Fuzzy Multivariate Process Capability Index for Measuring Process Capability
الموضوعات :Saeed Fayyaz 1 , Majid Ebrahimi 2 , Ali Gholi Nejad Devin 3
1 - Iran Statistics Center (ISC),
Industrial department, Tehran, Iran
2 - Department of Industrial Engineering,
Mazandaran University of Science and Technology,
Babul, Iran
3 - Master student of Industrial Engineering,
Sadjad Higher Education Institute, Mashhad, Iran
الکلمات المفتاحية: fuzzy number, Keywords: Component, Process Capability Index, Multivariate Normal Distribution,
ملخص المقالة :
Abstract. In the case of process capability index several methods are identified. In this paper ,a new process capability index using fuzzy number and fuzzy probability concept, in order to remove the weakness of other famous method is suggested. After introduction of fuzzy index in univariate case, fuzzy multivariate process capability index is investigated. Finally, this new method is compared to three well-known methods in literature review, with numerical example.
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