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Deep reinforcement learning for process design: Review and perspective

Qinghe Gao, Artur M. Schweidtmann

2024Current Opinion in Chemical Engineering53 citationsDOIOpen Access PDF

Abstract

The transformation toward renewable energy and feedstock supply in the chemical industry requires new conceptual process design approaches. Recently, deep reinforcement learning (RL), a subclass of machine learning, has shown the potential to solve complex decision-making problems and aid sustainable process design. However, its suitability in static process design still needs to be examined. We discuss the advantages and disadvantages of RL for process design. Then, we survey state-of-the-art research through three major elements: (1) information representation, (2) agent architecture, and (3) environment and reward. Moreover, we discuss perspectives on underlying challenges and promising future works to unfold the full potential of RL for process design in chemical engineering.

Topics & Concepts

Perspective (graphical)Reinforcement learningProcess (computing)ReinforcementCognitive scienceManagement scienceComputer scienceEngineeringArtificial intelligencePsychologySocial psychologyProgramming languageProcess Optimization and IntegrationAdvanced Control Systems OptimizationScheduling and Optimization Algorithms
Deep reinforcement learning for process design: Review and perspective | Litcius