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Reinforcement Learning in Process Industries:Review and PerspectiveOA北大核心CSTPCD

中文摘要

This survey paper provides a review and perspective on intermediate and advanced reinforcement learning(RL)techniques in process industries. It offers a holistic approach by covering all levels of the process control hierarchy. The survey paper presents a comprehensive overview of RL algorithms,including fundamental concepts like Markov decision processes and different approaches to RL, such as value-based, policy-based, and actor-critic methods, while also discussing the relationship between classical control and RL. It further reviews the wide-ranging applications of RL in process industries, such as soft sensors, low-level control, high-level control, distributed process control, fault detection and fault tolerant control, optimization,planning, scheduling, and supply chain. The survey paper discusses the limitations and advantages, trends and new applications, and opportunities and future prospects for RL in process industries. Moreover, it highlights the need for a holistic approach in complex systems due to the growing importance of digitalization in the process industries.

Oguzhan Dogru;Junyao Xie;Om Prakash;Ranjith Chiplunkar;Jansen Soesanto;Hongtian Chen;Kirubakaran Velswamy;Fadi Ibrahim;Biao Huang;

Department of Chemical and Materials Engineering,University of Alberta,Edmonton,T6G 1H9,CanadaDepartment of Chemical and Materials Engineering,University of Alberta,Edmonton,T6G 1H9,Canada IEEE

计算机与自动化

Process controlprocess systems engineeringreinforcement learning

《IEEE/CAA Journal of Automatica Sinica》 2024 (002)

P.283-300 / 18

supported in part by the Natural Sciences Engineering Research Council of Canada (NSERC)。

10.1109/JAS.2024.124227

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