Energy-Efficient Federated Learning for AIoT Using Clustering Methods


Por: Pereira R., Fama F., Kalalas C., Dini P.

Publicada: 1 sep 2025
Resumen:
While substantial research has been devoted to optimizing model performance, convergence rates, and communication efficiency, the energy implications of federated learning (FL) within Artificial Intelligence of Things (AIoT) scenarios are often overlooked in the existing literature. This study examines the energy consumed during the FL process, focusing on three main energy-intensive processes: 1) preprocessing; 2) communication; and 3) local learning, all contributing to the overall energy footprint. We rely on the observation that device/client selection is crucial for speeding up the convergence of model training in a distributed AIoT setting and propose two clustering-informed methods. These clustering solutions are designed to group AIoT devices with similar label distributions, resulting in clusters composed of nearly heterogeneous devices. Hence, our methods alleviate the heterogeneity often encountered in real-world distributed learning applications. Throughout extensive numerical experimentation, we demonstrate that our clustering strategies typically achieve high convergence rates while maintaining low energy consumption when compared to other recent approaches available in the literature.

Filiaciones:
Pereira R.:
 Centre Tecnològic de Telecomunicacions de Catalunya (CTTC), Sustainable AI Research Unit, Barcelona, Spain

Fama F.:
 Centre Tecnològic de Telecomunicacions de Catalunya (CTTC), Sustainable AI Research Unit, Barcelona, Spain

Kalalas C.:
 Centre Tecnològic de Telecomunicacions de Catalunya (CTTC), Sustainable AI Research Unit, Barcelona, Spain

Dini P.:
 Centre Tecnològic de Telecomunicacions de Catalunya (CTTC), Sustainable AI Research Unit, Barcelona, Spain
ISSN: 23274662





IEEE Internet of Things Journal
Editorial
Institute of Electrical and Electronics Engineers Inc., 445 HOES LANE, PISCATAWAY, NJ 08855-4141 USA, Estados Unidos America
Tipo de documento: Article
Volumen: 12 Número: 17
Páginas: 35602-35618
WOS Id: 001556064800003
imagen Open Access

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