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部分可观测系统的选择性维护与检测优化:一种交互式序贯决策框架

Selective maintenance and inspection optimization for partially observable systems: An interactively sequential decision framework

IISE Transactions · 2022
被引 53 · 同刊同年前 3%
ABS 3

中文导读

针对多组件系统中组件状态需通过不精确检测获知且检测与维护共享有限资源的问题,提出一种交互式序贯决策框架,将维护和检测活动整体调度,并定制深度价值网络算法提高求解效率。

Abstract

Selective maintenance is an important condition-based maintenance strategy for multi-component systems, where optimal maintenance actions are identified to maximize the success likelihood of subsequent missions. Most of the existing works on selective maintenance assumed that after each mission, the components’ states can be precisely known without additional efforts. In engineering scenarios, the states of the components in a system need to be revealed by inspections that are usually inaccurate. Inspection activities also consume the limited resources shared with maintenance activities. We, thus, put forth a novel decision framework for selective maintenance of partially observable systems with which maintenance and inspection activities will be scheduled in a holistic and interactively sequential manner. As the components’ states are partially observable and the remaining resources are fully observable, we formulate a finite-horizon Mixed Observability Markov Decision Process (MOMDP) model to support the optimization. In the MOMDP model, both maintenance and inspection actions can be interactively and sequentially planned based on the distributions of components’ states and the remaining resources. To improve the solution efficiency of the MOMDP model, we customize a Deep Value Network (DVN) algorithm in which the maximum mission success probability is approximated. A five-component system and a real-world multi-state coal transportation system are used to demonstrate the effectiveness of the proposed method. It is shown that the probability of the system successfully completing the next mission can be significantly increased by taking inspections into account. The results also demonstrate the computational efficiency of the customized DVN algorithm.

选择性维护部分可观测系统马尔可夫决策过程深度价值网络条件维护