Degradation-Aware Frequency Regulation of a Heterogeneous Battery Fleet via Reinforcement Learning
Tanay Raghunandan Srinivasa, Vivek Deulkar, Jia Bhargava, Mohammad Hajiesmaili, Prashant Shenoy

TL;DR
This paper presents a reinforcement learning approach for real-time scheduling of heterogeneous battery fleets to optimize frequency regulation while minimizing degradation, addressing the path-dependent nature of battery cycling.
Contribution
It introduces a novel RL-based scheduling method using ELM for large state spaces, effectively reducing battery degradation in frequency regulation applications.
Findings
Consistent reduction in cycle-depth occurrence.
Effective handling of large state-action spaces.
Improved degradation metrics over baseline policies.
Abstract
Battery energy storage systems are increasingly deployed as fast-responding resources for grid balancing services such as frequency regulation and for mitigating renewable generation uncertainty. However, repeated charging and discharging induces cycling degradation and reduces battery lifetime. This paper studies the real-time scheduling of a heterogeneous battery fleet that collectively tracks a stochastic balancing signal subject to per-battery ramp-rate and capacity constraints, while minimizing long-term cycling degradation. Cycling degradation is fundamentally path-dependent: it is determined by charge-discharge cycles formed by the state-of-charge (SoC) trajectory and is commonly quantified via rainflow cycle counting. This non-Markovian structure makes it difficult to express degradation as an additive per-time-step cost, complicating classical dynamic programming approaches.…
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Taxonomy
TopicsAdvanced Battery Technologies Research · Microgrid Control and Optimization · Electric Vehicles and Infrastructure
