An energy-efficient decentralized federated learning framework for mobile-IoT networks

IF 4.4 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Nastooh Taheri Javan , Elahe Zakizadeh Gharyeali , Seyedakbar Mostafavi
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引用次数: 0

Abstract

The Internet of Things (IoT) comprises a vast number of interconnected devices that generate and share enormous amounts of data. Traditional machine learning approaches, which rely on the exchange of raw data, are impractical for real-world applications with extremely high data volumes due to challenges such as energy constraints and node mobility. To mitigate these overheads in IoT, Federated Learning (FL) can be employed, decentralizing the learning process to various devices without the need for centralized data collection or sharing. In this paper, we propose a new energy-efficient decentralized federated learning framework aimed at reducing energy consumption in mobile IoT. This framework utilizes a Master/Slave clustering method and a dynamic sleep/wake-up strategy, ensuring that the Base Station (BS) does not interfere with the aggregation of learning models and only supervises the clustering process. To rigorously evaluate the results of the proposed approach, we initially present a Linear Programming (LP) mathematical model designed to optimize energy consumption costs. Simulation results demonstrate that the proposed scheme improves energy consumption by up to 52 % compared to the star scheme and 41 % compared to the hierarchical method. Additionally, the proposed approach achieves a high accuracy performance of approximately 98 %, significantly surpassing standard schemes. These quantitative results highlight the effectiveness of our approach in optimizing energy use and enhancing model performance in mobile IoT environments.
用于移动物联网网络的节能分散联邦学习框架
物联网(IoT)由大量相互连接的设备组成,这些设备可以生成和共享大量数据。传统的机器学习方法依赖于原始数据的交换,由于能源限制和节点移动性等挑战,对于具有极高数据量的现实应用来说是不切实际的。为了减少物联网中的这些开销,可以采用联邦学习(FL),将学习过程分散到各种设备上,而无需集中收集或共享数据。在本文中,我们提出了一种新的节能分散联邦学习框架,旨在降低移动物联网中的能源消耗。该框架采用主/从聚类方法和动态睡眠/唤醒策略,确保基站(BS)不干扰学习模型的聚合,只监督聚类过程。为了严格评估所提出的方法的结果,我们最初提出了一个线性规划(LP)数学模型,旨在优化能源消耗成本。仿真结果表明,该方案比星形方案节能52%,比分层方案节能41%。此外,该方法的精度约为98%,大大超过了标准方案。这些量化结果突出了我们的方法在优化能源使用和增强移动物联网环境中的模型性能方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computer Networks
Computer Networks 工程技术-电信学
CiteScore
10.80
自引率
3.60%
发文量
434
审稿时长
8.6 months
期刊介绍: Computer Networks is an international, archival journal providing a publication vehicle for complete coverage of all topics of interest to those involved in the computer communications networking area. The audience includes researchers, managers and operators of networks as well as designers and implementors. The Editorial Board will consider any material for publication that is of interest to those groups.
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