Recurrent neural network and federated learning based channel estimation approach in mmWave massive MIMO systems

Author:

Shahabodini Sajjad1,Mansoori Mobina1,Abouei Jamshid2ORCID,Plataniotis Konstantinos N.3

Affiliation:

1. Department of Electrical and Computer Engineering Concordia University Montreal Quebec Canada

2. Department of Electrical Engineering Yazd University Yazd Iran

3. Department of Electrical and Computer Engineering University of Toronto Toronto Ontario Canada

Abstract

AbstractSo far, various data‐driven approaches have been presented to obtain channel state information (CSI) in millimeter wave multiple‐input‐multiple‐output wireless networks. In almost all previous works, training and testing channels were assumed to have the same distribution, which may not be the case in practice. In this article, we address this challenge by proposing a learning framework that is a combination of a recurrent neural network (RNN) model and a deep neural network (DNN) for estimating CSI in a dynamic wireless communication environment. Furthermore, we use federated learning to train the learning‐based channel estimation model. More specifically, we introduce a two‐stage downlink pilot transmission procedure, where in the initial stage, long frame length downlink pilot signals are used to train the introduced RNN‐DNN model. Following that, users will receive shorter‐frame‐length pilot signals that can be used for CSI estimation. To speed up the training procedure of the proposed network, we first generate a pre‐trained model and then modify it according to the collected data samples. Simulation results demonstrate that, when the channel distribution is unavailable, the proposed approach performs significantly better than the most recent channel estimation algorithms in terms of estimation performance and computational complexity.

Publisher

Wiley

Subject

Electrical and Electronic Engineering

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