Published January 11, 2023 | Version v1
Journal article Open

Datasets associated with the article "Learning-Based Downlink Power Allocation in Cell-Free Massive MIMO Systems" published in IEEE Transactions on Wireless Communications

  • 1. KTH Royal Institute of Technology
  • 1. KTH Royal Institute of Technology

Description

The datasets are associated with the non-orthogonal pilot assignment case in the article. The input and labelled output for training the models therein, and the computed SE performance for the conventional optimization approaches are provided.

A brief description of the datasets:

  • 'APpositions.npy': Represents the access point (AP) 2D locations utilized to generate the datasets.
  • 'dataset_betas.npy': Large-scale fading coefficients in linear scale [W]. Represents the input to the DNN models.
  • 'dataset_mu_XX_WMMSE_ADMM.npy': Locally optimal square roots of power coefficients [sqrt(W)] for the sum-SE maximization objective with; (1) XX = MR, and (2) XX = RZF precoding schemes. Represents the labelled output of the DNN models.
  • 'dataset_mu_XX_WMMSE_PF_ADMM.npy': Locally optimal square roots of power coefficients [sqrt(W)] for the proportional fairness (PF) maximization objective with; (1) XX = MR, and (2) XX = RZF precoding schemes. Represents the labelled output of the DNN models.
  • 'dataset_SE_XX_WMMSE_ADMM.npy': Per user spectral efficiency (SE) in [bits/s/Hz] for the sum-SE maximization objective with ; (1) XX = MR, and (2) XX = RZF precoding schemes.
  • 'dataset_SE_XX_WMMSE_PF_ADMM.npy': Per user spectral efficiency (SE) in [bits/s/Hz] for the proportional fairness (PF) maximization objective with ; (1) XX = MR, and (2) XX = RZF precoding schemes.

If you in anyway use this code for research that results in publications, please cite our original article listed below.

The article can be found at: 10.1109/TWC.2022.3192203. Also on arXiv at: https://arxiv.org/pdf/2109.03128.pdf.

The simulation code is available here on GitHub for training and testing the DNN models.

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