Adaptive Control
Adaptive control focuses on designing controllers that automatically adjust their parameters to maintain desired system performance despite uncertainties and disturbances. Current research emphasizes robust adaptive control methods, often incorporating model reference adaptive control (MRAC), reinforcement learning (RL), and neural networks (including neural operators) to handle complex nonlinearities and unknown dynamics in diverse applications. This field is crucial for enhancing the safety, efficiency, and adaptability of autonomous systems, from robotic manipulators and drones to underwater vehicles and even construction project management.
Papers
Safe Autonomy for Uncrewed Surface Vehicles Using Adaptive Control and Reachability Analysis
Karan Mahesh, Tyler M. Paine, Max L. Greene, Nicholas Rober, Steven Lee, Sildomar T. Monteiro, Anuradha Annaswamy, Michael R. Benjamin, Jonathan P. How
On the Interaction of Adaptive Population Control with Cumulative Step-Size Adaptation
Amir Omeradzic, Hans-Georg Beyer
Adaptive Control for Triadic Human-Robot-FES Collaboration in Gait Rehabilitation: A Pilot Study
Andreas Christou, Antonio J. del-Ama, Juan C. Moreno, Sethu Vijayakumar
A Data-Driven Autopilot for Fixed-Wing Aircraft Based on Model Predictive Control
Riley J. Richards, Juan A. Paredes, Dennis S. Bernstein