Adaptive Gait Modeling and Optimization for Principally Kinematic Systems
Siming Deng, Noah J. Cowan, Brian A. Bittner

TL;DR
This paper introduces an adaptive modeling framework that significantly improves gait optimization speed for principally kinematic robots, enabling real-time behavior refinement and terrain adaptation in complex environments.
Contribution
It presents a novel adaptive system identification method that accelerates gait optimization by ten times for the Purcell swimmer, facilitating in-situ adjustments in challenging conditions.
Findings
Achieved approximately 10 cycles per link in gait optimization.
Ten-fold speed improvement over existing methods.
Enhanced capability for in-situ behavior refinement and terrain adaptation.
Abstract
Robotic adaptation to unanticipated operating conditions is crucial to achieving persistence and robustness in complex real world settings. For a wide range of cutting-edge robotic systems, such as micro- and nano-scale robots, soft robots, medical robots, and bio-hybrid robots, it is infeasible to anticipate the operating environment a priori due to complexities that arise from numerous factors including imprecision in manufacturing, chemo-mechanical forces, and poorly understood contact mechanics. Drawing inspiration from data-driven modeling, geometric mechanics (or gauge theory), and adaptive control, we employ an adaptive system identification framework and demonstrate its efficacy in enhancing the performance of principally kinematic locomotors (those governed by Rayleigh dissipation or zero momentum conservation). We showcase the capability of the adaptive model to efficiently…
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Taxonomy
TopicsRobotic Locomotion and Control · Prosthetics and Rehabilitation Robotics · Soft Robotics and Applications
