Cargando…

An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model

Localization as a technique to solve the complex and challenging problems besetting line-of-sight (LOS) and non-line-of-sight (NLOS) transmissions has recently attracted considerable attention in the wireless sensor network field. This paper proposes a strategy for eliminating NLOS localization erro...

Descripción completa

Detalles Bibliográficos
Autores principales: Ru, Jingyu, Wu, Chengdong, Jia, Zixi, Yang, Yufang, Zhang, Yunzhou, Hu, Nan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4507710/
https://www.ncbi.nlm.nih.gov/pubmed/26091395
http://dx.doi.org/10.3390/s150614298
_version_ 1782381840524378112
author Ru, Jingyu
Wu, Chengdong
Jia, Zixi
Yang, Yufang
Zhang, Yunzhou
Hu, Nan
author_facet Ru, Jingyu
Wu, Chengdong
Jia, Zixi
Yang, Yufang
Zhang, Yunzhou
Hu, Nan
author_sort Ru, Jingyu
collection PubMed
description Localization as a technique to solve the complex and challenging problems besetting line-of-sight (LOS) and non-line-of-sight (NLOS) transmissions has recently attracted considerable attention in the wireless sensor network field. This paper proposes a strategy for eliminating NLOS localization errors during calculation of the location of mobile terminals (MTs) in unfamiliar indoor environments. In order to improve the hidden Markov model (HMM), we propose two modified algorithms, namely, modified HMM (M-HMM) and replacement modified HMM (RM-HMM). Further, a hybrid localization algorithm that combines HMM with an interacting multiple model (IMM) is proposed to represent the velocity of mobile nodes. This velocity model is divided into a high-speed and a low-speed model, which means the nodes move at different speeds following the same mobility pattern. Each moving node continually switches its state based on its probability. Consequently, to improve precision, each moving node uses the IMM model to integrate the results from the HMM and its modified forms. Simulation experiments conducted show that our proposed algorithms perform well in both distance estimation and coordinate calculation, with increasing accuracy of localization of the proposed algorithms in the order M-HMM, RM-HMM, and HMM + IMM. The simulations also show that the three algorithms are accurate, stable, and robust.
format Online
Article
Text
id pubmed-4507710
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-45077102015-07-22 An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model Ru, Jingyu Wu, Chengdong Jia, Zixi Yang, Yufang Zhang, Yunzhou Hu, Nan Sensors (Basel) Article Localization as a technique to solve the complex and challenging problems besetting line-of-sight (LOS) and non-line-of-sight (NLOS) transmissions has recently attracted considerable attention in the wireless sensor network field. This paper proposes a strategy for eliminating NLOS localization errors during calculation of the location of mobile terminals (MTs) in unfamiliar indoor environments. In order to improve the hidden Markov model (HMM), we propose two modified algorithms, namely, modified HMM (M-HMM) and replacement modified HMM (RM-HMM). Further, a hybrid localization algorithm that combines HMM with an interacting multiple model (IMM) is proposed to represent the velocity of mobile nodes. This velocity model is divided into a high-speed and a low-speed model, which means the nodes move at different speeds following the same mobility pattern. Each moving node continually switches its state based on its probability. Consequently, to improve precision, each moving node uses the IMM model to integrate the results from the HMM and its modified forms. Simulation experiments conducted show that our proposed algorithms perform well in both distance estimation and coordinate calculation, with increasing accuracy of localization of the proposed algorithms in the order M-HMM, RM-HMM, and HMM + IMM. The simulations also show that the three algorithms are accurate, stable, and robust. MDPI 2015-06-17 /pmc/articles/PMC4507710/ /pubmed/26091395 http://dx.doi.org/10.3390/s150614298 Text en © 2015 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ru, Jingyu
Wu, Chengdong
Jia, Zixi
Yang, Yufang
Zhang, Yunzhou
Hu, Nan
An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model
title An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model
title_full An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model
title_fullStr An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model
title_full_unstemmed An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model
title_short An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model
title_sort indoor mobile location estimator in mixed line of sight/non-line of sight environments using replacement modified hidden markov models and an interacting multiple model
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4507710/
https://www.ncbi.nlm.nih.gov/pubmed/26091395
http://dx.doi.org/10.3390/s150614298
work_keys_str_mv AT rujingyu anindoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT wuchengdong anindoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT jiazixi anindoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT yangyufang anindoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT zhangyunzhou anindoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT hunan anindoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT rujingyu indoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT wuchengdong indoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT jiazixi indoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT yangyufang indoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT zhangyunzhou indoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel
AT hunan indoormobilelocationestimatorinmixedlineofsightnonlineofsightenvironmentsusingreplacementmodifiedhiddenmarkovmodelsandaninteractingmultiplemodel