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Generalized condition-based maintenance optimization for multi-component systems considering stochastic dependency and imperfect maintenance

机译:考虑随机依赖性和不完美维护的多组分系统的广义基于条件的维护优化

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摘要

With the development of sensor and communication technology, condition-based maintenance (CBM) attracts increasing attention, especially for multi-component systems. This paper aims to investigate the optimal CBM policy under periodic inspection for a K-out-of-N: G system, where economic dependency, stochastic dependency and imperfect maintenance are emphasized. The objective is to minimize the expected long-run discounted cost. In the model, the cumulative degradation of each component is modeled by heterogeneous stochastic processes, the dependence among all components is characterized by a copula function, and the imperfect maintenance is represented by a reduction in the degradation level. Since the system has Markov property, we solve the CBM optimization problem based on Markov decision process (MDP) framework. To ease the computation burden, we discretize the continuous state space and then use the value iteration algorithm with Monte Carlo simulation to find the optimal inspection interval and the optimal CBM policy. Numerical studies for a 1-out-of-2: G system are conducted to systematically examine the impacts of degradation processes, copula functions and imperfect maintenance on the optimal maintenance decisions, which provides insights for multi-component system maintenance. A sensitivity analysis of cost-related parameters is also performed.
机译:随着传感器和通信技术的发展,基于条件的维护(CBM)吸引了不断的关注,特别是对于多分量系统。本文旨在调查k-out-n:g系统的周期性检查下的最佳CBM政策,其中强调了经济依赖性,随机依赖和不完美的维护。目标是最大限度地减少预期的长期折扣成本。在该模型中,每个组分的累积降解由异构随机过程建模,所有组件之间的依赖性的特征在于Copula功能,并且不完美的维护通过降低降低水平的降低来表示。由于系统具有Markov属性,我们根据Markov决策过程(MDP)框架来解决CBM优化问题。为了缓解计算负担,我们将连续状态空间分开,然后使用蒙特卡罗模拟的价值迭代算法来查找最佳检查间隔和最佳CBM策略。进行1超出2:G系统的数值研究,以系统地检查劣化过程,Copula功能和不完美维护对最佳维护决策的影响,为多组件系统维护提供了见解。还执行了与成本相关参数的敏感性分析。

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