A heuristic threshold policy for fault detection and diagnosis in multivariate statistical quality control environments

被引:0
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作者
Mohammad Saber Fallah Nezhad
Seyed Taghi Akhavan Niaki
机构
[1] Yazd University,Industrial Engineering
[2] Sharif University of Technology,Industrial Engineering
关键词
Multivariate statistical quality control; Sequential analysis; Bayesian estimation; Heuristic threshold policy;
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摘要
In this paper, a heuristic threshold policy is developed to detect and classify the states of a multivariate quality control system. In this approach, a probability measure called belief is first assigned to the quality characteristics and then the posterior belief of out-of-control characteristics is updated by taking new observations and using a Bayesian rule. If the posterior belief is more than a decision threshold, called minimum acceptable belief determined using a heuristic threshold policy, then the corresponding quality characteristic is classified out-of-control. Besides using a different approach, the main difference between the current research and previous works is that the current work develops a novel heuristic threshold policy, in which in order to save sampling cost and time or when these factors are constrained, the number of the data gathering stages is assumed limited. A numerical example along with some simulation experiments is given at the end to demonstrate the application of the proposed methodology and to evaluate its performances in different scenarios of mean shifts.
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页码:1231 / 1243
页数:12
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