Abstract
This paper presents a literature review of reinforcement learning (RL) and its applications to process control and optimization. These applications were evaluated from a new perspective on simulation-based offline training and process demonstrations, policy deployment with transfer learning (TL) and the challenges of integrating it by proposing a feasible approach to online process control. The study elucidates how learning from demonstrations can be accomplished through imitation learning (IL) and reinforcement learning, and presents a hyperparameter-optimization framework to obtain a feasible algorithm and deep neural network (DNN). The study details a batch process control experiment using the deep-deterministic-policy-gradient (DDPG) algorithm modified with adversarial imitation learning.
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CITATION STYLE
Faria, R. de R., Capron, B. D. O., Secchi, A. R., & de Souza, M. B. (2022, November 1). Where Reinforcement Learning Meets Process Control: Review and Guidelines. Processes. MDPI. https://doi.org/10.3390/pr10112311
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