Learning to Quantize and Precode in Massive MIMO Systems for Energy Reduction: a Graph Neural Network Approach
Thomas Feys, Liesbet Van der Perre, Fran\c{c}ois Rottenberg

TL;DR
This paper introduces a graph neural network-based method for non-linear precoding in massive MIMO systems with coarse quantization, significantly reducing power consumption while maintaining high data rates.
Contribution
It proposes a self-supervised GNN approach with Gumbel-softmax gradient estimation for energy-efficient precoding in massive MIMO systems with low-resolution DACs.
Findings
Achieves similar sum rate as MRT with 1-bit DACs
Reduces DAC power consumption by a factor of 4-7
Maintains power reduction up to 3.5 MHz bandwidth
Abstract
Massive MIMO systems are moving toward increased numbers of radio frequency chains, higher carrier frequencies and larger bandwidths. As such, digital-to-analog converters (DACs) are becoming a bottleneck in terms of hardware complexity and power consumption. In this work, non-linear precoding for coarsely quantized downlink massive MIMO is studied. Given the NP-hard nature of this problem, a graph neural network (GNN) is proposed that directly outputs the precoded quantized vector based on the channel matrix and the intended transmit symbols. The model is trained in a self-supervised manner, by directly maximizing the achievable rate. To overcome the non-differentiability of the objective function, introduced due to the non-differentiable DAC functions, a straight-through Gumbel-softmax estimation of the gradient is proposed. The proposed method achieves a significant increase in…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Energy Harvesting in Wireless Networks
