Energy-Efficient Federated Learning with Relay-Assisted Aggregation in IIoT Networks
Hamid Reza Hashempour, Mostafa Nozari, Gilberto Berardinelli, Yanjiao Li, Jie Zhang, Hien Quoc Ngo, and Shashi Raj Pandey

TL;DR
This paper introduces an energy-efficient federated learning framework for IIoT networks that leverages relay-assisted aggregation and optimized communication strategies to reduce energy consumption and improve convergence speed.
Contribution
It proposes a novel relay-assisted FL scheme with partial aggregation, an SN grouping algorithm, and a joint optimization method for energy efficiency under practical constraints.
Findings
Significantly reduces training latency and energy consumption.
Decreases outage probability from 10-2 to 10-6.
Doubles energy savings compared to unaggregated cooperation.
Abstract
This paper presents an energy-efficient transmission framework for federated learning (FL) in industrial Internet of Things (IIoT) environments with strict latency and energy constraints. Machinery subnetworks (SNs) collaboratively train a global model by uploading local updates to an edge server (ES), either directly or via neighboring SNs acting as decode-and-forward relays. To enhance communication efficiency, relays perform partial aggregation before forwarding the models to the ES, significantly reducing overhead and training latency. We analyze the convergence behavior of this relay-assisted FL scheme. To address the inherent energy efficiency (EE) challenges, we decompose the original non-convex optimization problem into sub-problems addressing computation and communication energy separately. An SN grouping algorithm categorizes devices into single-hop and two-hop transmitters…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cooperative Communication and Network Coding · IoT Networks and Protocols
