POMDP inference and robust solution via deep reinforcement learning: an application to railway optimal maintenance

被引:3
作者
Arcieri, Giacomo [1 ]
Hoelzl, Cyprien [1 ]
Schwery, Oliver [2 ]
Straub, Daniel [3 ]
Papakonstantinou, Konstantinos G. [4 ]
Chatzi, Eleni [1 ]
机构
[1] Swiss Fed Inst Technol, Inst Struct Engn, CH-8093 Zurich, Switzerland
[2] Swiss Fed Railways SBB, CH-3000 Bern, Switzerland
[3] Tech Univ Munich, Engn Risk Anal Grp, D-80333 Munich, Germany
[4] Penn State Univ, Dept Civil & Environm Engn, University Pk, PA 16802 USA
基金
美国国家科学基金会;
关键词
Partially observable Markov decision process; Reinforcement learning; Deep learning; Model uncertainty; Optimal maintenance; PLANNING STRUCTURAL INSPECTION; POLICIES;
D O I
10.1007/s10994-024-06559-2
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Partially Observable Markov Decision Processes (POMDPs) can model complex sequential decision-making problems under stochastic and uncertain environments. A main reason hindering their broad adoption in real-world applications is the unavailability of a suitable POMDP model or a simulator thereof. Available solution algorithms, such as Reinforcement Learning (RL), typically benefit from the knowledge of the transition dynamics and the observation generating process, which are often unknown and non-trivial to infer. In this work, we propose a combined framework for inference and robust solution of POMDPs via deep RL. First, all transition and observation model parameters are jointly inferred via Markov Chain Monte Carlo sampling of a hidden Markov model, which is conditioned on actions, in order to recover full posterior distributions from the available data. The POMDP with uncertain parameters is then solved via deep RL techniques with the parameter distributions incorporated into the solution via domain randomization, in order to develop solutions that are robust to model uncertainty. As a further contribution, we compare the use of Transformers and long short-term memory networks, which constitute model-free RL solutions and work directly on the observation space, with an approach termed the belief-input method, which works on the belief space by exploiting the learned POMDP model for belief inference. We apply these methods to the real-world problem of optimal maintenance planning for railway assets and compare the results with the current real-life policy. We show that the RL policy learned by the belief-input method is able to outperform the real-life policy by yielding significantly reduced life-cycle costs.
引用
收藏
页码:7967 / 7995
页数:29
相关论文
共 50 条
[31]   Deep sparse representation via deep dictionary learning for reinforcement learning [J].
Tang, Jianhao ;
Li, Zhenni ;
Xie, Shengli ;
Ding, Shuxue ;
Zheng, Shaolong ;
Chen, Xueni .
2022 41ST CHINESE CONTROL CONFERENCE (CCC), 2022, :2398-2403
[32]   Discriminative sampling via deep reinforcement learning for kinship verification [J].
Wang, Shiwei ;
Yan, Haibin .
PATTERN RECOGNITION LETTERS, 2020, 138 :38-43
[33]   Market Making Strategy Optimization via Deep Reinforcement Learning [J].
Sun, Tianyuan ;
Huang, Dechun ;
Yu, Jie .
IEEE ACCESS, 2022, 10 :9085-9093
[34]   Robust Optimal Formation Control of Heterogeneous Multi-Agent System via Reinforcement Learning [J].
Lin, Wei ;
Zhao, Wanbing ;
Liu, Hao .
IEEE ACCESS, 2020, 8 :218424-218432
[35]   Enhancing wound healing through deep reinforcement learning for optimal therapeutics [J].
Lu, Fan ;
Zlobina, Ksenia ;
Rondoni, Nicholas A. ;
Teymoori, Sam ;
Gomez, Marcella .
ROYAL SOCIETY OPEN SCIENCE, 2024, 11 (07)
[36]   Robust Deep Reinforcement Learning for Traffic Signal Control [J].
Kai Liang Tan ;
Anuj Sharma ;
Soumik Sarkar .
Journal of Big Data Analytics in Transportation, 2020, 2 (3) :263-274
[37]   Toward robust and scalable deep spiking reinforcement learning [J].
Akl, Mahmoud ;
Ergene, Deniz ;
Walter, Florian ;
Knoll, Alois .
FRONTIERS IN NEUROROBOTICS, 2023, 16
[38]   Robust Deep Reinforcement Learning for Extractive Legal Summarization [J].
Duy-Hung Nguyen ;
Rao-Sinh Nguyen ;
Nguyen Viet Dung Nghiem ;
Dung Tien Le ;
Khatun, Mirri Arnina ;
Minh-Tien Nguyen ;
Le, Hung .
NEURAL INFORMATION PROCESSING, ICONIP 2021, PT VI, 2022, 1517 :597-604
[39]   Deep Robust Reinforcement Learning for Practical Algorithmic Trading [J].
Li, Yang ;
Zheng, Wanshan ;
Zheng, Zibin .
IEEE ACCESS, 2019, 7 :108014-108022
[40]   Counterfactual state explanations for reinforcement learning agents via generative deep learning [J].
Olson, Matthew L. ;
Khanna, Roli ;
Neal, Lawrence ;
Li, Fuxin ;
Wong, Weng-Keen .
ARTIFICIAL INTELLIGENCE, 2021, 295