Federated Channel Learning for Intelligent Reflecting Surfaces With
Fewer Pilot Signals
- URL: http://arxiv.org/abs/2205.03196v1
- Date: Fri, 6 May 2022 13:23:39 GMT
- Title: Federated Channel Learning for Intelligent Reflecting Surfaces With
Fewer Pilot Signals
- Authors: Ahmet M. Elbir and Sinem Coleri and Kumar Vijay Mishra
- Abstract summary: This paper proposes a federated learning (FL) framework to jointly estimate both direct and cascaded channels in IRS-assisted wireless systems.
We show that the proposed FL-based channel estimation approach requires approximately 60% fewer pilot signals and it exhibits 12 times lower transmission overhead than CL.
- Score: 25.592568132720157
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Channel estimation is a critical task in intelligent reflecting surface
(IRS)-assisted wireless systems due to the uncertainties imposed by environment
dynamics and rapid changes in the IRS configuration. To deal with these
uncertainties, deep learning (DL) approaches have been proposed. Previous works
consider centralized learning (CL) approach for model training, which entails
the collection of the whole training dataset from the users at the base station
(BS), hence introducing huge transmission overhead for data collection. To
address this challenge, this paper proposes a federated learning (FL) framework
to jointly estimate both direct and cascaded channels in IRS-assisted wireless
systems. We design a single convolutional neural network trained on the local
datasets of the users without sending them to the BS. We show that the proposed
FL-based channel estimation approach requires approximately 60% fewer pilot
signals and it exhibits 12 times lower transmission overhead than CL, while
maintaining satisfactory performance close to CL. In addition, it provides
lower estimation error than the state-of-the-art DL-based schemes.
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