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A Review of Nine Physics Engines for Reinforcement Learning Research

Authors :
Kaup, Michael
Wolff, Cornelius
Hwang, Hyerim
Mayer, Julius
Bruni, Elia
Publication Year :
2024

Abstract

We present a review of popular simulation engines and frameworks used in reinforcement learning (RL) research, aiming to guide researchers in selecting tools for creating simulated physical environments for RL and training setups. It evaluates nine frameworks (Brax, Chrono, Gazebo, MuJoCo, ODE, PhysX, PyBullet, Webots, and Unity) based on their popularity, feature range, quality, usability, and RL capabilities. We highlight the challenges in selecting and utilizing physics engines for RL research, including the need for detailed comparisons and an understanding of each framework's capabilities. Key findings indicate MuJoCo as the leading framework due to its performance and flexibility, despite usability challenges. Unity is noted for its ease of use but lacks scalability and simulation fidelity. The study calls for further development to improve simulation engines' usability and performance and stresses the importance of transparency and reproducibility in RL research. This review contributes to the RL community by offering insights into the selection process for simulation engines, facilitating informed decision-making.<br />Comment: 11 pages, 3 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.08590
Document Type :
Working Paper