Back to Search Start Over

Guided probabilistic reinforcement learning for sampling-efficient maintenance scheduling of multi-component system.

Authors :
Zhang, Yiming
Zhang, Dingyang
Zhang, Xiaoge
Qiu, Lemiao
Chan, Felix T.S.
Wang, Zili
Zhang, Shuyou
Source :
Applied Mathematical Modelling. Jul2023, Vol. 119, p677-697. 21p.
Publication Year :
2023

Abstract

• Develop a generic framework for maintenance scheduling of multi-component systems with environment modeling, state representation and policy optimization. • Propose Guided-Probabilistic Reinforcement Learning for sampling-efficient maintenance scheduling by incorporating domain expert knowledge. • Develop Bayesian formulations to address data sparsity for environmental reward modeling, performance degradation, and exploration of action spaces. In recent years, multi-agent deep reinforcement learning has progressed rapidly as reflected by its increasing adoptions in industrial applications. This paper proposes a Guided Probabilistic Reinforcement Learning (Guided-PRL) model to tackle maintenance scheduling of multi-component systems in the presence of uncertainty with the goal of minimizing the overall life-cycle cost. The proposed Guided-PRL is deeply rooted in the Actor-Critic (AC) scheme. Since traditional AC falls short in sampling efficiency and suffers from getting stuck in local minima in the context of multi-agent reinforcement learning, it is thus challenging for the actor network to converge to a solution of desirable quality even when the critic network is properly configured. To address these issues, we develop a generic framework to facilitate effective training of the actor network, and the framework consists of environmental reward modeling, degradation formulation, state representation, and policy optimization. The convergence speed of the actor network is significantly improved with a guided sampling scheme for environment exploration by exploiting rules-based domain expert policies. To handle data scarcity, the environmental modeling and policy optimization are approximated with Bayesian models for effective uncertainty quantification. The Guided-PRL model is evaluated using the simulations of a 12-component system as well as GE90 and CFM56 engines. Compared with four alternative deep reinforcement learning schemes, the Guided-PRL lowers life-cycle cost by 34.92 % to 88.07 %. In comparison with rules-based expert policies, the Guided-PRL decreases the life-cycle cost by 23.26 % to 51.36 %. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0307904X
Volume :
119
Database :
Academic Search Index
Journal :
Applied Mathematical Modelling
Publication Type :
Academic Journal
Accession number :
163515390
Full Text :
https://doi.org/10.1016/j.apm.2023.03.025