ITAILGMar 7, 2019

Deep Learning for UL/DL Channel Calibration in Generic Massive MIMO Systems

arXiv:1903.02875v269 citations
Originality Incremental advance
AI Analysis

This addresses channel calibration for massive MIMO communications, but it is incremental as it applies deep learning to an existing problem with nonlinear hardware.

The paper tackles the challenge of calibrating uplink and downlink channels in massive MIMO systems with nonlinear hardware components by designing a deep neural network, achieving performance comparable to conventional linear methods while demonstrating robustness with limited training sequences.

One of the fundamental challenges to realize massive Multiple-Input Multiple-Output (MIMO) communications is the accurate acquisition of channel state information for a plurality of users at the base station. This is usually accomplished in the UpLink (UL) direction profiting from the time division duplexing mode. In practical base station transceivers, there exist inevitably nonlinear hardware components, like signal amplifiers and various analog filters, which complicates the calibration task. To deal with this challenge, we design a deep neural network for channel calibration between the UL and DownLink (DL) directions. During the initial training phase, the deep neural network is trained from both UL and DL channel measurements. We then leverage the trained deep neural network with the instantaneously estimated UL channel to calibrate the DL one, which is not observable during the UL transmission phase. Our numerical results confirm the merits of the proposed approach, and show that it can achieve performance comparable to conventional approaches, like the Agros method and methods based on least squares, that however assume linear hardware behavior models. More importantly, considering generic nonlinear relationships between the UL and DL channels, it is demonstrated that our deep neural network approach exhibits robust performance, even when the number of training sequences is limited.

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