SYROOCMar 24, 2018

Controller Synthesis for Discrete-Time Polynomial Systems via Occupation Measures

arXiv:1803.09022v29 citations
Originality Incremental advance
AI Analysis

This provides a scalable method for controller synthesis in polynomial systems, addressing a bottleneck in control theory, but it is incremental as it extends existing occupation measure approaches to discrete-time settings.

The paper tackles the problem of designing nonlinear state feedback controllers for discrete-time polynomial dynamical systems by formulating it as an infinite-dimensional linear programming problem on measures, which is relaxed into finite-dimensional semidefinite programs, enabling scalable computation with polynomial complexity in state and input dimensions.

In this paper, we design nonlinear state feedback controllers for discrete-time polynomial dynamical systems via the occupation measure approach. We propose the discrete-time controlled Liouville equation, and use it to formulate the controller synthesis problem as an infinite-dimensional linear programming problem on measures, which is then relaxed as finite-dimensional semidefinite programming problems on moments of measures and their duals on sums-of-squares polynomials. Nonlinear controllers can be extracted from the solutions to the relaxed problems. The advantage of the occupation measure approach is that we solve convex problems instead of generally non-convex problems, and the computational complexity is polynomial in the state and input dimensions, and hence the approach is more scalable. In addition, we show that the approach can be applied to over-approximating the backward reachable set of discrete-time autonomous polynomial systems and the controllable set of discrete-time polynomial systems under known state feedback control laws. We illustrate our approach on several dynamical systems.

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