A deep reinforcement learning approach for repair-based maintenance of multi-unit systems using proportional hazards model

被引:13
|
作者
Najafi, Seyedvahid [1 ]
Lee, Chi-Guhn [1 ]
机构
[1] Univ Toronto, Dept Mech & Ind Engn, Toronto, ON M5S 3G8, Canada
关键词
Condition-based maintenance; Deep reinforcement learning; Sequential decision making; OPTIMAL REPLACEMENT POLICY; JOINT OPTIMIZATION; DEGRADATION; COMPONENTS; FRAMEWORK; COST;
D O I
10.1016/j.ress.2023.109179
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Condition-based maintenance (CBM) optimization may turn intractable when a complex system with multiple units becomes an asset of interest. This paper aims to find a CBM policy for a multi-unit series system subject to stochastic degradation, where a new inspection is scheduled based on age and condition monitoring data upon each inspection. The novelty of this study lies in proposing a modified deep reinforcement learning (DRL) al-gorithm for the semi-Markov decision processes (SMDP) to find an opportunistic CBM policy for a multi-unit system with economic dependency over an infinite horizon, where a range of repair actions are allowed under an aperiodic inspection scheme. We also suggested a novel environment simulator that considers the simulta-neous impact of age and covariates using the proportional hazards (PH) model and the system's reliability characteristics. DRL acts as not only a learning algorithm obviating the full specification of the model but also an approximate scheme producing a solution in a limited computation. The proposed algorithm is applied to a multi-unit hydroelectric power system with the damage self-healing property to demonstrate the higher per-formance of the DRL algorithm in cost reduction than alternative policies and explain how enhancing system reliability reduces costs during the learning process.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Joint optimization of lot sizing and condition-based maintenance for a production system using the proportional hazards model
    Zheng, Rui
    Zhou, Yifan
    Gu, Liudong
    Zhang, Zhisheng
    COMPUTERS & INDUSTRIAL ENGINEERING, 2021, 154
  • [22] Dynamic selective maintenance optimization for multi-state systems over a finite horizon: A deep reinforcement learning approach
    Liu, Yu
    Chen, Yiming
    Jiang, Tao
    EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2020, 283 (01) : 166 - 181
  • [23] Optimal multi-level condition-based maintenance policy for multi-unit systems under economic dependence
    Duan, Chaoqun
    Deng, Chao
    Wang, Bingran
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2017, 91 (9-12) : 4299 - 4312
  • [24] Deep multi-agent reinforcement learning for multi-level preventive maintenance in manufacturing systems
    Su, Jianyu
    Huang, Jing
    Adams, Stephen
    Chang, Qing
    Beling, Peter A.
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 192
  • [25] Deep reinforcement learning for maintenance optimization of multi-component production systems considering quality and production plan
    Chen, Ming
    Kang, Yu
    Li, Kun
    Li, Pengfei
    Zhao, Yun-Bo
    QUALITY ENGINEERING, 2024,
  • [26] A stochastic track maintenance scheduling model based on deep reinforcement learning approaches
    Lee, Jun S.
    Yeo, In-Ho
    Bae, Younghoon
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2024, 241
  • [27] Multi-Modal LA in Personalized Education Using Deep Reinforcement Learning Based Approach
    Sharif, Muddsair
    Uckelmann, Dieter
    IEEE ACCESS, 2024, 12 : 54049 - 54065
  • [28] A model-based reinforcement learning approach for maintenance optimization of degrading systems in a large state space
    Zhang, Ping
    Zhu, Xiaoyan
    Xie, Min
    COMPUTERS & INDUSTRIAL ENGINEERING, 2021, 161
  • [29] Deep Reinforcement Learning for Dynamic Opportunistic Maintenance of Multi-Component Systems With Load Sharing
    Zhang, Chen
    Li, Yan-Fu
    Coit, David W.
    IEEE TRANSACTIONS ON RELIABILITY, 2023, 72 (03) : 863 - 877
  • [30] Residual life prediction of repairable systems subject to imperfect preventive maintenance using extended proportional hazards model
    You, M-Y
    Meng, G.
    PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART E-JOURNAL OF PROCESS MECHANICAL ENGINEERING, 2012, 226 (E1) : 50 - 63