Improved Kalman filter indoor positioning algorithm based on CHAN

Due to the raising complexity of the indoor environment, the influence of the non-line-of-sight error is gradually increasing in indoor positioning.How to reduce the non-line-of-sight error in the indoor positioning environment is particularly significant.The UWB indoor positioning technology was se...

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Main Authors: Rui JIANG, Yue YU, Youyun XU, Xiaoming WANG, Dapeng LI
Format: Article
Language:zho
Published: Editorial Department of Journal on Communications 2023-02-01
Series:Tongxin xuebao
Subjects:
Online Access:http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2023006/
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author Rui JIANG
Yue YU
Youyun XU
Xiaoming WANG
Dapeng LI
author_facet Rui JIANG
Yue YU
Youyun XU
Xiaoming WANG
Dapeng LI
author_sort Rui JIANG
collection DOAJ
description Due to the raising complexity of the indoor environment, the influence of the non-line-of-sight error is gradually increasing in indoor positioning.How to reduce the non-line-of-sight error in the indoor positioning environment is particularly significant.The UWB indoor positioning technology was selected, Kalman filter has been used widely in reducing the positioning error in indoor non-line-of-sight situations.However, in the process of switching between line of sight and non-line-of-sight scenes, the Kalman filter will produce a new error.To solve this problem, an improved Kalman filter indoor positioning algorithm based on CHAN was proposed.The ranging results of five or more base stations were used to construct a positioning solution equation set.Then the CHAN algorithm that was sensitive to positioning errors under non-line-of-sight conditions was selected to calculate the result.Finally, residual processing was performed with the results of each base station and different confidence regions were judged in line with the residual processing.For different confidence regions, the Kalman filter preset gain factor K was used to improve the stability of the positioning result and reduce the positioning error in the conversion process.In the simulation environment, the error can reach about 80 cm.In real scene, the algorithm can reduce the positioning error in non-line-of-sight scenes to 60 cm, which can improve accuracy 60% higher than normal complex indoor positioning.
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institution Kabale University
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publisher Editorial Department of Journal on Communications
record_format Article
series Tongxin xuebao
spelling doaj-art-2e97684ce4394a89934ca7e96fc55e9d2025-01-14T06:23:10ZzhoEditorial Department of Journal on CommunicationsTongxin xuebao1000-436X2023-02-014413614759387167Improved Kalman filter indoor positioning algorithm based on CHANRui JIANGYue YUYouyun XUXiaoming WANGDapeng LIDue to the raising complexity of the indoor environment, the influence of the non-line-of-sight error is gradually increasing in indoor positioning.How to reduce the non-line-of-sight error in the indoor positioning environment is particularly significant.The UWB indoor positioning technology was selected, Kalman filter has been used widely in reducing the positioning error in indoor non-line-of-sight situations.However, in the process of switching between line of sight and non-line-of-sight scenes, the Kalman filter will produce a new error.To solve this problem, an improved Kalman filter indoor positioning algorithm based on CHAN was proposed.The ranging results of five or more base stations were used to construct a positioning solution equation set.Then the CHAN algorithm that was sensitive to positioning errors under non-line-of-sight conditions was selected to calculate the result.Finally, residual processing was performed with the results of each base station and different confidence regions were judged in line with the residual processing.For different confidence regions, the Kalman filter preset gain factor K was used to improve the stability of the positioning result and reduce the positioning error in the conversion process.In the simulation environment, the error can reach about 80 cm.In real scene, the algorithm can reduce the positioning error in non-line-of-sight scenes to 60 cm, which can improve accuracy 60% higher than normal complex indoor positioning.http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2023006/non-line-of-sightCHANresidual error judgementKalman filter
spellingShingle Rui JIANG
Yue YU
Youyun XU
Xiaoming WANG
Dapeng LI
Improved Kalman filter indoor positioning algorithm based on CHAN
Tongxin xuebao
non-line-of-sight
CHAN
residual error judgement
Kalman filter
title Improved Kalman filter indoor positioning algorithm based on CHAN
title_full Improved Kalman filter indoor positioning algorithm based on CHAN
title_fullStr Improved Kalman filter indoor positioning algorithm based on CHAN
title_full_unstemmed Improved Kalman filter indoor positioning algorithm based on CHAN
title_short Improved Kalman filter indoor positioning algorithm based on CHAN
title_sort improved kalman filter indoor positioning algorithm based on chan
topic non-line-of-sight
CHAN
residual error judgement
Kalman filter
url http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2023006/
work_keys_str_mv AT ruijiang improvedkalmanfilterindoorpositioningalgorithmbasedonchan
AT yueyu improvedkalmanfilterindoorpositioningalgorithmbasedonchan
AT youyunxu improvedkalmanfilterindoorpositioningalgorithmbasedonchan
AT xiaomingwang improvedkalmanfilterindoorpositioningalgorithmbasedonchan
AT dapengli improvedkalmanfilterindoorpositioningalgorithmbasedonchan