4.7 Article

Converging outer approximations to global attractors using semidefinite programming

Journal

AUTOMATICA
Volume 134, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.automatica.2021.109900

Keywords

Global attractor; Outer approximations; Dynamical systems; Infinite-dimensional linear programming; Sum-of-squares; Semidefinite programming; Occupation measures

Funding

  1. European Union's Horizon 2020 research and innovation programme under the Marie Sklodowska-Curie Actions [813211]
  2. Czech Science Foundation (GACR) [20-11626Y]
  3. AI Interdisciplinary Institute ANITI funding, France, through the French ``Investing for the Future PIA3program [ANR-19-PI3A-0004]

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This paper presents a simple and effective method for obtaining guaranteed outer approximations for global attractors of continuous and discrete time nonlinear dynamical systems, with successful numerical examples demonstrating the method.
This paper develops a method for obtaining guaranteed outer approximations for global attractors of continuous and discrete time nonlinear dynamical systems. The method is based on a hierarchy of semidefinite programming problems of increasing size with guaranteed convergence to the global attractor. The approach taken follows an established line of reasoning, where we first characterize the global attractor via an infinite dimensional linear programming problem (LP) in the space of Borel measures. The dual to this LP is in the space of continuous functions and its feasible solutions provide guaranteed outer approximations to the global attractor. For systems with polynomial dynamics, a hierarchy of finite-dimensional sum-of-squares tightenings of the dual LP provides a sequence of outer approximations to the global attractor with guaranteed convergence in the sense of volume discrep-ancy tending to zero. The method is very simple to use and based purely on convex optimization. Numerical examples with the code available online demonstrate the method. (C) 2021 Published by Elsevier Ltd.

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