cs.AI updates on arXiv.org 07月15日 12:27
Learning Decentralized Multi-Biped Control for Payload Transport
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本文提出一种适用于崎岖地形的 decentralized controller,通过多足机器人替代车轮,实现多机器人协同运输。通过强化学习训练控制器,实验证明其在多种场景下有效,并首次展示了可扩展的多足机器人运输系统。

arXiv:2406.17279v2 Announce Type: replace-cross Abstract: Payload transport over flat terrain via multi-wheel robot carriers is well-understood, highly effective, and configurable. In this paper, our goal is to provide similar effectiveness and configurability for transport over rough terrain that is more suitable for legs rather than wheels. For this purpose, we consider multi-biped robot carriers, where wheels are replaced by multiple bipedal robots attached to the carrier. Our main contribution is to design a decentralized controller for such systems that can be effectively applied to varying numbers and configurations of rigidly attached bipedal robots without retraining. We present a reinforcement learning approach for training the controller in simulation that supports transfer to the real world. Our experiments in simulation provide quantitative metrics showing the effectiveness of the approach over a wide variety of simulated transport scenarios. In addition, we demonstrate the controller in the real-world for systems composed of two and three Cassie robots. To our knowledge, this is the first example of a scalable multi-biped payload transport system.

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多足机器人 运输系统 强化学习 控制器 崎岖地形
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