Bootstrap-Based T 2 Multivariate Control Charts |
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Authors: | Poovich Phaladiganon Victoria C. P. Chen Jun-Geol Baek Sun-Kyoung Park |
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Affiliation: | 1. Department of Industrial and Manufacturing Systems Engineering , University of Texas at Arlington , Arlington, Texas, USA;2. School of Industrial Management Engineering , Korea University , Seoul, Korea;3. Business Administration , Hanyang Cyber University , Seoul, Korea |
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Abstract: | Control charts have been used effectively for years to monitor processes and detect abnormal behaviors. However, most control charts require a specific distribution to establish their control limits. The bootstrap method is a nonparametric technique that does not rely on the assumption of a parametric distribution of the observed data. Although the bootstrap technique has been used to develop univariate control charts to monitor a single process, no effort has been made to integrate the effectiveness of the bootstrap technique with multivariate control charts. In the present study, we propose a bootstrap-based multivariate T 2 control chart that can efficiently monitor a process when the distribution of observed data is nonnormal or unknown. A simulation study was conducted to evaluate the performance of the proposed control chart and compare it with a traditional Hotelling's T 2 control chart and the kernel density estimation (KDE)-based T 2 control chart. The results showed that the proposed chart performed better than the traditional T 2 control chart and performed comparably with the KDE-based T 2 control chart. Furthermore, we present a case study to demonstrate the applicability of the proposed control chart to real situations. |
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Keywords: | Average run length Bootstrap Hotelling's T 2 chart Kernel density estimation Multivariate control charts |
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