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A Deep Reinforcement Learning (DeepRL) approach for optimizing a simulation model and predicting state variables.

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Deep Reinforcement Learning for Simulation Model Optimization

The proposed work leverages advanced deep reinforcement learning techniques, specifically Deep Q-Learning (DQN), by combining Q-learning with neural networks to optimize VRFB-specific parameters, ensuring a strong fit between real and simulated data. This method outperforms existing approaches in voltage prediction. Furthermore, we enhance the approach by incorporating a second deep RL algorithm : Dueling DQN an improvement over DQN, which yields a 10% enhancement in results, particularly in voltage prediction. The final approach produces an accurate VRFB model that can be generalized to various types of redox flow batteries.

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A Deep Reinforcement Learning (DeepRL) approach for optimizing a simulation model and predicting state variables.

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