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A Survey on Federated Learning and its Applications for Accelerating Industrial Internet of Things (2104.10501v1)

Published 21 Apr 2021 in cs.DC, cs.AI, and cs.LG

Abstract: Federated learning (FL) brings collaborative intelligence into industries without centralized training data to accelerate the process of Industry 4.0 on the edge computing level. FL solves the dilemma in which enterprises wish to make the use of data intelligence with security concerns. To accelerate industrial Internet of things with the further leverage of FL, existing achievements on FL are developed from three aspects: 1) define terminologies and elaborate a general framework of FL for accommodating various scenarios; 2) discuss the state-of-the-art of FL on fundamental researches including data partitioning, privacy preservation, model optimization, local model transportation, personalization, motivation mechanism, platform & tools, and benchmark; 3) discuss the impacts of FL from the economic perspective. To attract more attention from industrial academia and practice, a FL-transformed manufacturing paradigm is presented, and future research directions of FL are given and possible immediate applications in Industry 4.0 domain are also proposed.

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Authors (10)
  1. Jiehan Zhou (5 papers)
  2. Shouhua Zhang (4 papers)
  3. Qinghua Lu (100 papers)
  4. Wenbin Dai (1 paper)
  5. Min Chen (200 papers)
  6. Xin Liu (820 papers)
  7. Susanna Pirttikangas (14 papers)
  8. Yang Shi (107 papers)
  9. Weishan Zhang (24 papers)
  10. Enrique Herrera-Viedma (14 papers)
Citations (39)

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