5
0

Chargax: A JAX Accelerated EV Charging Simulator

Koen Ponse
Jan Felix Kleuker
Aske Plaat
Thomas Moerland
Main:12 Pages
11 Figures
Bibliography:4 Pages
6 Tables
Appendix:3 Pages
Abstract

Deep Reinforcement Learning can play a key role in addressing sustainable energy challenges. For instance, many grid systems are heavily congested, highlighting the urgent need to enhance operational efficiency. However, reinforcement learning approaches have traditionally been slow due to the high sample complexity and expensive simulation requirements. While recent works have effectively used GPUs to accelerate data generation by converting environments to JAX, these works have largely focussed on classical toy problems. This paper introduces Chargax, a JAX-based environment for realistic simulation of electric vehicle charging stations designed for accelerated training of RL agents. We validate our environment in a variety of scenarios based on real data, comparing reinforcement learning agents against baselines. Chargax delivers substantial computational performance improvements of over 100x-1000x over existing environments. Additionally, Chargax' modular architecture enables the representation of diverse real-world charging station configurations.

View on arXiv
@article{ponse2025_2507.01522,
  title={ Chargax: A JAX Accelerated EV Charging Simulator },
  author={ Koen Ponse and Jan Felix Kleuker and Aske Plaat and Thomas Moerland },
  journal={arXiv preprint arXiv:2507.01522},
  year={ 2025 }
}
Comments on this paper