標題: Process capabitity assessment for index C-pk based on bayesian approach
作者: Pearn, WL
Wu, CW
工業工程與管理學系
Department of Industrial Engineering and Management
關鍵字: Bayesian approach;posterior distribution;process capability indices;posterior probability
公開日期: 2005
摘要: Process capability indices have been proposed in the manufacturing industry to provide numerical measures on process reproduction capability, which are effective tools for quality assurance and guidance for process improvement. In process capability analysis, the usual practice for testing capability indices from sample data are based on traditional distribution frequency approach. Bayesian statistical techniques are an alternative to the frequency approach. Shiau, Chiang and Hung (1999) applied Bayesian method to index C-pm and the index C-pk but under the restriction that the process mean μ equals to the midpoint of the two specification limits, m. We note that this restriction is a rather impractical assumption for most factory applications, since in this case C-pk will reduce to C-p. In this paper, we consider testing the most popular capability index C-pk for general situation - no restriction on the process mean based on Bayesian approach. The results obtained are more general and practical for real applications. We derive the posterior probability, p, for which the process under investigation is capable and propose accordingly a Bayesian procedure for capability testing. To make this Bayesian procedure practical for in-plant applications, we tabulate the minimum values of C-pk for which the posterior probability p reaches desirable confidence levels with various pre-specified capability levels.
URI: http://hdl.handle.net/11536/24514
http://dx.doi.org/10.1007/s001840400333
ISSN: 0026-1335
DOI: 10.1007/s001840400333
期刊: METRIKA
Volume: 61
Issue: 2
起始頁: 221
結束頁: 234
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