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首页> 外文期刊>Communications in Statistics >A Multi-Stage Two-Machines Replacement Strategy Using Mixture Models, Bayesian Inference, and Stochastic Dynamic Programming
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A Multi-Stage Two-Machines Replacement Strategy Using Mixture Models, Bayesian Inference, and Stochastic Dynamic Programming

机译:一种使用混合模型,贝叶斯推理和随机动态规划的多级双机更换策略

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摘要

If at least one out of two serial machines that produce a specific product in manufacturing environments malfunctions, there will be non conforming items produced. Determining the optimal time of the machines' maintenance is the one of major concerns. While a convenient common practice for this kind of problem is to fit a single probability distribution to the combined defect data, it does not adequately capture the fact that there are two different underlying causes of failures. A better approach is to view the defects as arising from a mixture population: one due to the first machine failures and the other due to the second one. In this article, a mixture model along with both Bayesian inference and stochastic dynamic programming approaches are used to find the multi-stage optimal replacement strategy. Using the posterior probability of the machines to be in state λ_1,λ_2 (the failure rates of defective items produced by machine 1 and 2, respectively), we first formulate the problem as a stochastic dynamic programming model. Then, we derive some properties for the optimal value of the objective function and propose a solution algorithm. At the end, the application of the proposed methodology is demonstrated by a numerical example and an error analysis is performed to evaluate the performances of the proposed procedure. The results of this analysis show that the proposed method performs satisfactorily when a different number of observations on the times between productions of defective products is available.
机译:如果在制造环境中产生特定产品的两台串行机中的至少一部分,则会产生不合格的物品。确定机器维护的最佳时间是主要问题之一。虽然这种问题的方便常见做法是要适合组合缺陷数据的单一概率分布,但它没有充分捕捉到有两个不同的故障原因的事实。一种更好的方法是在混合群体中观察缺陷:一个由于第一台机器故障而不是由于第二个机器故障。在本文中,混合模型以及贝叶斯推理和随机动态编程方法的混合模型用于找到多级最佳替代策略。使用机器的后验概率在状态λ_1,λ_2(分别由机器1和2产生的缺陷物品的故障率),我们首先将问题称为随机动态编程模型。然后,我们从目标函数的最佳值获得一些属性,并提出解决方案算法。最后,通过数值示例演示所提出的方法的应用,并且执行误差分析以评估所提出的程序的性能。该分析的结果表明,当有缺陷产品的产品之间的时间的观察数量不同,该方法表现得令人满意。

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