Optimized cost function for demand response coordination of multiple EV charging stations using reinforcement learning
Manu Lahariya, Nasrin Sadeghianpourhamami, Chris Develder

TL;DR
This paper introduces an improved reinforcement learning cost function for coordinating multiple EV charging stations in demand response, significantly reducing training time while maintaining effective load balancing performance.
Contribution
The paper proposes a new cost function for RL-based EV charging coordination that enhances training efficiency without sacrificing policy effectiveness.
Findings
The new cost function reduces training time substantially.
RL policies effectively meet demand response targets in real-world data.
Performance bounds show competitiveness with optimal and heuristic strategies.
Abstract
Electric vehicle (EV) charging stations represent a substantial load with significant flexibility. The exploitation of that flexibility in demand response (DR) algorithms becomes increasingly important to manage and balance demand and supply in power grids. Model-free DR based on reinforcement learning (RL) is an attractive approach to balance such EV charging load. We build on previous research on RL, based on a Markov decision process (MDP) to simultaneously coordinate multiple charging stations. However, we note that the computationally expensive cost function adopted in the previous research leads to large training times, which limits the feasibility and practicality of the approach. We, therefore, propose an improved cost function that essentially forces the learned control policy to always fulfill any charging demand that does not offer any flexibility. We rigorously compare the…
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