Convex Computation of Extremal Invariant Measures of Nonlinear Dynamical Systems and Markov Processes

被引:0
作者
Milan Korda
Didier Henrion
Igor Mezić
机构
[1] CNRS; LAAS,Faculty of Electrical Engineering
[2] Czech Technical University in Prague,undefined
[3] Université de Toulouse,undefined
[4] LAAS,undefined
[5] University of California,undefined
[6] Santa Barbara,undefined
来源
Journal of Nonlinear Science | 2021年 / 31卷
关键词
Invariant measure; Convex optimization; Ergodic optimization; Physical measure;
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摘要
We propose a convex-optimization-based framework for computation of invariant measures of polynomial dynamical systems and Markov processes, in discrete and continuous time. The set of all invariant measures is characterized as the feasible set of an infinite-dimensional linear program (LP). The objective functional of this LP is then used to single out a specific measure (or a class of measures) extremal with respect to the selected functional such as physical measures, ergodic measures, atomic measures (corresponding to, e.g., periodic orbits) or measures absolutely continuous w.r.t. to a given measure. The infinite-dimensional LP is then approximated using a standard hierarchy of finite-dimensional semidefinite programming problems, the solutions of which are truncated moment sequences, which are then used to reconstruct the measure. In particular, we show how to approximate the support of the measure as well as how to construct a sequence of weakly converging absolutely continuous approximations. As a by-product, we present a simple method to certify the nonexistence of an invariant measure, which is an important question in the theory of Markov processes. The presented framework, where a convex functional is minimized or maximized among all invariant measures, can be seen as a generalization of and a computational method to carry out the so-called ergodic optimization, where linear functionals are optimized over the set of invariant measures. Finally, we also describe how the presented framework can be adapted to compute eigenmeasures of the Perron–Frobenius operator.
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