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Using process data to generate an optimal control policy via apprenticeship and reinforcement learning

Max Mowbray, Robin Smith, Ehecatl Antonio del Rio‐Chanona, Dongda Zhang

2021AIChE Journal47 citationsDOIOpen Access PDF

Abstract

Abstract Reinforcement learning (RL) is a data‐driven approach to synthesizing an optimal control policy. A barrier to wide implementation of RL‐based controllers is its data‐hungry nature during online training and its inability to extract useful information from human operator and historical process operation data. Here, we present a two‐step framework to resolve this challenge. First, we employ apprenticeship learning via inverse RL to analyze historical process data for synchronous identification of a reward function and parameterization of the control policy. This is conducted offline. Second, the parameterization is improved online efficiently under the ongoing process via RL within only a few iterations. Significant advantages of this framework include to allow for the hot‐start of RL algorithms for process optimal control, and robust abstraction of existing controllers and control knowledge from data. The framework is demonstrated on three case studies, showing its potential for chemical process control.

Topics & Concepts

Reinforcement learningProcess (computing)Computer scienceAbstractionControl (management)Function (biology)Process controlIdentification (biology)Optimal controlArtificial intelligenceControl functionMachine learningMathematical optimizationMathematicsOperating systemEvolutionary biologyBiologyBotanyPhilosophyEpistemologyAdvanced Control Systems OptimizationFault Detection and Control SystemsFuel Cells and Related Materials
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