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Model Hierarchy Predictive Control of Robotic Systems

He Li, Robert J. Frei, Patrick M. Wensing

2021IEEE Robotics and Automation Letters53 citationsDOIOpen Access PDF

Abstract

This letter presents a new predictive control architecture for high-dimensional robotic systems. As opposed to a conventional Model Predictive Control (MPC) approach to locomotion that formulates a hierarchical sequence of optimization problems, the proposed work formulates a single optimization problem posed over a hierarchy of models, and is thus named Model Hierarchy Predictive Control (MHPC). MHPC is formulated as a multi-phase receding-horizon Trajectory Optimization (TO) problem, and can be implemented using any general multi-phase TO solver. MHPC is benchmarked in simulation on a quadruped, a biped, and a quadrotor, demonstrating control performance on par or exceeding whole-body MPC while maintaining a lower computational cost in each case. A preliminary gap jumping experiment is conducted on the MIT Mini Cheetah with the control policy generated offline, demonstrating the physical validity of the generated trajectories and motivating online MHPC in future work.

Topics & Concepts

Model predictive controlHierarchyTrajectoryControl (management)Computer scienceControl engineeringControl theory (sociology)Optimization problemOnline modelEngineeringTrajectory optimizationSequence (biology)Long-term predictionTerm (time)Optimal controlWork (physics)Control systemRoboticsHierarchical control systemArtificial intelligenceReal-time Control SystemRobotAutonomous system (mathematics)Advanced Control Systems OptimizationRobotic Path Planning AlgorithmsSpacecraft Dynamics and Control
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