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Journal ArticleDOI

Uncooperative Emitter Localization Using Signal Strength in Uncalibrated Mobile Networks

TLDR
This paper explores the problem of localizing an emitter of radio frequency energy using a network of mobile receiver nodes, each taking measurements of the emitter’s received signal strength (RSS), and proposes two novel estimators to handle these effects as modifications of the nonlinear least squares and the Gaussian particle filter algorithms.
Abstract
This paper explores the problem of localizing an emitter of radio frequency energy using a network of mobile receiver nodes, each taking measurements of the emitter’s received signal strength (RSS). In this paper, we drop the assumption of receiver calibration, leading to biased measurements for each node. We model these bias effects as additive random variables for each receiver in the log-distance path loss model. We propose two novel estimators to handle these effects as modifications of the nonlinear least squares and the Gaussian particle filter algorithms. The estimators are augmented using the principle of variance least squares, in which the biases’ effect on the data covariance is estimated online. These estimates inform subsequent iterations of the nonlinear algorithms. The path loss exponent and emitter power offset are likewise treated as unknowns. Our simulations show the performance improvement evident in various scenarios over the naive approaches, other contemporary algorithms, and with respect to the Cramer-Rao lower bound. We further show the efficacy of our approach through several experiments using real RSS data collected from a mobile network.

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Citations
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Journal ArticleDOI

Review of Indoor Positioning: Radio Wave Technology

TL;DR: The recent advanced algorithms can offer precise positioning behaviour for an unknown environment in indoor locations as well as the traditional ranging parameters in addition to advanced parameters such as channel state information (CSI), reference signal received power (RSRP), andreference signal received quality (RSRQ) are presented.
Journal ArticleDOI

Optimal Sensor Placement for 2-D Range-Only Target Localization in Constrained Sensor Geometry

TL;DR: The optimal sensor-target geometries under sensor location constraints for range-based positioning are determined based on the A-optimality, E- Optimality and D-optimalities criteria.
Journal ArticleDOI

Sensor Network-Based Rigid Body Localization via Semi-Definite Relaxation Using Arrival Time and Doppler Measurements

TL;DR: A semi-definite relaxation (SDR) method for locating a stationary rigid body using arrival time measurements is proposed, and it is shown analytically that the CWLS solution can achieve the Cramér–Rao lower bound accuracy for Gaussian noise when the noise level is not significant.
Journal Article

RSS-Based Localization via Bayesian Ranging and Iterative Least Squares Positioning

TL;DR: Numerical results show that the proposed Bayesian Ranging and Iterative Least Squares algorithm improves considerably the accuracy of localization, and reduces computational complexity, but increases computation time.
References
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Journal ArticleDOI

Random-effects models for longitudinal data

Nan M. Laird, +1 more
- 01 Dec 1982 - 
TL;DR: In this article, a unified approach to fitting two-stage random-effects models, based on a combination of empirical Bayes and maximum likelihood estimation of model parameters and using the EM algorithm, is discussed.
Journal ArticleDOI

Locating the nodes: cooperative localization in wireless sensor networks

TL;DR: Using the models, the authors have shown the calculation of a Cramer-Rao bound (CRB) on the location estimation precision possible for a given set of measurements in wireless sensor networks.
Journal ArticleDOI

Relative location estimation in wireless sensor networks

TL;DR: This work derives CRBs and maximum-likelihood estimators (MLEs) under Gaussian and log-normal models for the TOA and RSS measurements, respectively for sensor location estimation when sensors measure received signal strength or time-of-arrival between themselves and neighboring sensors.
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