Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios
In this paper, we address the problem of determining the optimal geometric configuration of an acoustic sensor network that will maximize the angle-related information available for underwater target positioning. In the set-up adopted, a set of autonomous vehicles carries a network of acoustic units...
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doaj-7cbd38b3cfd740668abcd987c52cac7a2020-11-25T00:20:56ZengMDPI AGSensors1424-82202013-08-01138103861041710.3390/s130810386Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional ScenariosJoaquin ArandaDavid Moreno-SalinasAntonio PascoalIn this paper, we address the problem of determining the optimal geometric configuration of an acoustic sensor network that will maximize the angle-related information available for underwater target positioning. In the set-up adopted, a set of autonomous vehicles carries a network of acoustic units that measure the elevation and azimuth angles between a target and each of the receivers on board the vehicles. It is assumed that the angle measurements are corrupted by white Gaussian noise, the variance of which is distance-dependent. Using tools from estimation theory, the problem is converted into that of minimizing, by proper choice of the sensor positions, the trace of the inverse of the Fisher Information Matrix (also called the Cramer-Rao Bound matrix) to determine the sensor configuration that yields the minimum possible covariance of any unbiased target estimator. It is shown that the optimal configuration of the sensors depends explicitly on the intensity of the measurement noise, the constraints imposed on the sensor configuration, the target depth and the probabilistic distribution that defines the prior uncertainty in the target position. Simulation examples illustrate the key results derived.http://www.mdpi.com/1424-8220/13/8/10386position estimationpositioning systemsestimation theorylocalizationinformation analysisoptimizationautonomous vehiclessensor networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Joaquin Aranda David Moreno-Salinas Antonio Pascoal |
spellingShingle |
Joaquin Aranda David Moreno-Salinas Antonio Pascoal Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios Sensors position estimation positioning systems estimation theory localization information analysis optimization autonomous vehicles sensor networks |
author_facet |
Joaquin Aranda David Moreno-Salinas Antonio Pascoal |
author_sort |
Joaquin Aranda |
title |
Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios |
title_short |
Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios |
title_full |
Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios |
title_fullStr |
Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios |
title_full_unstemmed |
Sensor Networks for Optimal Target Localization with Bearings-Only Measurements in Constrained Three-Dimensional Scenarios |
title_sort |
sensor networks for optimal target localization with bearings-only measurements in constrained three-dimensional scenarios |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2013-08-01 |
description |
In this paper, we address the problem of determining the optimal geometric configuration of an acoustic sensor network that will maximize the angle-related information available for underwater target positioning. In the set-up adopted, a set of autonomous vehicles carries a network of acoustic units that measure the elevation and azimuth angles between a target and each of the receivers on board the vehicles. It is assumed that the angle measurements are corrupted by white Gaussian noise, the variance of which is distance-dependent. Using tools from estimation theory, the problem is converted into that of minimizing, by proper choice of the sensor positions, the trace of the inverse of the Fisher Information Matrix (also called the Cramer-Rao Bound matrix) to determine the sensor configuration that yields the minimum possible covariance of any unbiased target estimator. It is shown that the optimal configuration of the sensors depends explicitly on the intensity of the measurement noise, the constraints imposed on the sensor configuration, the target depth and the probabilistic distribution that defines the prior uncertainty in the target position. Simulation examples illustrate the key results derived. |
topic |
position estimation positioning systems estimation theory localization information analysis optimization autonomous vehicles sensor networks |
url |
http://www.mdpi.com/1424-8220/13/8/10386 |
work_keys_str_mv |
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