A fuzzy-based design procedure for a single-stage sampling plan

S. Ajorlou, A. Ajorlou
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引用次数: 4

Abstract

In a single-stage sampling plan, the decision to accept or reject a lot is made based on inspecting a random sample of certain size from the lot. There are two possible errors in any sampling plan; a good lot may get rejected (known as the producer's risk), or a bad lot may get accepted (known as the consumer's risk). Conventional designs may result in needlessly large sample size. The sample size n can be reduced by relaxing the conditions on the producer's and consumer's risks. In this paper, we propose a method for constructing the membership function of the grade of satisfaction for the sample size n based on the shape of the sampling cost function. Based on that, we find a reasonable solution to the trade-off between relaxing the conditions on the actual risks and the sample size n. The membership function of the grade of satisfaction for the sample size is derived for three general sampling cost functions, and the advantages of the proposed methodology over the existing methods is illustrated via a numerical example.
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基于模糊的单阶段抽样方案设计程序
在单阶段抽样计划中,接受或拒绝批次的决定是基于对该批次中一定大小的随机抽样进行检查。任何抽样计划都有两种可能的误差;好货可能会被拒绝(称为生产者的风险),坏货可能会被接受(称为消费者的风险)。传统的设计可能导致不必要的大样本量。可以通过放宽生产者和消费者的风险条件来减小样本量n。本文提出了一种基于抽样代价函数的形状构造样本量n的满意度隶属度函数的方法。在此基础上,我们找到了放宽实际风险条件与样本量n之间权衡的合理解决方案。推导了三种一般抽样成本函数的样本量满意度隶属度函数,并通过数值算例说明了所提方法相对于现有方法的优势。
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