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Bibliographic Details
Main Authors: Beeson, Ryne, Hanebeck, Uwe
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.02837
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author Beeson, Ryne
Hanebeck, Uwe
author_facet Beeson, Ryne
Hanebeck, Uwe
contents Efficiently solving the continuous-time signal and discrete-time observation filtering problem for chaotic dynamical systems presents unique challenges in that the advected distribution between observations may encounter a separatrix structure that results in the prior distribution being far from the observation or the distribution may become split into multiple disjoint components. In an attempt to sense and overcome these dynamical issues, as well as approximate a non-Gaussian distribution, a nudged particle filtering approach has been introduced. In the nudged particle filter method a control term is added, but has the potential drawback of degenerating the weights of the particles. To counter this issue, we introduce an intermediate resampling approach based on the modified Cramér-von Mises distance. The new method is applied to a challenging scenario of the non-chaotic, unforced nonlinear Duffing oscillator, which possesses a separatrix structure. Our results show that it consistently outperforms the standard particle filter with resampling and original nudged particle filter.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02837
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Nudged Particle Filter with Optimal Resampling Applied to the Duffing Oscillator
Beeson, Ryne
Hanebeck, Uwe
Chaotic Dynamics
Probability
Efficiently solving the continuous-time signal and discrete-time observation filtering problem for chaotic dynamical systems presents unique challenges in that the advected distribution between observations may encounter a separatrix structure that results in the prior distribution being far from the observation or the distribution may become split into multiple disjoint components. In an attempt to sense and overcome these dynamical issues, as well as approximate a non-Gaussian distribution, a nudged particle filtering approach has been introduced. In the nudged particle filter method a control term is added, but has the potential drawback of degenerating the weights of the particles. To counter this issue, we introduce an intermediate resampling approach based on the modified Cramér-von Mises distance. The new method is applied to a challenging scenario of the non-chaotic, unforced nonlinear Duffing oscillator, which possesses a separatrix structure. Our results show that it consistently outperforms the standard particle filter with resampling and original nudged particle filter.
title Nudged Particle Filter with Optimal Resampling Applied to the Duffing Oscillator
topic Chaotic Dynamics
Probability
url https://arxiv.org/abs/2504.02837