Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs

We present a novel hybrid localization algorithm for wireless sensor networks in the absence of knowledge regarding the transmit power and path-loss exponent. Transmit power and the path-loss exponent are critical parameters for target localization algorithms in wireless sensor networks, which help...

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Main Authors: SeYoung Kang, TaeHyun Kim, WonZoo Chung
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/22/6582
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spelling doaj-658ae939e1f446e396299265f1720aa82020-11-25T04:00:35ZengMDPI AGSensors1424-82202020-11-01206582658210.3390/s20226582Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNsSeYoung Kang0TaeHyun Kim1WonZoo Chung2Division of Computer and Communications Engineering, Korea University, Seoul 02841, KoreaAgency for Defense Development, Daejeon 34186, KoreaDivision of Computer and Communications Engineering, Korea University, Seoul 02841, KoreaWe present a novel hybrid localization algorithm for wireless sensor networks in the absence of knowledge regarding the transmit power and path-loss exponent. Transmit power and the path-loss exponent are critical parameters for target localization algorithms in wireless sensor networks, which help extract target position information from the received signal strength. In the absence of information on transmit power and path-loss exponent, it is critical to estimate them for reliable deployment of conventional target localization algorithms. In this paper, we propose a simultaneous estimation of transmit power and path-loss exponent based on Kalman filter. The unknown transmit power and path-loss exponent are estimated using a Kalman filter with the tentatively estimated target position based solely on angle information. Subsequently, the target position is refined using a hybrid method incorporating received signal strength measurements based on the estimated transmit power and path-loss exponent. Our proposed algorithm accurately estimates transmit power and path-loss exponent and yields almost the same target position accuracy as the simulation results confirm, as the hybrid target localization algorithms with known transmit power and path-loss exponent. Simulation results confirm the proposed algorithm achieves 99.7% accuracy of the target localization performance with known transmit power and path-loss exponent, even in the presence of severe received signal strength measurement noise.https://www.mdpi.com/1424-8220/20/22/6582wireless sensor networks (WSNs)target localizationreceived signal strength (RSS)angle of arrival (AOA)transmit power (TP)path-loss exponent (PLE)
collection DOAJ
language English
format Article
sources DOAJ
author SeYoung Kang
TaeHyun Kim
WonZoo Chung
spellingShingle SeYoung Kang
TaeHyun Kim
WonZoo Chung
Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs
Sensors
wireless sensor networks (WSNs)
target localization
received signal strength (RSS)
angle of arrival (AOA)
transmit power (TP)
path-loss exponent (PLE)
author_facet SeYoung Kang
TaeHyun Kim
WonZoo Chung
author_sort SeYoung Kang
title Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs
title_short Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs
title_full Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs
title_fullStr Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs
title_full_unstemmed Target Localization with Unknown Transmit Power and Path-Loss Exponent Using a Kalman Filter in WSNs
title_sort target localization with unknown transmit power and path-loss exponent using a kalman filter in wsns
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-11-01
description We present a novel hybrid localization algorithm for wireless sensor networks in the absence of knowledge regarding the transmit power and path-loss exponent. Transmit power and the path-loss exponent are critical parameters for target localization algorithms in wireless sensor networks, which help extract target position information from the received signal strength. In the absence of information on transmit power and path-loss exponent, it is critical to estimate them for reliable deployment of conventional target localization algorithms. In this paper, we propose a simultaneous estimation of transmit power and path-loss exponent based on Kalman filter. The unknown transmit power and path-loss exponent are estimated using a Kalman filter with the tentatively estimated target position based solely on angle information. Subsequently, the target position is refined using a hybrid method incorporating received signal strength measurements based on the estimated transmit power and path-loss exponent. Our proposed algorithm accurately estimates transmit power and path-loss exponent and yields almost the same target position accuracy as the simulation results confirm, as the hybrid target localization algorithms with known transmit power and path-loss exponent. Simulation results confirm the proposed algorithm achieves 99.7% accuracy of the target localization performance with known transmit power and path-loss exponent, even in the presence of severe received signal strength measurement noise.
topic wireless sensor networks (WSNs)
target localization
received signal strength (RSS)
angle of arrival (AOA)
transmit power (TP)
path-loss exponent (PLE)
url https://www.mdpi.com/1424-8220/20/22/6582
work_keys_str_mv AT seyoungkang targetlocalizationwithunknowntransmitpowerandpathlossexponentusingakalmanfilterinwsns
AT taehyunkim targetlocalizationwithunknowntransmitpowerandpathlossexponentusingakalmanfilterinwsns
AT wonzoochung targetlocalizationwithunknowntransmitpowerandpathlossexponentusingakalmanfilterinwsns
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