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Process Capability Analysis in the Presence of Autocorrelation

机译:自相关下的过程能力分析

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The classical method of process capability analysis necessarily assumes that collected data are independent; nonetheless, some processes such as biological and chemical processes are autocorrelated and violate the independency assumption. Many processes exhibit a certain degree of correlation and can be treated by autoregressive models among which the autoregressive model of order one (AR (1)) is the most commonly used one. In this paper, we discuss the effect of autocorrelation on the process capability analysis when a set of observations are produced by an autoregressive model of order one. We employ the multivariate regression model to modify the process capability estimated from the classical method where AR (1) parameters are utilized as regression explanatory variables. Finally, the performance of the method developed in this paper is investigated using a Monte Carlo simulation.
机译:传统的过程能力分析方法必须假设收集的数据是独立的;但是,某些过程(例如生物过程和化学过程)是自相关的,并且违反了独立性假设。许多过程表现出一定程度的相关性,并且可以通过自回归模型进行处理,其中最常用的是一阶自回归模型(AR(1))。在本文中,当阶次自回归模型产生一组观测值时,我们讨论自相关对过程能力分析的影响。我们采用多元回归模型来修改根据经典方法估算的过程能力,其中将AR(1)参数用作回归解释变量。最后,使用蒙特卡洛模拟研究了本文开发的方法的性能。

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