Provably Robust Learning-Based Approach for High-Accuracy Tracking Control of Lagrangian Systems
Mohamed K. Helwa, Adam Heins, and Angela P. Schoellig

TL;DR
This paper introduces a learning-based control method using Gaussian processes for Lagrangian systems that guarantees stability and high-accuracy tracking, even with uncertain models, validated through simulations and experiments.
Contribution
It presents a novel Gaussian process-based control approach that ensures stability and precise tracking for Lagrangian systems with uncertain dynamics.
Findings
Guarantees stability of the closed-loop system.
Achieves arbitrarily small tracking error bounds.
Validated effectiveness through simulations and real experiments.
Abstract
Lagrangian systems represent a wide range of robotic systems, including manipulators, wheeled and legged robots, and quadrotors. Inverse dynamics control and feedforward linearization techniques are typically used to convert the complex nonlinear dynamics of Lagrangian systems to a set of decoupled double integrators, and then a standard, outer-loop controller can be used to calculate the commanded acceleration for the linearized system. However, these methods typically depend on having a very accurate system model, which is often not available in practice. While this challenge has been addressed in the literature using different learning approaches, most of these approaches do not provide safety guarantees in terms of stability of the learning-based control system. In this paper, we provide a novel, learning-based control approach based on Gaussian processes (GPs) that ensures both…
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