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Feasibility-Driven Step Timing Adaptation for Robust MPC-Based Gait Generation in Humanoids

Filippo M. Smaldone, Nicola Scianca, Leonardo Lanari, Giuseppe Oriolo

2021IEEE Robotics and Automation Letters16 citationsDOIOpen Access PDF

Abstract

The feasibility region of a Model Predictive Control (MPC) algorithm is the subset of the state space in which the constrained optimization problem to be solved is feasible. In our recent Intrinsically Stable MPC (IS-MPC) method for humanoid gait generation, feasibility means being able to satisfy the dynamic balance condition, the kinematic constraints on footsteps as well as an explicit stability condition. Here, we exploit the feasibility concept to build a step timing adapter that, at each control cycle, modifies the duration of the current step whenever a feasibility loss is imminent due, e.g., to an external perturbation. The proposed approach allows the IS-MPC algorithm to maintain its linearity and adds a negligible computational burden to the overall scheme. Simulations and experimental results where the robot is pushed while walking showcase the performance of the proposed approach.

Topics & Concepts

Humanoid robotModel predictive controlControl theory (sociology)Computer scienceKinematicsGaitStability (learning theory)RobotControl (management)Artificial intelligencePhysicsBiologyPhysiologyClassical mechanicsMachine learningRobotic Locomotion and ControlProsthetics and Rehabilitation RoboticsNeurogenetic and Muscular Disorders Research
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