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Bayesian computation for geometric process in maintenance problems

机译:维修问题中几何过程的贝叶斯计算

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Geometric process modeling is a useful tool to study repairable deteriorating systems in maintenance problems. This model has been used in a variety of situations such as the determination of the optimal replacement policy and the optimal inspection-repair-replacement policy for standby systems, and the analysis of data with trend. In this article, Bayesian inference for the geometric process with several popular life distributions, for instance, the exponential distribution and the lognormal distribution, are studied. The Gibbs sampler and the Metropolis algorithm are used to compute the Bayes estimators of the parameters in the geometric process. Simulation results are presented to illustrate the use of our procedures. Published by Elsevier B.V. on behalf of IMACS.
机译:几何过程建模是研究维护问题中可修复的退化系统的有用工具。该模型已用于多种情况,例如确定备用系统的最佳替换策略和最佳检查-维修-更换策略,以及分析趋势数据。在本文中,研究了具有几种常见寿命分布的几何过程的贝叶斯推断,例如,指数分布和对数正态分布。 Gibbs采样器和Metropolis算法用于计算几何过程中参数的贝叶斯估计量。给出仿真结果以说明我们程序的使用。 Elsevier B.V.代表IMACS发布。

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