Radar Emitter Localization Based on Multipath Exploitation Using Machine Learning

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Date

2024

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Volume Title

Publisher

Ieee-inst Electrical Electronics Engineers inc

Open Access Color

GOLD

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Yes

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Abstract

In this study, a Machine Learning (ML)-based approach is proposed to enhance the computational efficiency of a particular method that was previously proposed by the authors for passive localization of radar emitters based on multipath exploitation with a single receiver in Electronic Support Measures (ESM) systems. The idea is to utilize a ML model on a dataset consisting of useful features obtained from the priori-known operational environment. To verify the applicability and computational efficiency of the proposed approach, simulations are performed on the pseudo-realistic scenes to create the datasets. Well-known regression ML models are trained and tested on the created datasets. The performance of the proposed approach is then evaluated in terms of localization accuracy and computational speed. Based on the results, it is verified that the proposed approach is computationally efficient and implementable in radar detection applications on the condition that the operational environment is known prior to implementation.

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Keywords

ESM, GDOP, localization, machine learning, multipath exploitation, radar, TDOA, ESM, GDOP, localization, machine learning, multipath exploitation, radar, TDOA, VDP::Teknologi: 500, ESM, machine learning, multipath exploitation, GDOP, Electrical engineering. Electronics. Nuclear engineering, maskinlæring, localization, radar, TK1-9971

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Q2

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Q1
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Source

IEEE Access

Volume

12

Issue

Start Page

163367

End Page

163381

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3

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