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首页> 外文期刊>International Journal of Reliability, Quality and Safety Engineering >Improving Phase I Monitoring of Dirichlet Regression Profiles
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Improving Phase I Monitoring of Dirichlet Regression Profiles

机译:改善Dirichlet回归曲线的第一阶段监测

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摘要

In most statistical process control (SPC) applications, quality of a process or product is monitored by univariate or multivariate control charts. However, sometimes a functional relationship between a response variable and one or more explanatory variables is established and monitored over time. This relationship is called "profile" in SPC literature. In this paper, we specifically consider processes with compositional data responses, including multivariate positive observations summing to one. The relationship between compositional data responses and explanatory variables is modeled by a Dirichlet regression profile. We develop a monitoring procedure based on likelihood ratio test (lrt) for Phase I monitoring of Dirichlet regression profiles. Then, we compare the performance of the proposed method with the best method in the literature in terms of probability of signal. The results of simulation studies show that the proposed control chart has better performance in Phase I monitoring than the competing control chart. Moreover, the proposed method is able to estimate the real time of a change as well. The performance of this feature is also investigated through simulation runs which show the satisfactory performance. Finally, the application of the proposed method is illustrated based on a real case in comparison with the existing method.
机译:在大多数统计过程控制(SPC)应用程序中,过程或产品的质量通过单变量或多变量控制图进行监视。但是,有时会建立并监视响应变量和一个或多个解释变量之间的函数关系。这种关系在SPC文献中称为“配置文件”。在本文中,我们专门考虑具有组成数据响应的过程,包括将多个肯定的观察结果相加的结果。成分数据响应和解释变量之间的关系通过Dirichlet回归曲线进行建模。我们开发了一种基于似然比检验(lrt)的Dirichlet回归配置文件第一阶段监视程序。然后,在信号概率方面,我们比较了所提出的方法和文献中最佳方法的性能。仿真研究结果表明,所提出的控制图在第一阶段的监控中具有比竞争控制图更好的性能。此外,所提出的方法还能够估计变化的实时性。还通过模拟运行研究了此功能的性能,结果表明该性能令人满意。最后,结合实际情况,结合实际情况说明了该方法的应用。

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