Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis

Abstract In this paper, the robust optimal filtering problem is discussed for time-varying networked systems with randomly occurring quantized measurements via the variance-constrained method. The stochastic nonlinearity is considered by statistical form. The randomly occurring quantized measurement...

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Main Authors: Chaoqing Jia, Jun Hu
Format: Article
Language:English
Published: SpringerOpen 2019-02-01
Series:Advances in Difference Equations
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13662-019-2000-0
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spelling doaj-76fb18707071440fab0f24ace50371f82020-11-24T21:42:11ZengSpringerOpenAdvances in Difference Equations1687-18472019-02-012019112110.1186/s13662-019-2000-0Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysisChaoqing Jia0Jun Hu1Heilongjiang Provincial Key Laboratory of Optimization Control and Intelligent Analysis for Complex Systems, Harbin University of Science and TechnologyHeilongjiang Provincial Key Laboratory of Optimization Control and Intelligent Analysis for Complex Systems, Harbin University of Science and TechnologyAbstract In this paper, the robust optimal filtering problem is discussed for time-varying networked systems with randomly occurring quantized measurements via the variance-constrained method. The stochastic nonlinearity is considered by statistical form. The randomly occurring quantized measurements are expressed by a set of Bernoulli distributed random variables, where the quantized measurements are described by the logarithmic quantizer. The objective of this paper is to design a recursive optimal filter such that, for all randomly occurring uncertainties, randomly occurring quantized measurements and stochastic nonlinearity, an optimized upper bound of the estimation error covariance is given and the desired filter gain is proposed. In addition, the boundedness analysis problem is studied, where a sufficient condition is given to ensure the exponential boundedness of the filtering error in the mean-square sense. Finally, simulations with comparisons are proposed to demonstrate the validity of the presented robust variance-constrained filtering strategy.http://link.springer.com/article/10.1186/s13662-019-2000-0Time-varying nonlinear systemsVariance-constrained filteringRandomly occurring quantized measurementsBoundedness analysis
collection DOAJ
language English
format Article
sources DOAJ
author Chaoqing Jia
Jun Hu
spellingShingle Chaoqing Jia
Jun Hu
Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
Advances in Difference Equations
Time-varying nonlinear systems
Variance-constrained filtering
Randomly occurring quantized measurements
Boundedness analysis
author_facet Chaoqing Jia
Jun Hu
author_sort Chaoqing Jia
title Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
title_short Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
title_full Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
title_fullStr Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
title_full_unstemmed Variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
title_sort variance-constrained filtering for nonlinear systems with randomly occurring quantized measurements: recursive scheme and boundedness analysis
publisher SpringerOpen
series Advances in Difference Equations
issn 1687-1847
publishDate 2019-02-01
description Abstract In this paper, the robust optimal filtering problem is discussed for time-varying networked systems with randomly occurring quantized measurements via the variance-constrained method. The stochastic nonlinearity is considered by statistical form. The randomly occurring quantized measurements are expressed by a set of Bernoulli distributed random variables, where the quantized measurements are described by the logarithmic quantizer. The objective of this paper is to design a recursive optimal filter such that, for all randomly occurring uncertainties, randomly occurring quantized measurements and stochastic nonlinearity, an optimized upper bound of the estimation error covariance is given and the desired filter gain is proposed. In addition, the boundedness analysis problem is studied, where a sufficient condition is given to ensure the exponential boundedness of the filtering error in the mean-square sense. Finally, simulations with comparisons are proposed to demonstrate the validity of the presented robust variance-constrained filtering strategy.
topic Time-varying nonlinear systems
Variance-constrained filtering
Randomly occurring quantized measurements
Boundedness analysis
url http://link.springer.com/article/10.1186/s13662-019-2000-0
work_keys_str_mv AT chaoqingjia varianceconstrainedfilteringfornonlinearsystemswithrandomlyoccurringquantizedmeasurementsrecursiveschemeandboundednessanalysis
AT junhu varianceconstrainedfilteringfornonlinearsystemswithrandomlyoccurringquantizedmeasurementsrecursiveschemeandboundednessanalysis
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