Proceedings of FOCAPD 2024ISSN: 2818-4734
Volume: 3 (2024)
Table of Contents
LAPSE:2024.1553
Published Article
LAPSE:2024.1553
Reinforcement Learning-Driven Process Design: A Hydrodealkylation Example
Yuhe Tian, Ayooluwa Akintola, Yazhou Jiang, Dewei Wang, Jie Bao, Miguel A. Zamarripa, Brandon Paul, Yunxiang Chen, Peiyuan Gao, Alexander Noring, Arun Iyengar, Andrew Liu, Olga Marina, Brian Koeppel, Zhijie Xu
August 16, 2024. Originally submitted on July 9, 2024
Abstract
In this work, we present a follow-up work of reinforcement learning (RL)-driven process design using the Institute for Design of Advanced Energy Systems Process Systems Engineering (IDAES-PSE) Framework. Herein, process designs are generated as stream inlet-outlet matrices and optimized using the IDAES platform, the objective function value of which is the reward to RL agent. Deep Q-Network is employed as the RL agent including a series of convolutional neural network layers and fully connected layers to compute the actions of adding or removing any stream connections, thus creating a new process design. The process design is then informed back to the RL agent to refine its learning. The iteration continues until the maximum number of steps is reached with feasible process designs generated. To further expedite the RL search of the design space which can comprise the selection of any candidate unit(s) with arbitrary stream connections, we investigate the role of RL reward function and their impacts on exploring more complicated versus intensified process configurations. A sub-space search strategy is also developed to branch the combinatorial design space to accelerate the discovery of feasible process design solutions particularly when a large pool of candidate process units is selected by the user. The potential of the enhanced RL-assisted process design strategy is showcased via a hydrodealkylation example.
Suggested Citation
Tian Y, Akintola A, Jiang Y, Wang D, Bao J, Zamarripa MA, Paul B, Chen Y, Gao P, Noring A, Iyengar A, Liu A, Marina O, Koeppel B, Xu Z. Reinforcement Learning-Driven Process Design: A Hydrodealkylation Example. Systems and Control Transactions 3:387-393 (2024) https://doi.org/10.69997/sct.119603
Author Affiliations
Tian Y: West Virginia University, Department of Chemical and Biomedical Engineering, Morgantown, WV, US
Akintola A: West Virginia University, Department of Chemical and Biomedical Engineering, Morgantown, WV, US
Jiang Y: West Virginia University, Department of Chemical and Biomedical Engineering, Morgantown, WV, US
Wang D: Pacific Northwest National Laboratory, US
Bao J: Pacific Northwest National Laboratory, US
Zamarripa MA: KeyLogic Systems LLC, Morgantown, WV, US
Paul B: KeyLogic Systems LLC, Morgantown, WV, US
Chen Y: Pacific Northwest National Laboratory, US
Gao P: Pacific Northwest National Laboratory, US
Noring A: KeyLogic Systems LLC, Morgantown, WV, US
Iyengar A: KeyLogic Systems LLC, Morgantown, WV, US
Liu A: Pacific Northwest National Laboratory, US
Marina O: Pacific Northwest National Laboratory, US
Koeppel B: Pacific Northwest National Laboratory, US
Xu Z: Pacific Northwest National Laboratory, US
Journal Name
Systems and Control Transactions
Volume
3
First Page
387
Last Page
393
Year
2024
Publication Date
2024-07-10
Version Comments
DOI Assigned
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PII: 0387-0393-676098-SCT-3-2024, Publication Type: Journal Article
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LAPSE:2024.1553
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https://doi.org/10.69997/sct.119603
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[v2] (DOI Assigned)
Aug 16, 2024
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Jul 9, 2024
 
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