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  5. Fluctuation analysis for a class of nonlinear systems with fast periodic sampling and small state-dependent white noise
 
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Fluctuation analysis for a class of nonlinear systems with fast periodic sampling and small state-dependent white noise

Source
arXiv
Date Issued
2022-05-01
Author(s)
Dhama, Shivam
Pahlajani, Chetan D.  
Abstract
We consider a nonlinear differential equation under the combined influence of small state-dependent Brownian perturbations of size ?, and fast periodic sampling with period ?; 0<?,??1. Thus, state samples (measurements) are taken every ? time units, and the instantaneous rate of change of the state depends on its current value as well as its most recent sample. We show that the resulting stochastic process indexed by ?,?, can be approximated, as ?,??0, by an ordinary differential equation (ODE) with vector field obtained by replacing the most recent sample by the current value of the state. We next analyze the fluctuations of the stochastic process about the limiting ODE. Our main result asserts that, for the case when ??0 at the same rate as, or faster than, ??0, the rescaled fluctuations can be approximated in a suitable strong (pathwise) sense by a limiting stochastic differential equation (SDE). This SDE varies depending on the exact rates at which ?,??0. The key contribution here involves computing the effective drift term capturing the interplay between noise and sampling in the limiting SDE. The results essentially provide a first-order perturbation expansion, together with error estimates, for the stochastic process of interest. Connections with the performance analysis of feedback control systems with sampling are discussed and illustrated numerically through a simple example.
URI
http://arxiv.org/abs/2205.09395
https://d8.irins.org/handle/IITG2025/20109
Subjects
Ordinary differential equation (ODE)
Stochastic differential equation (SDE)
Perturbations
Effective drift
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