Central Pattern Generator With Inertial Feedback For Stable Locomotion And Climbing In Unstructured Terrain

2018 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA)(2018)

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摘要
Inspired by the locomotor nervous system of vertebrates, central pattern generator (CPG) models can be used to design gaits for articulated robots, such as crawling, swimming or legged robots. Incorporating sensory feedback for gait adaptation in these models can improve the locomotive performance of such robots in challenging terrain. However, many CPG models to date have been developed exclusively for open-loop gait generation for traversing level terrain. In this paper, we present a novel approach for incorporating inertial feedback into the CPG framework for the control of body posture during legged locomotion on steep, unstructured terrain. That is, we adapt the limit cycle of each leg of the robot with time to simultaneously produce locomotion and body posture control. We experimentally validate our approach on a hexapod robot, locomoting in a variety of steep, challenging terrains (grass, rocky slide, stairs). We show how our approach can be used to level the robot's body, allowing it to locomote at a relatively constant speed, even as terrain steepness and complexity prevents the use of an open-loop control strategy.
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关键词
sensory feedback,inertial feedback,open-loop control strategy,complexity,terrain steepness,challenging terrains,steep terrains,hexapod robot,steep terrain,legged locomotion,body posture,CPG framework,level terrain,open-loop gait generation,CPG models,locomotive performance,gait adaptation,swimming legged robots,crawling legged robots,articulated robots,gaits,central pattern generator models,unstructured terrain,stable locomotion
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