Title : ( AI-Based Fluid Antenna Design for Client Selection in Over-the-Air Federated Learning )
Authors: Mohsen Ahmadzadehbolghan , saeid Pakravan , Ghosheh Abed Hodtani , Ming Zeng ,Access to full-text not allowed by authors
Abstract
This paper proposes an innovative approach to improve over-the-air federated learning (OTA-FL) systems by integrating fluid antennas (FAs) at the access point. By exploiting the mobility of FAs, we aim to increase the correlation among the users’ channels, thereby improving the learning performance. We analyze the performance of over-the-air computation and the convergence behavior of the OTA-FL system, highlighting the benefits of FAs. Since the learning performance improves as more devices participate in the FL aggregation, we formulate a non-convex optimization problem that maximizes the number of selected users by jointly optimizing FA positions and the beamforming vector, coupled with a user selection policy subject to a mean-squared error constraint. To address environmental dynamics, we describe the problem as a Markov decision process and develop a long short-term memory (LSTM)-based algorithm for efficient decision-making. Simulation results demonstrate that the proposed FA-assisted OTA-FL framework significantly out- performs conventional setups, achieving higher user selection rates and improved learning performance compared to existing benchmarks
Keywords
, Over-the-air federated learning, fluid antenna, optimality gap, deep reinforcement learning.@article{paperid:1103803,
author = {Ahmadzadehbolghan , Mohsen and Pakravan, Saeid and Abed Hodtani, Ghosheh and مینگ زنگ},
title = {AI-Based Fluid Antenna Design for Client Selection in Over-the-Air Federated Learning},
journal = {IEEE Internet of Things Journal},
year = {2025},
month = {January},
issn = {2327-4662},
keywords = {Over-the-air federated learning; fluid antenna;
optimality gap; deep reinforcement learning.},
}
%0 Journal Article
%T AI-Based Fluid Antenna Design for Client Selection in Over-the-Air Federated Learning
%A Ahmadzadehbolghan , Mohsen
%A Pakravan, Saeid
%A Abed Hodtani, Ghosheh
%A مینگ زنگ
%J IEEE Internet of Things Journal
%@ 2327-4662
%D 2025