Jamming Source Localization Using Augmented Physics-Based Model
Andrea Nardin, Tales Imbiriba, Pau Closas

TL;DR
This paper presents a novel augmented physics-based model for localizing jamming sources in satellite navigation, leveraging crowdsourced data and joint estimation techniques to improve accuracy in complex urban environments.
Contribution
It introduces a data-driven augmentation to the pathloss model for better interference localization in challenging propagation conditions.
Findings
Superior localization accuracy in urban scenarios
Effective joint estimation of interference location and model parameters
Enhanced robustness over traditional pathloss-based methods
Abstract
Monitoring interferences to satellite-based navigation systems is of paramount importance in order to reliably operate critical infrastructures, navigation systems, and a variety of applications relying on satellite-based positioning. This paper investigates the use of crowdsourced data to achieve such detection and monitoring at a central node that receives the data from an arbitrary number of agents in an area of interest. Under ideal conditions, the pathloss model is used to compute the Cram\'er-Rao Bound of accuracy as well as the corresponding maximum likelihood estimator. However, in real scenarios where obstructions and reflections are common, the signal propagation is far more complex than the pathloss model can explain. We propose to augment the pathloss model with a data-driven component, able to explain the complexities of the propagation channel. The paper shows a general…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Distributed Sensor Networks and Detection Algorithms · Indoor and Outdoor Localization Technologies
