Literature DB >> 35062410

Federated Learning in Edge Computing: A Systematic Survey.

Haftay Gebreslasie Abreha1, Mohammad Hayajneh1, Mohamed Adel Serhani1.   

Abstract

Edge Computing (EC) is a new architecture that extends Cloud Computing (CC) services closer to data sources. EC combined with Deep Learning (DL) is a promising technology and is widely used in several applications. However, in conventional DL architectures with EC enabled, data producers must frequently send and share data with third parties, edge or cloud servers, to train their models. This architecture is often impractical due to the high bandwidth requirements, legalization, and privacy vulnerabilities. The Federated Learning (FL) concept has recently emerged as a promising solution for mitigating the problems of unwanted bandwidth loss, data privacy, and legalization. FL can co-train models across distributed clients, such as mobile phones, automobiles, hospitals, and more, through a centralized server, while maintaining data localization. FL can therefore be viewed as a stimulating factor in the EC paradigm as it enables collaborative learning and model optimization. Although the existing surveys have taken into account applications of FL in EC environments, there has not been any systematic survey discussing FL implementation and challenges in the EC paradigm. This paper aims to provide a systematic survey of the literature on the implementation of FL in EC environments with a taxonomy to identify advanced solutions and other open problems. In this survey, we review the fundamentals of EC and FL, then we review the existing related works in FL in EC. Furthermore, we describe the protocols, architecture, framework, and hardware requirements for FL implementation in the EC environment. Moreover, we discuss the applications, challenges, and related existing solutions in the edge FL. Finally, we detail two relevant case studies of applying FL in EC, and we identify open issues and potential directions for future research. We believe this survey will help researchers better understand the connection between FL and EC enabling technologies and concepts.

Entities:  

Keywords:  data privacy; data security; edge AI; edge computing; federated learning; intelligent edge

Mesh:

Year:  2022        PMID: 35062410      PMCID: PMC8780479          DOI: 10.3390/s22020450

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  17 in total

Review 1.  Deep learning.

Authors:  Yann LeCun; Yoshua Bengio; Geoffrey Hinton
Journal:  Nature       Date:  2015-05-28       Impact factor: 49.962

Review 2.  Deep learning for healthcare: review, opportunities and challenges.

Authors:  Riccardo Miotto; Fei Wang; Shuang Wang; Xiaoqian Jiang; Joel T Dudley
Journal:  Brief Bioinform       Date:  2018-11-27       Impact factor: 11.622

3.  Federated Learning for Vehicular Internet of Things: Recent Advances and Open Issues.

Authors:  Zhaoyang Du; Celimuge Wu; Tsutomu Yoshinaga; Kok-Lim Alvin Yau; Yusheng Ji; Jie Li
Journal:  IEEE Comput Graph Appl       Date:  2020-05-05       Impact factor: 2.088

4.  NodePM: a remote monitoring alert system for energy consumption using probabilistic techniques.

Authors:  Geraldo P R Filho; Jó Ueyama; Leandro A Villas; Alex R Pinto; Vinícius P Gonçalves; Gustavo Pessin; Richard W Pazzi; Torsten Braun
Journal:  Sensors (Basel)       Date:  2014-01-06       Impact factor: 3.576

5.  LoAdaBoost: Loss-based AdaBoost federated machine learning with reduced computational complexity on IID and non-IID intensive care data.

Authors:  Li Huang; Yifeng Yin; Zeng Fu; Shifa Zhang; Hao Deng; Dianbo Liu
Journal:  PLoS One       Date:  2020-04-17       Impact factor: 3.240

Review 6.  Fog Computing Enabling Industrial Internet of Things: State-of-the-Art and Research Challenges.

Authors:  Rabeea Basir; Saad Qaisar; Mudassar Ali; Monther Aldwairi; Muhammad Ikram Ashraf; Aamir Mahmood; Mikael Gidlund
Journal:  Sensors (Basel)       Date:  2019-11-05       Impact factor: 3.576

7.  Federated learning for COVID-19 screening from Chest X-ray images.

Authors:  Ines Feki; Sourour Ammar; Yousri Kessentini; Khan Muhammad
Journal:  Appl Soft Comput       Date:  2021-03-20       Impact factor: 6.725

8.  Federated Learning on Clinical Benchmark Data: Performance Assessment.

Authors:  Soo-Yong Shin; Geun Hyeong Lee
Journal:  J Med Internet Res       Date:  2020-10-26       Impact factor: 5.428

Review 9.  The future of digital health with federated learning.

Authors:  Nicola Rieke; Jonny Hancox; Wenqi Li; Fausto Milletarì; Holger R Roth; Shadi Albarqouni; Spyridon Bakas; Mathieu N Galtier; Bennett A Landman; Klaus Maier-Hein; Sébastien Ourselin; Micah Sheller; Ronald M Summers; Andrew Trask; Daguang Xu; Maximilian Baust; M Jorge Cardoso
Journal:  NPJ Digit Med       Date:  2020-09-14
View more
  3 in total

1.  DACFL: Dynamic Average Consensus-Based Federated Learning in Decentralized Sensors Network.

Authors:  Zhikun Chen; Daofeng Li; Jinkang Zhu; Sihai Zhang
Journal:  Sensors (Basel)       Date:  2022-04-26       Impact factor: 3.847

2.  Deep Federated Adaptation: An Adaptative Residential Load Forecasting Approach with Federated Learning.

Authors:  Yuan Shi; Xianze Xu
Journal:  Sensors (Basel)       Date:  2022-04-24       Impact factor: 3.576

3.  Resource-Saving Customizable Pipeline Network Architecture for Multi-Signal Processing in Edge Devices.

Authors:  Ping Song; Youtian Qie; Chuangbo Hao; Yifan Li; Yue Zhao; Yi Hao; Hongbo Liu; Yishen Qi
Journal:  Sensors (Basel)       Date:  2022-07-30       Impact factor: 3.847

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.