Terrain-Adaptive Planning and Control of Complex Motions for Walking Excavators

IROS(2020)

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摘要
This article presents a planning and control pipeline for legged-wheeled (hybrid) machines. It consists of a Trajectory Optimization based planner that computes references for end-effectors and joints. The references are tracked using a whole-body controller based on a hierarchical optimization approach. Our controller is capable of performing terrain adaptive whole-body control. Furthermore, it computes both torque and position/velocity references, depending on the actuator capabilities. We perform experiments on a Menzi Muck M545, a full size 31 Degrees of Freedom (DoF) walking excavator with five limbs: four wheeled legs and an arm. We show motions that require full-body coordination executed in realistic conditions. To the best of our knowledge, this is the first work that shows the execution of whole-body motions on a full size walking excavator, using all DoFs for locomotion.
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关键词
actuator capabilities,Menzi Muck M545,walking excavator,wheeled legs,full-body coordination,whole-body motions,size walking excavator,complex motions,excavators,control pipeline,legged-wheeled machines,computes references,end-effectors,whole-body controller,hierarchical optimization approach,terrain,whole-body control,torque,trajectory optimization based planner
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