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Nonparametric multivariate statistical process control charts: a hypothesis testing-based approach

机译:非参数多元统计过程控制图:基于假设检验的方法

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Nonparametric multivariate control charts are highly sought-after due to their flexibility to adapt to different distribution assumptions. However, most existing nonparametric multivariate control charts involve some tuning parameter, which needs to be pre-specified to implement those control charts. To choose the appropriate tuning parameter to achieve optimal performance, it usually requires the information about the out-of-control distribution. However, in practice, it is rarely known in advance what the out-of-control distribution is. In this paper, we propose a new nonparametric multivariate phase-II control chart using a hypothesis testing-based approach when a body of reference data (phase-I data) is available. The proposed control chart does not depend on any tuning parameter, and can be considered as a natural generalisation of the generalised likelihood ratio chart to the nonparametric setting. Our simulation study and real data analysis show that the proposed control chart performs well across a broad range of settings, and compares favourably with existing nonparametric multivariate control charts.
机译:非参数多元控制图由于其适应不同分布假设的灵活性而备受追捧。但是,大多数现有的非参数多元控制图都涉及一些调整参数,需要预先指定这些参数才能实现这些控制图。要选择适当的调整参数以实现最佳性能,通常需要有关失控分布的信息。但是,实际上,事先很少知道失控分布是什么。在本文中,当参考数据(I相数据)可用时,我们将使用基于假设检验的方法提出一种新的非参数多元II相控制图。所提出的控制图不依赖于任何调整参数,并且可以被视为广义似然比图对非参数设置的自然概括。我们的仿真研究和实际数据分析表明,所提出的控制图在广泛的设置范围内均具有良好的性能,并且与现有的非参数多元控制图相比具有优势。

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