COMPOSER: Scalable and Robust Modular Policies for Snake Robots
Yuyou Zhang, Yaru Niu, Xingyu Liu, Ding Zhao

TL;DR
COMPOSER introduces a modular, multi-agent reinforcement learning approach with self-attention for snake robot control, significantly improving success rates, robustness, and generalizability across diverse tasks.
Contribution
This work develops a novel modular control framework for snake robots using cooperative MARL with self-attention, enhancing robustness and zero-shot generalization.
Findings
Achieves highest success rates across all tested tasks.
Demonstrates increased robustness against module failures.
Exhibits superior zero-shot generalization capabilities.
Abstract
Snake robots have showcased remarkable compliance and adaptability in their interaction with environments, mirroring the traits of their natural counterparts. While their hyper-redundant and high-dimensional characteristics add to this adaptability, they also pose great challenges to robot control. Instead of perceiving the hyper-redundancy and flexibility of snake robots as mere challenges, there lies an unexplored potential in leveraging these traits to enhance robustness and generalizability at the control policy level. We seek to develop a control policy that effectively breaks down the high dimensionality of snake robots while harnessing their redundancy. In this work, we consider the snake robot as a modular robot and formulate the control of the snake robot as a cooperative Multi-Agent Reinforcement Learning (MARL) problem. Each segment of the snake robot functions as an…
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Taxonomy
TopicsModular Robots and Swarm Intelligence · Soft Robotics and Applications · Robot Manipulation and Learning
