2022
DOI: 10.21203/rs.3.rs-2248780/v1
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Reinforcement learning for automated conceptual design of advanced energy and chemical systems

Abstract: Computer-aided process engineering and conceptual design in energy and chemical engineering has played a critical role for decades. Conventional computer-aided process and systems design generally starts with process flowsheets that have been developed through experience, which often relies heavily on subject matter expertise. These widely applied approaches require significant human effort, either providing the initially drafted flowsheet, alternative connections, or a set of well-defined heuristics. These re… Show more

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