2021
DOI: 10.48550/arxiv.2108.02374
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Reinforcement Learning Based Optimal Battery Control Under Cycle-based Degradation Cost

Abstract: Battery energy storage systems are providing increasing level of benefits to power grid operations by decreasing the resource uncertainty and supporting frequency regulation. Thus, it is crucial to obtain the optimal policy for battery to efficiently provide these grid-services while accounting for its degradation cost. To solve the optimal battery control (OBC) problem using the powerful reinforcement learning (RL) algorithms, this paper aims to develop a new representation of the cycle-based battery degradat… Show more

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