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   Designing an Optimum Acceptance Sampling Plan Using Bayesian Inferences and a Stochastic Dynamic Programming Approach  
   
نویسنده Akhavan Niaki S. T. ,Fallah Nezhad M. S.
منبع scientia iranica - 2009 - دوره : 16 - شماره : 1 - صفحه:19 -25
چکیده    In this paper, we use both stochastic dynamic programming and bayesian inference concepts to design an optimum-acceptance-sampling-plan policy in quality control environments. to determine the optimum policy, we employ a combination of costs and risk functions in the objective function. unlike previous studies, accepting or rejecting a batch are directly included in the action space of the proposed dynamic programming model. using the posterior probability of the batch being in state p (the probability of non-conforming products), first, we formulate the problem into a stochastic dynamic programming model. then, we derive some properties [or the optimal value of the objective function,which enable us to search for the optimal policy that minimizes the ratio of the total discounted system cost to the discounted system correct choice probability.
کلیدواژه Quality inspection; Acceptance sampling plan; Bayesian inference; Stochastic dynamic programming.
آدرس sharif university of technology, Department of Industrial Engineering, ایران, sharif university of technology, Department of Industrial Engineering, ایران
 
     
   
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