On the Design of Rational Polynomial State Feedback Controllers
Matthew Newton, Zuxun Xiong, Han Wang, Antonis Papachristodoulou

TL;DR
This paper introduces an iterative SOS-based method for designing rational polynomial state feedback controllers for nonlinear systems, enabling co-design of controllers and Lyapunov functions with improved performance.
Contribution
It proposes a novel iterative convex optimization approach that decouples controller structure from system dynamics, unifying and extending existing rational controller design methods.
Findings
Demonstrates improved robustness and performance on benchmark systems.
Shows the method generalizes several existing rational control design techniques.
Provides theoretical guarantees for the proposed iterative procedure.
Abstract
One of the desirable objectives in feedback control design is to formulate and solve the design problem as an optimisation problem that is convex, so that an optimal solution can be found efficiently. Unfortunately many control design problems are non-convex: approximations, relaxations, or iterative schemes are usually employed to solve them. Several such approaches have been developed in the literature, for example Sum-of-Squares (SOSs) methods have been used for systems described by polynomial dynamics. Alternatively, and relevant to this paper, one can choose a (non-unique) linear-like representation of the system and solve the resulting state-dependent Linear Matrix Inequalities (LMIs) or use SOSs optimisation techniques to derive a control law. This SOS method has been shown to effectively design polynomial and rational controllers for nonlinear polynomial systems, offering a…
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Taxonomy
TopicsAdvanced Optimization Algorithms Research · Stability and Control of Uncertain Systems · Advanced Control Systems Optimization
