期刊
IEEE INDUSTRIAL ELECTRONICS MAGAZINE
卷 15, 期 2, 页码 28-36出版社
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/MIE.2020.3026837
关键词
Artificial intelligence; Industrial Internet of Things; Training data; Data models; Computational modeling; Edge computing; Servers
This article explores the importance of edge artificial intelligence in industrial Internet of Things applications and introduces a federated active transfer learning model to address the challenges of personalization, responsiveness, and privacy preservation faced by edge AI.
In this article, we study edge artificial intelligence (AI) for industrial Internet of Things (IIoT) applications. We discuss edge AI technology, which is considered the combination of AI with edge computing, and provide an overview of edge AI applications for IIoT networks, where the following three challenges are important to address: 1) personalization, 2) responsiveness, and 3) privacy preservation. To this end, we propose a federated active transfer learning (FATL) model, which through training and testing is able to address those open challenges. Details about the training and testing of the proposed FATL global model are given, including the corresponding simulation setup. This work concludes with a discussion and comparison of the obtained simulation results with existing edge AI training solutions, which provide useful insights about the proposed FATL model. The simulation results highlight how the FATL global model can efficiently address the open challenges of edge AI for future IIoT applications.
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