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A new policy for designing acceptance sampling plan based on Bayesian inference in the presence of inspection errors

机译:在存在检查错误的情况下基于贝叶斯推理设计验收抽样方案的新策略

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摘要

The purpose of this article is to present a new policy for designing an acceptance sampling plan based on the minimum proportion of the lot that should be inspected in the presence of inspection errors. It is assumed that inspection is not perfect and every defective item cannot be detected with complete certainty. The Bayesian method is used for obtaining the probability distribution function of the number of defective items in the lot. To design this model, two constraints of producer risk and consumer risk are considered during the inspection process by using two specified points on operating characteristic curve. In order to illustrate the application of the proposed model, an example is presented. In addition, a sensitivity analysis is performed to analyze the model performance under different scenarios of process parameters and the results are elaborated. Finally, the efficiency of the proposed model is compared with the sampling method of Spencer and Kevan de Lopez (2017) at the same conditions.
机译:本文的目的是提出一种新政策,用于根据存在检验错误的最小批次检验设计抽样验收计划。假定检查不完美,并且不能完全确定地检测到每个缺陷项目。贝叶斯方法用于获得批次中次品数量的概率分布函数。为了设计该模型,在检查过程中通过使用操作特征曲线上的两个指定点来考虑生产者风险和消费者风险的两个约束。为了说明所提出模型的应用,给出了一个例子。此外,还进行了敏感性分析,以分析工艺参数在不同情况下的模型性能,并详细说明了结果。最后,将所提模型的效率与Spencer和Kevan de Lopez(2017)在相同条件下的采样方法进行了比较。

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