2023
DOI: 10.3390/app13137702
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Power Battery Scheduling Optimization Based on Double DQN Algorithm with Constraints

Abstract: Power battery scheduling optimization can improve the service life of the battery, but the existing heuristic algorithm has poor adaptability, and the capacity fluctuates significantly in the cycle aging process, which makes it easy to fall into the local optimal. To overcome these problems, we take the battery cycle life maximization as the goal, propose a reinforcement learning scheduling optimization model with temperature and internal resistance difference constraints, so as to determine whether to charge … Show more

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