MARBLER: An Open Platform for Standardized Evaluation of Multi-Robot Reinforcement Learning Algorithms
Multi-Agent Reinforcement Learning (MARL) has enjoyed significant recent progress thanks, in part, to the integration of deep learning techniques for modeling interactions in complex environments. This is naturally starting to benefit multi-robot systems (MRS) in the form of multi-robot RL (MRRL). H...
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Zusammenfassung: | Multi-Agent Reinforcement Learning (MARL) has enjoyed significant recent
progress thanks, in part, to the integration of deep learning techniques for
modeling interactions in complex environments. This is naturally starting to
benefit multi-robot systems (MRS) in the form of multi-robot RL (MRRL).
However, existing infrastructure to train and evaluate policies predominantly
focus on the challenges of coordinating virtual agents, and ignore
characteristics important to robotic systems. Few platforms support realistic
robot dynamics, and fewer still can evaluate Sim2Real performance of learned
behavior. To address these issues, we contribute MARBLER: Multi-Agent RL
Benchmark and Learning Environment for the Robotarium. MARBLER offers a robust
and comprehensive evaluation platform for MRRL by marrying Georgia Tech's
Robotarium (which enables rapid deployment on physical MRS) and OpenAI's Gym
interface (which facilitates standardized use of modern learning algorithms).
MARBLER offers a highly controllable environment with realistic dynamics,
including barrier certificate-based obstacle avoidance. It allows anyone across
the world to train and deploy MRRL algorithms on a physical testbed with
reproducibility. Further, we introduce five novel scenarios inspired by common
challenges in MRS and provide support for new custom scenarios. Finally, we use
MARBLER to evaluate popular MARL algorithms and provide insights into their
suitability for MRRL. In summary, MARBLER can be a valuable tool to the MRS
research community by facilitating comprehensive and standardized evaluation of
learning algorithms on realistic simulations and physical hardware. Links to
our open-source framework and videos of real-world experiments can be found at
https://shubhlohiya.github.io/MARBLER/. |
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DOI: | 10.48550/arxiv.2307.03891 |