A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements

In this paper, a novel particle filter based on one-step smoothing is proposed for nonlinear systems with random one-step delay and missing measurements. Such problems are commonly encountered in networked control systems, where random one-step delay and missing measurements significantly increase t...

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Main Authors: Zhenrong Yang, Xing Zhang, Wenqian Xiang, Xiaohui Lin
Format: Article
Language:English
Published: MDPI AG 2025-01-01
Series:Sensors
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Online Access:https://www.mdpi.com/1424-8220/25/2/318
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author Zhenrong Yang
Xing Zhang
Wenqian Xiang
Xiaohui Lin
author_facet Zhenrong Yang
Xing Zhang
Wenqian Xiang
Xiaohui Lin
author_sort Zhenrong Yang
collection DOAJ
description In this paper, a novel particle filter based on one-step smoothing is proposed for nonlinear systems with random one-step delay and missing measurements. Such problems are commonly encountered in networked control systems, where random one-step delay and missing measurements significantly increase the difficulty of dynamic state estimation. The particle filter is a nonlinear filtering method based on sequential Monte Carlo sampling. It shows excellent state estimation performance when dealing with nonlinear and non-Gaussian dynamic systems. However, the particle filter has certain limitations in complex dynamic scenarios, with particle degradation being the most typical issue, which can significantly reduce estimation accuracy. To address particle degradation, the proposed particle filter iteratively incorporates current measurement information derived from sensors into the prior distribution to construct a new importance function. This approach can limit particle degeneracy and improve the efficiency of importance sampling in the bootstrap particle filter. Simulation experiments demonstrate that the proposed particle filter effectively limits particle degradation and improves estimation accuracy compared to the existing bootstrap particle filter for nonlinear systems with random one-step delay and missing measurements.
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institution Kabale University
issn 1424-8220
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publishDate 2025-01-01
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series Sensors
spelling doaj-art-f71796511a0d4e4e9ef545eafa45ed0f2025-01-24T13:48:29ZengMDPI AGSensors1424-82202025-01-0125231810.3390/s25020318A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing MeasurementsZhenrong Yang0Xing Zhang1Wenqian Xiang2Xiaohui Lin3School of Mathematics and Information Science, Guangxi University, Nanning 530004, ChinaSchool of Mathematics and Information Science, Guangxi University, Nanning 530004, ChinaSchool of Mathematics and Information Science, Guangxi University, Nanning 530004, ChinaSchool of Mathematics and Information Science, Guangxi University, Nanning 530004, ChinaIn this paper, a novel particle filter based on one-step smoothing is proposed for nonlinear systems with random one-step delay and missing measurements. Such problems are commonly encountered in networked control systems, where random one-step delay and missing measurements significantly increase the difficulty of dynamic state estimation. The particle filter is a nonlinear filtering method based on sequential Monte Carlo sampling. It shows excellent state estimation performance when dealing with nonlinear and non-Gaussian dynamic systems. However, the particle filter has certain limitations in complex dynamic scenarios, with particle degradation being the most typical issue, which can significantly reduce estimation accuracy. To address particle degradation, the proposed particle filter iteratively incorporates current measurement information derived from sensors into the prior distribution to construct a new importance function. This approach can limit particle degeneracy and improve the efficiency of importance sampling in the bootstrap particle filter. Simulation experiments demonstrate that the proposed particle filter effectively limits particle degradation and improves estimation accuracy compared to the existing bootstrap particle filter for nonlinear systems with random one-step delay and missing measurements.https://www.mdpi.com/1424-8220/25/2/318particle filternonlinear filterone-step delaymissing measurementsimportance functionone-step smoothing
spellingShingle Zhenrong Yang
Xing Zhang
Wenqian Xiang
Xiaohui Lin
A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements
Sensors
particle filter
nonlinear filter
one-step delay
missing measurements
importance function
one-step smoothing
title A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements
title_full A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements
title_fullStr A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements
title_full_unstemmed A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements
title_short A Novel Particle Filter Based on One-Step Smoothing for Nonlinear Systems with Random One-Step Delay and Missing Measurements
title_sort novel particle filter based on one step smoothing for nonlinear systems with random one step delay and missing measurements
topic particle filter
nonlinear filter
one-step delay
missing measurements
importance function
one-step smoothing
url https://www.mdpi.com/1424-8220/25/2/318
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