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Auteurs principaux: Yuan, Xiaojun, Zheng, Yuqing, Zhang, Mingchen, Teng, Boyu, Jiang, Wenjun
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2406.17784
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author Yuan, Xiaojun
Zheng, Yuqing
Zhang, Mingchen
Teng, Boyu
Jiang, Wenjun
author_facet Yuan, Xiaojun
Zheng, Yuqing
Zhang, Mingchen
Teng, Boyu
Jiang, Wenjun
contents This paper studies a passive localization system, where an extremely large-scale antenna array (ELAA) is deployed at the base station (BS) to locate a user equipment (UE) residing in its near-field (Fresnel) region. We propose a novel algorithm, named array partitioning-based location estimation (APLE), for scalable near-field localization. The APLE algorithm is developed based on the basic assumption that, by partitioning the ELAA into multiple subarrays, the UE can be approximated as in the far-field region of each subarray. We establish a Bayeian inference framework based on the geometric constraints between the UE location and the angles of arrivals (AoAs) at different subarrays. Then, the APLE algorithm is designed based on the message-passing principle for the localization of the UE. APLE exhibits linear computational complexity with the number of BS antennas, leading to a significant reduction in complexity compared to existing methods. We further propose an enhanced APLE (E-APLE) algorithm that refines the location estimate obtained from APLE by following the maximum likelihood principle. The E-APLE algorithm achieves superior localization accuracy compared to APLE while maintaining a linear complexity with the number of BS antennas. Numerical results demonstrate that the proposed APLE and E-APLE algorithms outperform the existing baselines in terms of localization accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2406_17784
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Scalable Near-Field Localization Based on Partitioned Large-Scale Antenna Array
Yuan, Xiaojun
Zheng, Yuqing
Zhang, Mingchen
Teng, Boyu
Jiang, Wenjun
Signal Processing
This paper studies a passive localization system, where an extremely large-scale antenna array (ELAA) is deployed at the base station (BS) to locate a user equipment (UE) residing in its near-field (Fresnel) region. We propose a novel algorithm, named array partitioning-based location estimation (APLE), for scalable near-field localization. The APLE algorithm is developed based on the basic assumption that, by partitioning the ELAA into multiple subarrays, the UE can be approximated as in the far-field region of each subarray. We establish a Bayeian inference framework based on the geometric constraints between the UE location and the angles of arrivals (AoAs) at different subarrays. Then, the APLE algorithm is designed based on the message-passing principle for the localization of the UE. APLE exhibits linear computational complexity with the number of BS antennas, leading to a significant reduction in complexity compared to existing methods. We further propose an enhanced APLE (E-APLE) algorithm that refines the location estimate obtained from APLE by following the maximum likelihood principle. The E-APLE algorithm achieves superior localization accuracy compared to APLE while maintaining a linear complexity with the number of BS antennas. Numerical results demonstrate that the proposed APLE and E-APLE algorithms outperform the existing baselines in terms of localization accuracy.
title Scalable Near-Field Localization Based on Partitioned Large-Scale Antenna Array
topic Signal Processing
url https://arxiv.org/abs/2406.17784