High-Precision Trajectory Tracking in Changing Environments Through $\mathcal{L}_1$ Adaptive Feedback and Iterative Learning
Karime Pereida, Rikky R. P. R. Duivenvoorden, and Angela P. Schoellig

TL;DR
This paper introduces a combined $$ adaptive feedback and iterative learning control framework that enhances trajectory tracking in robots operating in dynamic, uncertain environments, with proven theoretical guarantees and experimental validation on a quadrotor.
Contribution
It presents the first experimental integration of $$ adaptive control with ILC, enabling robust and generalizable trajectory learning across system variations.
Findings
Improved trajectory tracking performance over pure ILC.
Enhanced robustness and adaptability to changing disturbances.
Successful experimental validation on a quadrotor platform.
Abstract
As robots and other automated systems are introduced to unknown and dynamic environments, robust and adaptive control strategies are required to cope with disturbances, unmodeled dynamics and parametric uncertainties. In this paper, we propose and provide theoretical proofs of a combined adaptive feedback and iterative learning control (ILC) framework to improve trajectory tracking of a system subject to unknown and changing disturbances. The adaptive controller forces the system to behave in a repeatable, predefined way, even in the presence of unknown and changing disturbances; however, this does not imply that perfect trajectory tracking is achieved. ILC improves the tracking performance based on experience from previous executions. The performance of ILC is limited by the robustness and repeatability of the underlying system, which, in this approach,…
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Taxonomy
TopicsIterative Learning Control Systems · Control Systems and Identification · Hydraulic and Pneumatic Systems
