Robust Output Feedback of Nonlinear Systems through the Efficient Solution of Min-Max Optimization Problems
Jad Wehbeh, Eric C. Kerrigan

TL;DR
This paper introduces a robust output feedback control method for nonlinear systems that uses semi-infinite programming to handle uncertainties without explicit state estimation, ensuring performance and constraint satisfaction.
Contribution
It presents a novel approach to robust control using semi-infinite programs that directly account for uncertainties, improving performance guarantees without explicit state estimation.
Findings
Successfully applied to a nonlinear quadrotor model
Achieves robust constraint satisfaction and tracking
Handles highly uncertain measurements and dynamics
Abstract
We examine robust output feedback control of discrete-time nonlinear systems with bounded uncertainties affecting the dynamics and measurements. Specifically, we demonstrate how to construct semi-infinite programs that produce gains to minimize some desired performance cost over a finite prediction horizon for the worst-case realization of the system's uncertainties, while also ensuring that any specified nonlinear constraints are always satisfied. The solution process relies on an implicit description of the feasible state space through prior measurements and the system dynamics, and assumes that the system is always in the subset of the feasible space that is most detrimental to performance. In doing so, we can guarantee that the system's true state will meet all of the chosen performance criteria without resorting to any explicit state estimation. Under some smoothness assumptions,…
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Taxonomy
TopicsIterative Learning Control Systems · Control Systems and Identification · Advanced Control Systems Optimization
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