also less efficient for monitoring linear profiles. In this article, based on the spatial rank-based regression, we propose a charting method for monitoring linear profiles where the error terms are not normally distributed. The charting scheme applies the exponentially weighted moving average (EWMA) to the spatial rank of the vector of the Wilcoxon-type rank-based estimators of regression coefficients and a transformed error variance estimator. Performance properties of the proposed charting scheme are evaluated and compared with an existing charting method based on multivariate sign in terms of the in-control (IC) and out-of-control (OC) average run length (ARL). Finally, a real example is used to demonstrate the applicability and implementation of the proposed charting scheme.
机译:概要文件监视最近被认为是统计过程监视(SPM)研究中最有前途的领域之一。它是一种随时间监视因变量和一个或多个自变量之间的功能关系的稳定性的技术。线性轮廓的监视是最流行的一种方法,因为除了其灵活性和简单性之外,因变量和自变量之间的关系还易于通过线性描述。此外,几乎所有用于监视线性轮廓的现有制图方案都假定误差项呈正态分布。但是,在某些应用中,错误项的正态假设是不合理的。这使得现有的制图方案不仅不合适,而且监视线性轮廓的效率也较低。在本文中,基于基于空间等级的回归,我们提出了一种图表方法,用于监视误差项不呈正态分布的线性轮廓。该制图方案将指数加权移动平均值(EWMA)应用于回归系数的基于Wilcoxon型基于秩的估计器和变换的误差方差估计器的向量的空间秩。根据控制内(IC)和失控(OC)平均游程长度(ARL),对提出的制图方案的性能进行评估,并与基于多元符号的现有制图方法进行比较。最后,使用一个真实的例子来说明所提出的制图方案的适用性和实现。

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