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DIP-QL: A Novel Reinforcement Learning Method for Constrained Industrial Systems SCIE SCOPUS

Title
DIP-QL: A Novel Reinforcement Learning Method for Constrained Industrial Systems
Authors
PARK, HYUNGJUNMIN, DAIKIRYU, JONG-HYUNCHOI, DONG GU
Date Issued
2022-11
Publisher
Institute of Electrical and Electronics Engineers
Abstract
Existing reinforcement learning (RL) methods have limited applicability to real-world industrial control problems because of their various constraints. To overcome this challenge, we devise a novel RL method to enable the optimization of a policy while strictly satisfying the system constraints. By leveraging a value-based RL approach, our proposed method is not limited by the challenges faced when searching a constrained policy. Our method has two main features. First, we devise two distance-based Q-value update schemes, incentive and penalty updates, which enable the agent to decide on controls in the feasible region by replacing an infeasible control with the nearest feasible continuous control. The proposed update schemes can adjust the values of both continuous and original infeasible controls. Second, we define the penalty cost as a shadow price-weighted penalty to achieve efficient, constrained policy learning. We apply our method to the microgrid control, and the case study demonstrates its superiority. IEEE
URI
https://oasis.postech.ac.kr/handle/2014.oak/113772
DOI
10.1109/TII.2022.3159570
ISSN
1551-3203
Article Type
Article
Citation
IEEE Transactions on Industrial Informatics, vol. 18, no. 11, page. 7494 - 7503, 2022-11
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