Scaled unscented transform Gaussian sum filter: theory and application

In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduce a framework, called the scaled unscented transform Gaussian sum filter (SUT-GSF), which combines two ideas: the scaled unscented Kalman filter (SUKF) based on the concept of scaled unscented transfo...

Ful tanımlama

Detaylı Bibliyografya
Asıl Yazarlar: Luo, X, Moroz, I, Hoteit, I
Materyal Türü: Journal article
Dil:English
Baskı/Yayın Bilgisi: 2010
_version_ 1826264352478461952
author Luo, X
Moroz, I
Hoteit, I
author_facet Luo, X
Moroz, I
Hoteit, I
author_sort Luo, X
collection OXFORD
description In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduce a framework, called the scaled unscented transform Gaussian sum filter (SUT-GSF), which combines two ideas: the scaled unscented Kalman filter (SUKF) based on the concept of scaled unscented transform (SUT), and the Gaussian mixture model (GMM). The SUT is used to approximate the mean and covariance of a Gaussian random variable which is transformed by a nonlinear function, while the GMM is adopted to approximate the probability density function (pdf) of a random variable through a set of Gaussian distributions. With these two tools, a framework can be set up to assimilate nonlinear systems in a recursive way. Within this framework, one can treat a nonlinear stochastic system as a mixture model of a set of sub-systems, each of which takes the form of a nonlinear system driven by a known Gaussian random process. Then, for each sub-system, one applies the SUKF to estimate the mean and covariance of the underlying Gaussian random variable transformed by the nonlinear governing equations of the sub-system. Incorporating the estimations of the sub-systems into the GMM gives an explicit (approximate) form of the pdf, which can be regarded as a "complete" solution to the state estimation problem, as all of the statistical information of interest can be obtained from the explicit form of the pdf ... This work is on the construction of the Gaussian sum filter based on the scaled unscented transform.
first_indexed 2024-03-06T20:06:25Z
format Journal article
id oxford-uuid:290d9447-33d2-48d9-a648-e404f11b2291
institution University of Oxford
language English
last_indexed 2024-03-06T20:06:25Z
publishDate 2010
record_format dspace
spelling oxford-uuid:290d9447-33d2-48d9-a648-e404f11b22912022-03-26T12:16:43ZScaled unscented transform Gaussian sum filter: theory and applicationJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:290d9447-33d2-48d9-a648-e404f11b2291EnglishSymplectic Elements at Oxford2010Luo, XMoroz, IHoteit, IIn this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduce a framework, called the scaled unscented transform Gaussian sum filter (SUT-GSF), which combines two ideas: the scaled unscented Kalman filter (SUKF) based on the concept of scaled unscented transform (SUT), and the Gaussian mixture model (GMM). The SUT is used to approximate the mean and covariance of a Gaussian random variable which is transformed by a nonlinear function, while the GMM is adopted to approximate the probability density function (pdf) of a random variable through a set of Gaussian distributions. With these two tools, a framework can be set up to assimilate nonlinear systems in a recursive way. Within this framework, one can treat a nonlinear stochastic system as a mixture model of a set of sub-systems, each of which takes the form of a nonlinear system driven by a known Gaussian random process. Then, for each sub-system, one applies the SUKF to estimate the mean and covariance of the underlying Gaussian random variable transformed by the nonlinear governing equations of the sub-system. Incorporating the estimations of the sub-systems into the GMM gives an explicit (approximate) form of the pdf, which can be regarded as a "complete" solution to the state estimation problem, as all of the statistical information of interest can be obtained from the explicit form of the pdf ... This work is on the construction of the Gaussian sum filter based on the scaled unscented transform.
spellingShingle Luo, X
Moroz, I
Hoteit, I
Scaled unscented transform Gaussian sum filter: theory and application
title Scaled unscented transform Gaussian sum filter: theory and application
title_full Scaled unscented transform Gaussian sum filter: theory and application
title_fullStr Scaled unscented transform Gaussian sum filter: theory and application
title_full_unstemmed Scaled unscented transform Gaussian sum filter: theory and application
title_short Scaled unscented transform Gaussian sum filter: theory and application
title_sort scaled unscented transform gaussian sum filter theory and application
work_keys_str_mv AT luox scaledunscentedtransformgaussiansumfiltertheoryandapplication
AT morozi scaledunscentedtransformgaussiansumfiltertheoryandapplication
AT hoteiti scaledunscentedtransformgaussiansumfiltertheoryandapplication