Robotics: Science and Systems XIX 2023
DOI: 10.15607/rss.2023.xix.096
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Co-optimization of Morphology and Behavior of Modular Robots via Hierarchical Deep Reinforcement Learning

Jieqiang Sun,
Meibao Yao,
Xueming Xiao
et al.

Abstract: Modular robots hold the promise of changing their shape and even dimension to adapt to various tasks and environments. To realize this superiority, it is essential to find the appropriate morphology and its corresponding behavior simultaneously to ensure optimality of the reconfiguration. However, achieving co-optimization is challenging because robotic configuration and motion are interactive and coupled with each other, as well as their optimization processes. To this end, we proposed a co-optimization frame… Show more

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