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Combining U-Net Auto-encoder and MUSIC Algorithm for Improving DOA Estimation Accuracy under Defects of Antenna Array

Nguyen, D.-T. and Le, T.-H. and Hoang, V.-P. and Doan, V.-S. and Thai, D.-T. (2022) Combining U-Net Auto-encoder and MUSIC Algorithm for Improving DOA Estimation Accuracy under Defects of Antenna Array. In: Conference of 15th International Conference on Advanced Technologies for Communications, ATC 2022, 20 October 2022 Through 22 October 2022, Hanoi.

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Abstract

Direction of arrival (DOA) estimation plays a crucial role in radio signal surveillance and reconnaissance systems because it provides spatial information to localize radiated signal sources. Conventional DOA estimation algorithms, such as multiple signal classification (MUSIC) and estimation of signal parameters via rotational invariant technique (ESPRIT), are very sensitive to defects of antenna arrays that reduce the accuracy of estimated DOA in real applications. To mitigate this issue, an auto-encoder based on U-Net is proposed to transfer the imperfect covariance matrix to a new one; then, the MUSIC algorithm is applied to the new covariance matrix to estimate the DOAs of incoming signals. The proposed approach is investigated through simulation for a uniform linear array of eight elements with an inter-element space of half-wavelength. The simulation results indicate that our proposed method achieves a good performance in terms of DOA estimation accuracy. In comparison, the proposed model has outperformed the other models, such as conventional MUSIC, ESPRIT, and two other deep neural networks. © 2022 IEEE.

Item Type: Conference or Workshop Item (Paper)
Divisions: Faculties > Faculty of Radio-Electronic Engineering
Institutes > Institute of System Integration
Identification Number: 10.1109/ATC55345.2022.9943003
Uncontrolled Keywords: Antenna arrays; Computer music; Covariance matrix; Deep neural networks; Multiple signal classification; Signal analysis; Signal encoding, Auto encoders; Covariance matrices; Deep learning; Direction of arrival estimation; Directionof-arrival (DOA); Multiple signal classification algorithm; Radio surveillance; Radio surveillance and reconnaissance; Rotational invariants; Signal parameters, Direction of arrival
Additional Information: Conference of 15th International Conference on Advanced Technologies for Communications, ATC 2022 ; Conference Date: 20 October 2022 Through 22 October 2022; Conference Code:184412
URI: http://eprints.lqdtu.edu.vn/id/eprint/10631

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