几乎处处随机稳定性的李雅普诺夫测度的计算

U. Vaidya, V. Chinde
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引用次数: 6

摘要

在我们最近的工作[1]中,我们引入了Lyapunov测度作为一种新的工具来验证随机非线性系统几乎处处稳定的弱集合论概念。利用随机系统的线性转移Perron-Frobenius算子,给出了Lyapunov测度的显式公式,验证了随机系统几乎处处的几乎确定稳定性。本文的重点是随机系统的李雅普诺夫测度的计算方面。我们使用面向集合的数值方法对线性算子和李雅普诺夫测度进行有限维逼近。给出了有限维近似空间下的稳定性结果。特别地,我们证明了有限维近似导致一个更弱的稳定性概念,称为粗稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computation of the Lyapunov measure for almost everywhere stochastic stability
In our recent work [1], we introduced Lyapunov measure as a new tool to verify weaker set-theoretic notion of almost everywhere stability of stochastic nonlinear systems. A Linear transfer Perron-Frobenius operator for stochastic systems was used to provide an explicit formula for the Lyapunov measure, verifying almost everywhere almost sure stability of stochastic systems. The focus of this paper is on the computational aspect of the Lyapunov measure for stochastic systems. We used set-oriented numerical methods for the finite dimensional approximation of the linear operator and the Lyapunov measure. Stability results in the finite dimensional approximation space are also presented. In particular, we show the finite dimensional approximation leads to a further weaker notion of stability referred to as coarse stability.
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