INS/gravity gradient aided navigation based on gravitation field particle filter

Swarm intelligence method is an effective way to improve the particle degradation and sample depletion of the traditional particle filter. This paper proposes a particle filer based on the gravitation field algorithm (GF-PF), and the gravitation field algorithm is introduced into the resampling proc...

Full description

Bibliographic Details
Main Authors: Liu Fanming, Li Fangming, Jing Xin
Format: Article
Language:English
Published: De Gruyter 2019-12-01
Series:Open Physics
Subjects:
Online Access:https://doi.org/10.1515/phys-2019-0073
id doaj-a9b719224d074841b93653a82e74bf1b
record_format Article
spelling doaj-a9b719224d074841b93653a82e74bf1b2021-09-05T13:59:37ZengDe GruyterOpen Physics2391-54712019-12-0117170971810.1515/phys-2019-0073phys-2019-0073INS/gravity gradient aided navigation based on gravitation field particle filterLiu Fanming0Li Fangming1Jing Xin2College of Automation, Harbin Engineering University, Harbin, ChinaCollege of Automation, Harbin Engineering University, Harbin, ChinaCollege of Automation, Harbin Engineering University, Harbin, ChinaSwarm intelligence method is an effective way to improve the particle degradation and sample depletion of the traditional particle filter. This paper proposes a particle filer based on the gravitation field algorithm (GF-PF), and the gravitation field algorithm is introduced into the resampling process to improve particle degradation and sample depletion. The gravitation field algorithm simulates the solar nebular disk model, and introduces the virtual central attractive force and virtual rotation repulsion force between particles. The particles are moves rapidly to the high-likelihood region under action of the virtual central attractive force. The virtual rotation repulsion force makes the particles keep a certain distance from each other. These operations improve estimation performance, avoid overlapping of particles and maintain the diversity of particles. The proposed method is applied into INS/gravity gradient aided navigation, by combining the sea experimental data of an inertial navigation system. Compared with the particle swarm optimization particle filter(PSO-PF) and artificial physics optimized particle filter (APO-PF), the GF-PF has higher position estimate accuracy and faster convergence speed with the same experimental conditions.https://doi.org/10.1515/phys-2019-0073gravitation fieldsolar nebular disk modeparticle filtergravity gradientvirtual forces02.30.yy02.70.uu11.10.lm91.50.-r91.10.-v
collection DOAJ
language English
format Article
sources DOAJ
author Liu Fanming
Li Fangming
Jing Xin
spellingShingle Liu Fanming
Li Fangming
Jing Xin
INS/gravity gradient aided navigation based on gravitation field particle filter
Open Physics
gravitation field
solar nebular disk mode
particle filter
gravity gradient
virtual forces
02.30.yy
02.70.uu
11.10.lm
91.50.-r
91.10.-v
author_facet Liu Fanming
Li Fangming
Jing Xin
author_sort Liu Fanming
title INS/gravity gradient aided navigation based on gravitation field particle filter
title_short INS/gravity gradient aided navigation based on gravitation field particle filter
title_full INS/gravity gradient aided navigation based on gravitation field particle filter
title_fullStr INS/gravity gradient aided navigation based on gravitation field particle filter
title_full_unstemmed INS/gravity gradient aided navigation based on gravitation field particle filter
title_sort ins/gravity gradient aided navigation based on gravitation field particle filter
publisher De Gruyter
series Open Physics
issn 2391-5471
publishDate 2019-12-01
description Swarm intelligence method is an effective way to improve the particle degradation and sample depletion of the traditional particle filter. This paper proposes a particle filer based on the gravitation field algorithm (GF-PF), and the gravitation field algorithm is introduced into the resampling process to improve particle degradation and sample depletion. The gravitation field algorithm simulates the solar nebular disk model, and introduces the virtual central attractive force and virtual rotation repulsion force between particles. The particles are moves rapidly to the high-likelihood region under action of the virtual central attractive force. The virtual rotation repulsion force makes the particles keep a certain distance from each other. These operations improve estimation performance, avoid overlapping of particles and maintain the diversity of particles. The proposed method is applied into INS/gravity gradient aided navigation, by combining the sea experimental data of an inertial navigation system. Compared with the particle swarm optimization particle filter(PSO-PF) and artificial physics optimized particle filter (APO-PF), the GF-PF has higher position estimate accuracy and faster convergence speed with the same experimental conditions.
topic gravitation field
solar nebular disk mode
particle filter
gravity gradient
virtual forces
02.30.yy
02.70.uu
11.10.lm
91.50.-r
91.10.-v
url https://doi.org/10.1515/phys-2019-0073
work_keys_str_mv AT liufanming insgravitygradientaidednavigationbasedongravitationfieldparticlefilter
AT lifangming insgravitygradientaidednavigationbasedongravitationfieldparticlefilter
AT jingxin insgravitygradientaidednavigationbasedongravitationfieldparticlefilter
_version_ 1717813320783757312