Abstract

This paper investigates the hybrid source localization problem using differential received signal strength (DRSS) and angle of arrival (AOA) measurements. The main advantage of hybrid measurements is to improve the localization accuracy with respect to a single sensor modality. For sufficiently short wavelengths, AOA sensors can be constructed with size, weight, power and cost (SWAP-C) requirements in mind, making the proposed hybrid DRSS-AOA sensing feasible at a low cost. Firstly the maximum likelihood estimation solution is derived, which is computationally expensive and likely to become unstable for large noise levels. Then a novel closed-form pseudolinear estimation method is developed by incorporating the AOA measurements into a linearized form of DRSS equations. This method eliminates the nuisance parameter associated with linearized DRSS equations, hence improving the estimation performance. The estimation bias arising from the injection of measurement noise into the pseudolinear data matrix is examined. The method of instrumental variables is employed to reduce this bias. As the performance of the resulting weighted instrumental variable (WIV) estimator depends on the correlation between the IV matrix and data matrix, a selected-hybrid-measurement WIV (SHM-WIV) estimator is proposed to maintain a strong correlation. The superior bias and mean-squared error performance of the new SHM-WIV estimator is illustrated with simulation examples.

Highlights

  • Source localization plays an important role in wireless sensor networks, providing location information about sensor nodes and emitters from sensor measurements

  • Several sensor modalities have been considered for source localization such as angle of arrival (AOA), differential received signal strength (DRSS), time of arrival, time difference of arrival, and frequency difference of arrival

  • We present new hybrid localization algorithms using DRSS and AOA measurements based on the pseudolinear estimator (PLE) and its instrumental variable variants

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Summary

Introduction

Source localization plays an important role in wireless sensor networks, providing location information about sensor nodes and emitters from sensor measurements. RSS measurements taken at pairs of sensor nodes, which eliminates the requirement for prior knowledge of transmit power at the source This makes DRSS better suited for practical applications [22,23,24]. TDOA-AOA measurements, besides the MLE and the WLS solution [38,39], the PLE with a bias reduction method has been developed. We present new hybrid localization algorithms using DRSS and AOA measurements based on the PLE and its instrumental variable variants. The PLE can be solved by using least squares (LS) and WLS Both these solutions have a bias problem due to the injection of measurement noise into the data matrix during the linearization process.

Problem Definition
Maximum Likelihood Estimator
Linearized DRSS Equations
Linearized DRSS-AOA Equations
LS Solution and Bias Analysis
WLS Solution and Bias Analysis
WIV Solution
SHM-WIV Solution
Simulation Set-Up
Conclusions
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