Litcius/Paper detail

Solvent extraction process design using deep reinforcement learning

Siby Jose Plathottam, Blake Richey, Gregory Curry, Joe Cresko, Chukwunwike O. Iloeje

2021Journal of Advanced Manufacturing and Processing15 citationsDOI

Abstract

Abstract Many chemical manufacturing and separations processes like solvent extraction comprise hierarchically complex configurations of functional process units. With increasing complexity, strategies that rely on heuristics become less reliable for design optimization. In this study, we explore deep reinforcement learning for mapping the space of feasible designs to find an optimization strategy that can match or exceed the performance of conventional optimization. To this end, we implement a highly configurable learning environment for the solvent design process to which we can couple state‐of‐the‐art deep reinforcement learning agents. We evaluate the trained agents against the heuristic optimization for the solvent process design tasked to optimize recovery efficiency and product purity. Results demonstrated the agent successfully learned the strategy for predicting comparably optimal solvent extraction process designs for varying combinations of feed compositions.

Topics & Concepts

Reinforcement learningComputer scienceHeuristicsProcess (computing)HeuristicProcess optimizationProcess designProcess engineeringArtificial intelligenceDesign of experimentsMachine learningEngineeringMathematicsChemical engineeringProcess integrationStatisticsOperating systemProcess Optimization and IntegrationAdvanced Control Systems OptimizationScheduling and Optimization Algorithms