Abstract
Ensuring smooth mobility management while employing directional beamformed transmissions in 5G millimeterwave networks calls for robust and accurate user equipment (UE) localization and tracking. In this article, we develop neural network-based positioning models with time- and frequencydomain channel state information (CSI) data in harsh non-line-ofsight (NLoS) conditions. We propose a novel frequency-domain feature extraction, which combines relative phase differences and received powers across resource blocks, and offers robust performance and reliability. Additionally, we exploit the multipath components and propose an aggregate time-domain feature combining time-of-flight, angle-of-arrival and received path-wise powers. Importantly, the temporal correlations are also harnessed in the form of sequence processing neural networks, which prove to be of particular benefit for vehicular UEs. Realistic numerical evaluations in large-scale line-of-sight (LoS)-obstructed urban environment with moving vehicles are provided, building on full ray-tracing based propagation modeling. The results show the robustness of the proposed CSI features in terms of positioning accuracy, and that the proposed models reliably localize UEs even in the absence of a LoS path, clearly outperforming the stateof-the-art with similar or even reduced processing complexity. The proposed sequence-based neural network model is capable of tracking the UE position, speed and heading simultaneously despite the strong uncertainties in the CSI measurements. Finally, it is shown that differences between the training and online inference environments can be efficiently addressed and alleviated through transfer learning.
| Original language | English |
|---|---|
| Pages (from-to) | 1534-1550 |
| Journal | IEEE Transactions on Vehicular Technology |
| Volume | 74 |
| Issue number | 1 |
| Early online date | 2024 |
| DOIs | |
| Publication status | Published - 2025 |
| Publication type | A1 Journal article-refereed |
Funding
Copyright (c) 20xx IEEE. Personal use of this material is permitted. However, permission to use this material for any other purposes must be obtained from the IEEE by sending a request to [email protected]. Limited subset of early-stage results presented at IEEE SPAWC 2022 [14]. R. Klus, J. Talvitie, and M. Valkama are with Tampere University, Finland. J. Equi and J. Torsner are with Ericsson Research, Helsinki, Finland. G. Fodor is with Ericsson Research and with KTH, Stockholm, Sweden. This work was supported by the Academy of Finland (grants #319994, #323244, #328214, #338224, and #357730). G. Fodor and J. Equi were supported by the EU project 6G-MUSICAL, project ID:101139176. Data and codes openly available at https://doi.org/10.5281/zenodo.12204893.
| Funders | Funder number |
|---|---|
| Research Council of Finland | 323244, 357730, 338224, 328214, 319994 |
| European Commission | 101139176 |
Keywords
- 5G New Radio
- channel state information
- deep learning
- non-line-of-sight
- positioning
- tracking
- vehicular systems
Publication forum classification
- Publication forum level 3
ASJC Scopus subject areas
- Automotive Engineering
- Aerospace Engineering
- Computer Networks and Communications
- Electrical and Electronic Engineering
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Supplementary Data and Software for "Robust NLoS Localization in 5G mmWave Networks: Data-based Methods and Performance"
Klus, R. (Contributor), Talvitie, J. (Contributor), Equi, J. (Creator), Fodor, G. (Contributor), Torsner, J. (Contributor) & Valkama, M. E. (Contributor), Zenodo, 25 Jun 2025
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