IMM Iterated Extended Particle Filter Algorithm
In order to solve the tracking problem of radar maneuvering target in nonlinear system model and non-Gaussian noise background, this paper puts forward one interacting multiple model (IMM) iterated extended particle filter algorithm (IMM-IEHPF). The algorithm makes use of multiple modes to model th...
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Series: | Mathematical Problems in Engineering |
Online Access: | http://dx.doi.org/10.1155/2013/970158 |
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doaj-fc6a17e3a438466baedcb8d40ad449052020-11-25T00:14:47ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472013-01-01201310.1155/2013/970158970158IMM Iterated Extended Particle Filter AlgorithmYang Wan0Shouyong Wang1Xing Qin2Air Force Early Warning Academy, Wuhan 430019, ChinaAir Force Early Warning Academy, Wuhan 430019, ChinaAir Force Early Warning Academy, Wuhan 430019, ChinaIn order to solve the tracking problem of radar maneuvering target in nonlinear system model and non-Gaussian noise background, this paper puts forward one interacting multiple model (IMM) iterated extended particle filter algorithm (IMM-IEHPF). The algorithm makes use of multiple modes to model the target motion form to track any maneuvering target and each mode uses iterated extended particle filter (IEHPF) to deal with the state estimation problem of nonlinear non-Gaussian system. IEHPF is an improved particle filter algorithm, which utilizes iterated extended filter (IEHF) to obtain the mean value and covariance of each particle and describes importance density function as a combination of Gaussian distribution. Then according to the function, draw particles to approximate the state posteriori density of each mode. Due to the high filter accuracy of IEHF and the adaptation of system noise with arbitrary distribution as well as strong robustness, the importance density function generated by this method is more approximate to the true sate posteriori density. Finally, a numerical example is included to illustrate the effectiveness of the proposed methods.http://dx.doi.org/10.1155/2013/970158 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yang Wan Shouyong Wang Xing Qin |
spellingShingle |
Yang Wan Shouyong Wang Xing Qin IMM Iterated Extended Particle Filter Algorithm Mathematical Problems in Engineering |
author_facet |
Yang Wan Shouyong Wang Xing Qin |
author_sort |
Yang Wan |
title |
IMM Iterated Extended Particle Filter Algorithm |
title_short |
IMM Iterated Extended Particle Filter Algorithm |
title_full |
IMM Iterated Extended Particle Filter Algorithm |
title_fullStr |
IMM Iterated Extended Particle Filter Algorithm |
title_full_unstemmed |
IMM Iterated Extended Particle Filter Algorithm |
title_sort |
imm iterated extended particle filter algorithm |
publisher |
Hindawi Limited |
series |
Mathematical Problems in Engineering |
issn |
1024-123X 1563-5147 |
publishDate |
2013-01-01 |
description |
In order to solve the tracking problem of radar maneuvering target in nonlinear system model
and non-Gaussian noise background, this paper puts forward one interacting multiple model (IMM) iterated extended particle filter algorithm (IMM-IEHPF). The algorithm makes use of multiple modes to model the target motion form to track any maneuvering target and each mode uses iterated extended particle filter (IEHPF) to deal with the state estimation problem of nonlinear non-Gaussian system. IEHPF is an improved particle filter algorithm, which utilizes iterated extended filter (IEHF) to obtain the mean value and covariance of each particle and describes importance density function as a combination of Gaussian distribution. Then according to the function, draw particles to approximate the state posteriori density of each mode. Due to the high filter accuracy of IEHF and the adaptation of system noise with arbitrary distribution as well as strong robustness, the importance density function generated by this method is more approximate to the true sate posteriori density. Finally, a numerical example is included to illustrate the effectiveness of the proposed methods. |
url |
http://dx.doi.org/10.1155/2013/970158 |
work_keys_str_mv |
AT yangwan immiteratedextendedparticlefilteralgorithm AT shouyongwang immiteratedextendedparticlefilteralgorithm AT xingqin immiteratedextendedparticlefilteralgorithm |
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1725388549583273984 |