Published September 22, 2025 | Version v1
Dataset Open

Dataset associated with the conference paper "Genetic Algorithm-Based Optimization of AP Activation for Static Coverage in Cell-Free"

  • 1. 5G Communications for Future Industry Verticals S.L. (Fivecomm)

Contributors

Researcher:

Supervisor:

  • 1. 5G Communications for Future Industry Verticals S.L. (Fivecomm)

Description

Description

This repository contains a dataset designed to support the evaluation of access point (AP) selection strategies in cell-free massive MIMO systems. The dataset is organized into two main folders:

  • coordinates/
    This folder contains the Cartesian positions of both APs and UEs:

    • posAPs.mat: Positions of the deployed APs.

    • gridUEs.mat: Positions of candidate UEs. Only the UEs indicated in the variable idxValidUEs should be considered as valid positions.

  • channels/
    This folder contains the estimated channel realizations between AP antennas and UE antennas. A separate .txt file is provided for each UE:

    • File format: Receiver_X.txt, where X denotes the UE identifier.

    • Each row represents a link between one AP antenna and the corresponding UE antenna.

    • Columns include: AP identifier, AP antenna identifier, UE identifier, UE antenna identifier, real part of the estimated channel. and imaginary part of the estimated channel.

This dataset enables reproducibility of simulations by providing the geometric deployment and channel estimates that serve as the basis for pathloss, RSRP calculation, and subsequent AP selection optimization.

Please refer to the conference paper below for more detailed information about the simulations.

The simulation code is available here on GitHub.

Referencing

If you in any way use this dataset for research that results in publications, please cite our original article listed below:

Guillermo García-Barrios, Martina Barbi and Manuel Fuentes, "Genetic Algorithm-Based Optimization of AP Activation for Static Coverage in Cell-Free," IEEE International Conference on Communications (ICC), Glasgow, Scotland, UK, 2025. [Submitted]

Acknowledgments

This work is supported by the Spanish ministry of economic affairs and digital transformation and the European Union - NextGenerationEU [UNICO I+D 6G/INSIGNIA] (TSI-064200-2022-006).

Files

channels.zip

Files (21.6 MB)

Name Size Download all
md5:d5d78e5bc8407f5995bf73839c76b247
21.6 MB Preview Download
md5:354a39e5aae6e469296c1b8a0fa6be23
26.0 kB Preview Download

Additional details

Software

Repository URL
https://github.com/Fivecomm/cell-free-ga-ap-selection
Programming language
MATLAB
Development Status
Active