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Sparse model-based deep learning for massive MIMO

23 Juillet 2024


Catégorie : Doctorant


Context

The PhD student will be part of the MoBAIWL project (Model-Based frugal AI for efficient WireLess communication systems), which aims to design efficient data processing methods for future wireless communication systems (6G and beyond), using physical models to structure, initialize and train frugal artificial intelligence methods. In particular, multi-antenna systems (massive MIMO) will be considered. They may greatly enhance the spectral and energy efficiency of wireless network by focusing precisely radiated waves. However, in order to unleash their full potential, such systems require complex data processing that can be tackled using either signal processing or machine learning methods. In order to achieve a satisfying trade-off between these two approaches, model-based learning has been introduced recently [1] and led to promising results in various fields of wireless systems [2–6].

 

Objectives

The main objective of this study is to combine sparse signal processing, physical propagation models and machine learning in thecontext of massive MIMO systems. To do so, the following leads are envisioned:

(O1) Identify the most appropriate sparse recovery algorithms for MIMO channel estimation in terms accu-

racy/complexity tradeoff. Make them adaptive to physical model imperfections by converting them to unfolded neural networks. Compare the obtained neural networks to generic architectures.

(O2) Take into account system constraints such as hybrid beamforming or hardware impairments within sparse models, evaluate their impact on the corresponding unfolded neural networks and compensate for them in an efficient manner.

(O3) Take advantage of the high spatial resolution of MIMO systems to explore applications of the developed methods to channel charting (unsupervised positioning) and integrated sensing and communications (ISAC).

The study will build on previous work carried out by the supervising team regarding channel estimation [2,7,8], channel charting [9–13] and ISAC [14–17].

 

Logistics

The PhD will be supervised by a multi-disciplinary team of experts comprising:

• Luc Le Magoarou(main supervisor)

• Philippe Mary (Director)

• Clément Elvira

• Cédric Herzet

The PhD student will be hosted in the SIGNAL team of the IETR (on the campus of INSA Rennes), for a duration of three years starting between September and November of 2024. Students in their final year (M2/PFE) with a background/interest in signal processing, machine learning and applied mathematics are encouraged to apply by sending an email to luc.le-magoarou@insa-rennes.fr.

 

References

[1] Nir Shlezinger, Jay Whang, Yonina C Eldar, and Alexandros G Dimakis. Model-based deep learning. Proceedings of the IEEE, 2023.

[2] Taha Yassine and Luc Le Magoarou. mpnet: Variable depth unfolded neural network for massive mimo channel estimation. IEEE Transactions on Wireless Communications, 21(7):5703–5714, July 2022.

[3] Nhan Thanh Nguyen, Mengyuan Ma, Nir Shlezinger, Yonina C Eldar, AL Swindlehurst, and Markku Juntti. Deep unfolding hybrid beamforming designs for thz massive mimo systems. arXiv preprint arXiv:2302.12041, 2023.

[4] Jérôme Sol, Hugo Prod’Homme, Luc Le Magoarou, and Philipp del Hougne. Experimentally realized physical-model-based wave control in metasurface-programmable complex media. arXiv preprint arXiv:2308.02349, 2023.

[5] José Miguel Mateos-Ramos, Christian Häger, Musa Furkan Keskin, Luc Le Magoarou, and Henk Wymeersch. Model-based end-to-end learning for multi-target integrated sensing and communication. arXiv preprint arXiv:2307.04111, 2023.

[6] Baptiste Chatelier, Luc Le Magoarou, Vincent Corlay, and Matthieu Crussi`ere. Model-based learning for location-to-channel mapping. arXiv preprint arXiv:2308.14370, 2023.

[7] Luc Le Magoarou, Antoine Le Calvez, and Stéphane Paquelet. Massive mimo channel estimation taking into account spherical waves. In 2019 IEEE 20th International Workshop on Signal Processing Advances in Wireless Communications (SPAWC), pages 1–5, July 2019.

[8] Baptiste Chatelier, Luc Le Magoarou, and Getachew Redieteab. Efficient deep unfolding for siso-ofdm channel estimation. In ICC 2023 - IEEE International Conference on Communications, pages 3450–3455, 2023.

[9] Luc Le Magoarou. Efficient channel charting via phase-insensitive distance computation. IEEE Wireless Communications Letters, 10(12):2634–2638, Dec 2021.

[10] Luc Le Magoarou, Taha Yassine, Stéphane Paquelet, and Matthieu Crussière. Channel charting based beamforming. In 2022 56th Asilomar Conference on Signals, Systems, and Computers, pages 1185–1189, Oct 2022.

[11] Taha Yassine, Luc Le Magoarou, Stéphane Paquelet, and Matthieu Crussière. Leveraging triplet loss and nonlinear dimensionality reduction for on-the-fly channel charting. In 2022 IEEE 23rd International Workshop on Signal Processing Advances in Wireless Communication (SPAWC), pages 1–5, July 2022.

[12] Taha Yassine, Luc Le Magoarou, Matthieu Crussière, and Stephane Paquelet. Optimizing multicarrier multiantenna systems for los channel charting, IEEE Transactions on Wireless Communications, 2024.

[13] Taha Yassine, Baptiste Chatelier, Vincent Corlay, Matthieu Crussière, Stephane Paquelet, Olav Tirkkonen, and Luc Le Magoarou. Model-based deep learning for beam prediction based on a channel chart, 2023.

[14] José Miguel Mateos-Ramos, Christian Häger, Musa Furkan Keskin, Luc Le Magoarou, and Henk Wymeersch. Model-based end-to-end learning for multi-target integrated sensing and communication, 2023.

[15] Baptiste Chatelier, Luc Le Magoarou, Vincent Corlay, and Matthieu Crussièere. Model-based learning for location-to-channel mapping, IEEE ICASSP, 2024.

[16] José Miguel Mateos-Ramos, Baptiste Chatelier, Christian Häger, Musa Furkan Keskin, Luc Le Magoarou, and Henk Wymeersch. Semi-supervised end-to-end learning for integrated sensing and communications, IEEE ICMLCN, 2024.

[17] José Miguel Mateos-Ramos, Christian Häger, Musa Furkan Keskin, Luc Le Magoarou, and Henk Wymeersch. Model-driven end-to-end learning for integrated sensing and communication. In ICC 2023 - IEEE International Conference on Communications, pages 5695–5700, 2023.