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Maintenance optimisation of a parallel-series system with stochastic and economic dependence under limited maintenance capacity

机译:有限维护能力下具有随机和经济依赖性的并联系统的维护优化

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Maintenance optimisation of a parallel-series system considering both stochastic and economic dependence among components as well as limited maintenance capacity is studied in this paper. The maintenance strategies of the components are jointly optimised, and the degradation process of the system is modelled to address the stochastic dependence and limited maintenance capacity issues. To overcome the "curse of dimensionality" problem where the state space of a parallel-series system increases rapidly with the increased number of components in the system, the factored Markov decision process (FMDP) is employed for maintenance optimisation in this work. An improved approximate linear programming (ALP) algorithm is then developed. The selection of the basis functions and the state relevance weights for ALP is also investigated to enhance the performance of the ALP algorithm. Results from the numerical study show that the current approach can handle the decision optimisation problem for multi-component systems of moderate size, and the error of maintenance decision-making induced by the improved ALP is negligible. The outcome from this research provides a useful reference to overcome the "curse of dimensionality" problem during the maintenance optimisation of multi-component systems. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文研究了考虑零件之间的随机性和经济性以及有限的维修能力的并联系统的维修优化。共同优化组件的维护策略,并对系统的降级过程进行建模,以解决随机依赖性和有限的维护能力问题。为了克服并行系统的状态空间随系统中组件数量的增加而迅速增加的“维数诅咒”问题,在这项工作中采用了因式马尔可夫决策过程(FMDP)进行维护优化。然后,开发了一种改进的近似线性规划(ALP)算法。还研究了ALP的基本函数和状态相关权重的选择,以增强ALP算法的性能。数值研究结果表明,目前的方法可以解决中等规模多组件系统的决策优化问题,而改进的ALP引起的维护决策误差可以忽略不计。这项研究的结果为克服多组件系统的维护优化过程中的“维数诅咒”问题提供了有用的参考。 (C)2016 Elsevier Ltd.保留所有权利。

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