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Enabling FDD Massive MIMO through Deep Learning-based Channel Prediction

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A major obstacle for widespread deployment of frequency division duplex (FDD)-based Massive multiple-input multiple-output (MIMO) communications is the large signaling overhead for reporting full downlink (DL) channel state information (CSI) back to the basestation (BS), in order to enable closed-loop precoding. We completely remove this overhead by a deep-learning based channel extrapolation (or "prediction") approach and demonstrate that a neural network (NN) at the BS can infer the DL CSI centered around a frequency $f_\text{DL}$ by solely observing uplink (UL) CSI on a different, yet adjacent frequency band around $f_\text{UL}$; no more pilot/reporting overhead is needed than with a genuine time division duplex (TDD)-based system. The rationale is that scatterers and the large-scale propagation environment are sufficiently similar to allow a NN to learn about the physical connections and constraints between two neighboring frequency bands, and thus provide a well-operating system even when classic extrapolation methods, like the Wiener filter (used as a baseline for comparison throughout) fails. We study its performance for various state-of-the-art Massive MIMO channel models, and, even more so, evaluate the scheme using actual Massive MIMO channel measurements, rendering it to be practically feasible at negligible loss in spectral efficiency when compared to a genuine TDD-based system.

Maximilian Arnold, Sebastian D\"orner, Sebastian Cammerer, Sarah Yan, Jakob Hoydis, Stephan ten Brink• 2019

Related benchmarks

TaskDatasetResultRank
CSI Prediction3GPP CDL TDD (Regular split)
NMSE0.764
27
CSI Prediction3GPP CDL TDD (Generalization)
NMSE0.747
27
CSI Prediction3GPP CDL FDD Generalization
NMSE1.014
21
CSI Prediction3GPP CDL FDD (Regular)
NMSE1.022
21
CSI Prediction3GPP CDL TDD Track (generalization)
CDL-B Score0.88
9
CSI ForecastingTDD
FLOPs (G)0.157
9
CSI Prediction3GPP CDL TDD Regular Track (train)
CDL-A0.879
9
CSI ForecastingFDD
FLOPs (G)0.157
7
CSI Prediction3GPP CDL FDD Regular Track (train)
CDL-A1.188
7
CSI Prediction3GPP CDL FDD Generalization Track
CDL-B1.212
7
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