Deep Learning Based Joint Space-Time-Frequency Domain Channel Prediction for Cell-Free Massive MIMO Systems
Yongning Qi, Tao Zhou, Zuowei Xiang, Liu Liu, Bo Ai

TL;DR
This paper introduces a deep learning model that jointly predicts channel states across space, time, and frequency domains in cell-free massive MIMO systems, enhancing accuracy and reducing complexity for 6G communications.
Contribution
It proposes a novel joint space-time-frequency channel prediction model using a Transformer-encoder with specialized convolution layers, improving prediction accuracy and efficiency.
Findings
Higher prediction accuracy than traditional models.
Lower computational complexity compared to standard Transformer models.
Effective in realistic high-speed train LTE scenarios.
Abstract
The cell-free massive multi-input multi-output (CF-mMIMO) is a promising technology for the six generation (6G) communication systems. Channel prediction will play an important role in obtaining the accurate CSI to improve the performance of CF-mMIMO systems. This paper studies a deep learning (DL) based joint space-time-frequency domain channel prediction for CF-mMIMO. Firstly, the prediction problems are formulated, which can output the multi-step prediction results in parallel without error propagation. Then, a novel channel prediction model is proposed, which adds frequency convolution (FreqConv) and space convolution (SpaceConv) layers to Transformer-encoder. It is able to utilize the space-time-frequency correlations and extract the space correlation in the irregular AP deployment. Next, simulated datasets with different sizes of service areas, UE velocities and scenarios are…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Wireless Signal Modulation Classification · Advanced Data and IoT Technologies
