2022
DOI: 10.48550/arxiv.2204.10685
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TASAC: a twin-actor reinforcement learning framework with stochastic policy for batch process control

Abstract: Due to their complex nonlinear dynamics and batch-to-batch variability, batch processes pose a challenge for process control. Due to the absence of accurate models and resulting plant-model mismatch, these problems become harder to address for advanced model-based control strategies. Reinforcement Learning (RL), wherein an agent learns the policy by directly interacting with the environment, offers a potential alternative in this context. RL frameworks with actor-critic architecture have recently become popula… Show more

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