Residual Control for Fast Recovery from Dynamics Shifts
Nethmi Jayasinghe, Diana Gontero, Francesco Migliarba, Spencer T. Brown, Vinod K. Sangwan, Mark C. Hersam, Amit Ranjan Trivedi

TL;DR
This paper introduces a residual control architecture with a stability-aligned gating mechanism that enables robotic systems to rapidly recover from unobserved dynamics shifts during execution, significantly reducing recovery time.
Contribution
It proposes a novel residual control method with a Stability Alignment Gate that allows fast adaptation without retraining or disturbance knowledge, improving recovery speed in dynamic environments.
Findings
Reduces recovery time by up to 87% on quadruped robots.
Maintains near-nominal performance during recovery.
Effective across actuator, mass, and contact perturbations.
Abstract
Robotic systems operating in real-world environments inevitably encounter unobserved dynamics shifts during continuous execution, including changes in actuation, mass distribution, or contact conditions. When such shifts occur mid-episode, even locally stabilizing learned policies can experience substantial transient performance degradation. While input-to-state stability guarantees bounded state deviation, it does not ensure rapid restoration of task-level performance. We address inference-time recovery under frozen policy parameters by casting adaptation as constrained disturbance shaping around a nominal stabilizing controller. We propose a stability-aligned residual control architecture in which a reinforcement learning policy trained under nominal dynamics remains fixed at deployment, and adaptation occurs exclusively through a bounded additive residual channel. A Stability…
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Taxonomy
TopicsRobot Manipulation and Learning · Prosthetics and Rehabilitation Robotics · Robotic Locomotion and Control
