Toward Cooperative Localization With Implicit Connectivity: Graph Neural Network Approach

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초록

This letter aims to facilitate graph neural network (GNN)-based cooperative localization (CL) in scenarios where the connections between gNodeBs (gNBs) and those between user equipment (UEs) are not given, which are yet crucial for determining cooperation pairs. To address this, we first define the concept of implicit connectivity where UE-UE and gNB-gNB connections are conjectured from the available explicit gNB-UE connectivity such that implicit connection between UEs (or gNBs) is likely to exist when there are shared gNBs (or UEs). Considering implicit connections along with explicit ones makes the graph denser, helping spread valuable information throughout the network. Besides, the numbers of shared gNBs and UEs are utilized to enhance node features through a self-attention-based feature embedding, which is beneficial for training the subsequent GNN. Through a realistic dataset generated by a ray-tracing simulator, we verify that the proposed technique achieves the 90(th) percentile error of 1.5031 (m), significantly outperforming all benchmarks and satisfying the 6G positioning requirement.

키워드

Location awarenessGaussian processesTrainingCellular networksHandsUplinkThree-dimensional displaysReceived signal strength indicatorRay tracing6G positioningcooperative localizationgraph neural networkimplicit connectivityself-attentionself-attention
제목
Toward Cooperative Localization With Implicit Connectivity: Graph Neural Network Approach
저자
Jung, HongseokKo, Seung-WooKim, Sunwoo
DOI
10.1109/LWC.2025.3588339
발행일
2025-10
유형
Article
저널명
IEEE Wireless Communications Letters
14
10
페이지
3184 ~ 3188