Real-time Footstep Planning and Control of the Solo Quadruped Robot in 3D Environments

2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2022)

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摘要
Quadruped robots have proved their robustness to cross complex terrain despite little environment knowledge. Yet advanced locomotion controllers are expected to take advantage of exteroceptive information. This paper presents a complete method to plan and control the locomotion of quadruped robots when 3D information about the surrounding obstacles is available, based on several stages of decision. We first propose a contact planner formulated as a mixed-integer program, optimized on-line at each new robot step. It selects a surface from a set of convex surfaces describing the environment for the next footsteps while ensuring kinematic constraints. We then propose to optimize the exact contact location and the feet trajectories at control frequency to avoid obstacles, thanks to an efficient formulation of quadratic programs optimizing Bezier curves. By relying on the locomotion controller of our quadruped robot Solo, we finally implement the complete method, provided as an open-source package. Its efficiency is asserted by statistical evaluation of the importance of each component in simulation. We have a 100% success rate for our framework, and we show that the deactivation of the contact planning, footstep adaptation and collision avoidance, respectively induced a drop to 70%, 62% and 83% success rate in the worst case, justifying the complete architecture.
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关键词
advanced locomotion controllers,collision avoidance,complete method,complex terrain,contact planner,contact planning,control frequency,convex surfaces,efficient formulation,environment knowledge,exact contact location,exteroceptive information,footstep adaptation,footsteps,locomotion controller,mixed-integer program,quadratic programs,quadruped robot Solo,quadruped robots,robot step,Solo quadruped robot,surrounding obstacles,time footstep planning
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