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Unsupervised learning for distributed downlink power allocation in cell-free mMIMO networks

Unsupervised learning for distributed downlink power allocation in cell-free mMIMO networks
Unsupervised learning for distributed downlink power allocation in cell-free mMIMO networks
Cell-free massive multiple-input multiple-output (CF-mMIMO) surmounts conventional cellular network limitations in terms of coverage, capacity, and interference management. This paper aims to introduce a novel unsupervised learning framework for the downlink (DL) power allocation problem in CF-mMIMO networks, utilizing only large-scale fading (LSF) coefficients as input, rather than the hard-to-obtain exact user location or channel state information (CSI). Both centralized and distributed CF-mMIMO power control learning frameworks are explored, with deep neural networks (DNNs) trained to estimate power coefficients while addressing the constraints of pilot contamination and power budgets. For both learning frameworks, the proposed approach is utilized to maximize three well-known power control objectives under maximum-ratio and regularized zero-forcing precoding schemes: 1) sum of spectral efficiency, 2) minimum signal-to-interference-plus-noise ratio (SINR) for max-min fairness, and 3) product of SINRs for proportional fairness, for each of which customized loss functions are formulated. The proposed unsupervised learning approach circumvents the arduous task of training data computations, typically required in supervised learning methods, bypassing the use of conventional complex optimization methods and heuristic methodologies. Furthermore, an LSF-based radio unit (RU) selection algorithm is employed to activate only the contributing RUs, allowing efficient utilization of network resources. Simulation results demonstrate that our proposed unsupervised learning framework outperforms existing supervised learning and heuristic solutions, showcasing an improvement of up to 20% in spectral efficiency and more than 40% in terms of energy efficiency compared to state-of-the-art supervised learning counterparts.
2332-7731
644-658
Fabiani, Mattia
425cc952-cb48-4ce7-b5fd-67962c0ab2ad
Abdallah, Asmaa
86b80268-48be-4bc8-9577-c989e496e459
Celik, Abdulkadir
f8e72266-763c-4849-b38e-2ea2f50a69d0
Haliloglu, Omer
7ed0f872-6e91-448a-8f16-17f6a13487af
Eltawil, Ahmed M.
5eb9e965-5ec8-4da1-baee-c3cab0fb2a72
Fabiani, Mattia
425cc952-cb48-4ce7-b5fd-67962c0ab2ad
Abdallah, Asmaa
86b80268-48be-4bc8-9577-c989e496e459
Celik, Abdulkadir
f8e72266-763c-4849-b38e-2ea2f50a69d0
Haliloglu, Omer
7ed0f872-6e91-448a-8f16-17f6a13487af
Eltawil, Ahmed M.
5eb9e965-5ec8-4da1-baee-c3cab0fb2a72

Fabiani, Mattia, Abdallah, Asmaa, Celik, Abdulkadir, Haliloglu, Omer and Eltawil, Ahmed M. (2025) Unsupervised learning for distributed downlink power allocation in cell-free mMIMO networks. IEEE Transactions on Machine Learning in Communications and Networking, 3, 644-658. (doi:10.1109/tmlcn.2025.3562808).

Record type: Article

Abstract

Cell-free massive multiple-input multiple-output (CF-mMIMO) surmounts conventional cellular network limitations in terms of coverage, capacity, and interference management. This paper aims to introduce a novel unsupervised learning framework for the downlink (DL) power allocation problem in CF-mMIMO networks, utilizing only large-scale fading (LSF) coefficients as input, rather than the hard-to-obtain exact user location or channel state information (CSI). Both centralized and distributed CF-mMIMO power control learning frameworks are explored, with deep neural networks (DNNs) trained to estimate power coefficients while addressing the constraints of pilot contamination and power budgets. For both learning frameworks, the proposed approach is utilized to maximize three well-known power control objectives under maximum-ratio and regularized zero-forcing precoding schemes: 1) sum of spectral efficiency, 2) minimum signal-to-interference-plus-noise ratio (SINR) for max-min fairness, and 3) product of SINRs for proportional fairness, for each of which customized loss functions are formulated. The proposed unsupervised learning approach circumvents the arduous task of training data computations, typically required in supervised learning methods, bypassing the use of conventional complex optimization methods and heuristic methodologies. Furthermore, an LSF-based radio unit (RU) selection algorithm is employed to activate only the contributing RUs, allowing efficient utilization of network resources. Simulation results demonstrate that our proposed unsupervised learning framework outperforms existing supervised learning and heuristic solutions, showcasing an improvement of up to 20% in spectral efficiency and more than 40% in terms of energy efficiency compared to state-of-the-art supervised learning counterparts.

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Accepted/In Press date: 10 April 2025
Published date: 25 April 2025

Identifiers

Local EPrints ID: 508825
URI: http://eprints.soton.ac.uk/id/eprint/508825
ISSN: 2332-7731
PURE UUID: da5c9968-0f51-4d6f-9035-b4126c92ab44
ORCID for Abdulkadir Celik: ORCID iD orcid.org/0000-0001-9007-9979

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Date deposited: 04 Feb 2026 17:39
Last modified: 07 Feb 2026 03:33

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Contributors

Author: Mattia Fabiani
Author: Asmaa Abdallah
Author: Abdulkadir Celik ORCID iD
Author: Omer Haliloglu
Author: Ahmed M. Eltawil

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