Integrating Over-the-Air Federated Learning and Non-Orthogonal Multiple Access: What Role can RIS Play?
Wanli Ni, Yuanwei Liu, Zhaohui Yang, Hui Tian, Xuemin Shen

TL;DR
This paper introduces a RIS-aided hybrid network that enhances over-the-air federated learning and NOMA by optimizing signal processing, power, and phase shifts to maximize hybrid rate, demonstrating improved performance and flexibility.
Contribution
It proposes a novel RIS-assisted hybrid network framework with joint optimization algorithms for transceiver and reflection design, addressing a complex mixed-integer problem for integrated AirFL and NOMA.
Findings
Supports on-demand communication and computation efficiently.
Performance improves with optimal RIS placement.
Algorithms are applicable to conventional AirFL or NOMA networks.
Abstract
With the aim of integrating over-the-air federated learning (AirFL) and non-orthogonal multiple access (NOMA) into an on-demand universal framework, this paper proposes a novel reconfigurable intelligent surface (RIS)-aided hybrid network by leveraging the RIS to flexibly adjust the signal processing order of heterogeneous data. The objective of this work is to maximize the achievable hybrid rate by jointly optimizing the transmit power, controlling the receive scalar, and designing the phase shifts. Since the concurrent transmissions of all computation and communication signals are aided by the discrete phase shifts at the RIS, the considered problem (P0) is a challenging mixed integer programming problem. To tackle this intractable issue, we decompose the original problem (P0) into a non-convex problem (P1) and a combinatorial problem (P2), which are characterized by the continuous…
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