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News/The Challenges of Using Reinforcement Learning for Controlling Industrial Energy Systems
arxiv
PublishedJune 1, 2026 at 4:00 AM

The Challenges of Using Reinforcement Learning for Controlling Industrial Energy Systems

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arXiv:2605.31044v1 Announce Type: new Abstract: Reinforcement learning has shown promising results for optimizing the control of industrial energy systems, yet most existing studies remain limited to the application in simulation environments. We investigate the challenges of deploying reinforcement

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