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      <title>Deep Reinforcement Learning for Optimizing Energy Consumption in Smart Grid Systems</title>
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      <description>• PINNs replace costly smart grid simulators, reducing sample inefficiency in RL-based OPF solutions. • RL policy learning converges 50% faster using PINN surrogates versus traditi</description>
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