UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering

This article investigates the use of ultrawideband (UWB) ranging residuals for coordinate integrity estimation and their use in a filtering scheme. Typically, UWB system accuracy is improved using channel statistics (CSs) to detect and mitigate non-line-of-sight effects between UWB sensors and the o...

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Main Authors: Mihkel Tommingas, Muhammad Mahtab Alam, Ivo Muursepp, Sander Ulp
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Journal of Indoor and Seamless Positioning and Navigation
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Online Access:https://ieeexplore.ieee.org/document/10568925/
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author Mihkel Tommingas
Muhammad Mahtab Alam
Ivo Muursepp
Sander Ulp
author_facet Mihkel Tommingas
Muhammad Mahtab Alam
Ivo Muursepp
Sander Ulp
author_sort Mihkel Tommingas
collection DOAJ
description This article investigates the use of ultrawideband (UWB) ranging residuals for coordinate integrity estimation and their use in a filtering scheme. Typically, UWB system accuracy is improved using channel statistics (CSs) to detect and mitigate non-line-of-sight effects between UWB sensors and the object to be located, potentially improving the end coordinate solution. However, in practice, when considering UWB system with a high positioning update rate, this is not a feasible approach, as gathering and processing CS data takes too much time. In contrast to this approach, this article proposes a set of features based on UWB ranging residuals that could be used as an alternative in integrity assessment. By using machine learning (ML), the most important features were extracted from the initial set, and then, used to train and validate a model for UWB coordinate error prediction. Finally, the prediction was applied in an adaptive Kalman filtering scheme as an input for measurement uncertainty. Model testing was done using UWB measurement test dataset gathered at an industrial site. The overall results showed significant improvement in 2-D and 3-D positioning metrics of ML-augmented filtering when compared to non-ML filtering. On average, the end coordinates in the test set had ca. 10 cm smaller mean location error and ca. 40 cm smaller dispersion in 2-D positioning. In addition, the presence of outliers was reduced significantly as the maximum error offset decreased by several meters. Although ML augmented filtering is computationally slower than non-ML filtering (e.g., ordinary and extended Kalman filter), it is still faster than using CS for UWB integrity estimation. The results show that using the proposed residual features in an ML model provides a feasible approach to predict UWB positioning integrity and use it as a measure of uncertainty in a coordinate filtering scheme.
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spelling doaj-art-67290009a6a449f5bddbd6e36ca6f2ee2025-08-20T02:05:01ZengIEEEIEEE Journal of Indoor and Seamless Positioning and Navigation2832-73222024-01-01220521810.1109/JISPIN.2024.341829610568925UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented FilteringMihkel Tommingas0https://orcid.org/0000-0002-7104-4073Muhammad Mahtab Alam1https://orcid.org/0000-0002-1055-7959Ivo Muursepp2https://orcid.org/0000-0003-1927-133XSander Ulp3https://orcid.org/0000-0002-3497-4204Thomas Johann Seebeck Department of Electronics, Tallinn University of Technology, Tallinn, EstoniaThomas Johann Seebeck Department of Electronics, Tallinn University of Technology, Tallinn, EstoniaThomas Johann Seebeck Department of Electronics, Tallinn University of Technology, Tallinn, EstoniaOÜ Eliko Tehnoloogia Arenduskeskus, Tallinn, EstoniaThis article investigates the use of ultrawideband (UWB) ranging residuals for coordinate integrity estimation and their use in a filtering scheme. Typically, UWB system accuracy is improved using channel statistics (CSs) to detect and mitigate non-line-of-sight effects between UWB sensors and the object to be located, potentially improving the end coordinate solution. However, in practice, when considering UWB system with a high positioning update rate, this is not a feasible approach, as gathering and processing CS data takes too much time. In contrast to this approach, this article proposes a set of features based on UWB ranging residuals that could be used as an alternative in integrity assessment. By using machine learning (ML), the most important features were extracted from the initial set, and then, used to train and validate a model for UWB coordinate error prediction. Finally, the prediction was applied in an adaptive Kalman filtering scheme as an input for measurement uncertainty. Model testing was done using UWB measurement test dataset gathered at an industrial site. The overall results showed significant improvement in 2-D and 3-D positioning metrics of ML-augmented filtering when compared to non-ML filtering. On average, the end coordinates in the test set had ca. 10 cm smaller mean location error and ca. 40 cm smaller dispersion in 2-D positioning. In addition, the presence of outliers was reduced significantly as the maximum error offset decreased by several meters. Although ML augmented filtering is computationally slower than non-ML filtering (e.g., ordinary and extended Kalman filter), it is still faster than using CS for UWB integrity estimation. The results show that using the proposed residual features in an ML model provides a feasible approach to predict UWB positioning integrity and use it as a measure of uncertainty in a coordinate filtering scheme.https://ieeexplore.ieee.org/document/10568925/End coordinate correction and filteringmachine learning (ML)ranging residualsultrawideband (UWB) positioning
spellingShingle Mihkel Tommingas
Muhammad Mahtab Alam
Ivo Muursepp
Sander Ulp
UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering
IEEE Journal of Indoor and Seamless Positioning and Navigation
End coordinate correction and filtering
machine learning (ML)
ranging residuals
ultrawideband (UWB) positioning
title UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering
title_full UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering
title_fullStr UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering
title_full_unstemmed UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering
title_short UWB Positioning Integrity Estimation Using Ranging Residuals and ML Augmented Filtering
title_sort uwb positioning integrity estimation using ranging residuals and ml augmented filtering
topic End coordinate correction and filtering
machine learning (ML)
ranging residuals
ultrawideband (UWB) positioning
url https://ieeexplore.ieee.org/document/10568925/
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AT ivomuursepp uwbpositioningintegrityestimationusingrangingresidualsandmlaugmentedfiltering
AT sanderulp uwbpositioningintegrityestimationusingrangingresidualsandmlaugmentedfiltering