A DRL-based heating controller with a real-time adaptive safety filter guarantees flexibility compliance, achieves up to 50% energy savings over rule-based methods, and outperforms plain DRL with only minor comfort violations.
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Safe Deep Reinforcement Learning for Building Heating Control and Demand-side Flexibility
A DRL-based heating controller with a real-time adaptive safety filter guarantees flexibility compliance, achieves up to 50% energy savings over rule-based methods, and outperforms plain DRL with only minor comfort violations.