属性的最优贝叶斯广义多依赖状态抽样方案

IF 1.1 4区 数学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Julia T. Thomas, Mahesh Kumar
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引用次数: 0

摘要

多年来,验收抽样计划一直是制造业质量保证的关键。使用工作特性曲线条件设计样品计划,以保护生产者和客户。提出了一种基于条件概率的贝叶斯广义多相关状态抽样技术。该技术依赖于伽玛泊松分布。计算其他性能指标和验收概率。并对新方案的操作方法进行了讨论。并与现有的属性采样方案进行了有效性比较。还生成了计划经济结构的最佳计划参数,为建议的计划增加了管理见解。整个成本研究表明,在相同的条件下,建议的方案比现有的样本方案更便宜。为了考虑检查缺陷,计划被调整了。我们研究了I型和II型误差如何影响抽样计划的结果。通过数值算例和数据驱动应用对该方案进行了验证。关键词:贝叶斯抽样方案-泊松分布成本优化检验误差披露声明作者未报告潜在利益冲突。作者感谢印度政府DST在NIT Calicut数学系项目(SR/FST/MS-1/2019/40)下提供实验室支持。第一作者还要感谢印度政府科学与工业研究委员会提供的资金支持(09/874(0039)/2019-EMR-I)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Bayesian generalized multiple-dependent state sampling plan for attributes
AbstractOver the years, acceptance sampling plans have been crucial to quality assurance in manufacturing. Sample plans are designed using operating characteristic curve conditions to safeguard producers and customers. We propose a conditional probability-based Bayesian generalized multiple-dependent state sampling technique in this paper. The technique relies on Gamma-Poisson distribution. Other performance indicators and acceptance probability are calculated. Also, the new plan's operational method is discussed. The proposed technique is also compared to current attribute sampling schemes for efficacy. Optimal plan parameters for the plan's economic structure are also generated, adding managerial insights to the suggested plan. The entire cost study showed that the suggested plan is cheaper than existing sample plans under identical conditions. To account for inspection flaws, the plan is adjusted. We examine how Type I and Type II errors affect sampling plan outcomes. The plan is demonstrated with numerical examples and a data-driven application.Keywords: Bayesian sampling plangamma-Poisson distributioncost optimizationinspection errors Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThe authors would like to thank DST, Govt. of India for extending laboratory support under the project (SR/FST/MS-1/2019/40) of the Department of Mathematics, NIT Calicut. The first author would also like to thank CSIR, Govt. of India for extending financial support (09/874(0039)/2019-EMR-I).
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来源期刊
Journal of Statistical Computation and Simulation
Journal of Statistical Computation and Simulation 数学-计算机:跨学科应用
CiteScore
2.30
自引率
8.30%
发文量
156
审稿时长
4-8 weeks
期刊介绍: Journal of Statistical Computation and Simulation ( JSCS ) publishes significant and original work in areas of statistics which are related to or dependent upon the computer. Fields covered include computer algorithms related to probability or statistics, studies in statistical inference by means of simulation techniques, and implementation of interactive statistical systems. JSCS does not consider applications of statistics to other fields, except as illustrations of the use of the original statistics presented. Accepted papers should ideally appeal to a wide audience of statisticians and provoke real applications of theoretical constructions.
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