ROJan 26, 2022

Robust Disturbance Rejection for Robotic Bipedal Walking: System-Level-Synthesis with Step-to-step Dynamics Approximation

arXiv:2201.10749v12 citations
AI Analysis

This addresses robust walking for bipedal robots under disturbances, representing an incremental improvement in control methods.

The authors tackled the problem of external push disturbances on bipedal walking robots by developing a stepping stabilization control based on learned step-to-step dynamics and system-level-synthesis, successfully demonstrating it on robots AMBER and Cassie with effective and computationally-efficient disturbance rejection.

We present a stepping stabilization control that addresses external push disturbances on bipedal walking robots. The stepping control is synthesized based on the step-to-step (S2S) dynamics of the robot that is controlled to have an approximately constant center of mass (COM) height. We first learn a linear S2S dynamics with bounded model discrepancy from the undisturbed walking behaviors of the robot, where the walking step size is taken as the control input to the S2S dynamics. External pushes are then considered as disturbances to the learned S2S (L-S2S) dynamics. We then apply the system-level-synthesis (SLS) approach on the disturbed L-S2S dynamics to robustly stabilize the robot to the desired walking while satisfying the kinematic constraints of the robot. We successfully realize the proposed approach on the walking of the bipedal robot AMBER and Cassie subject to push disturbances, showing that the approach is general, effective, and computationally-efficient for robust disturbance rejection.

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