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Federated Tensor Mining for Secure Industrial Internet of Things

  • Linghe Kong
  • , Xiao Yang Liu
  • , Hao Sheng*
  • , Peng Zeng
  • , Guihai Chen
  • *Corresponding author for this work
  • Shanghai Jiao Tong University
  • Columbia University
  • CAS - Shenyang Institute of Automation

Research output: Contribution to journalArticlepeer-review

Abstract

In a vertical industry alliance, Internet of Things (IoT) deployed in different smart factories are similar. For example, most automobile manufacturers have the similar assembly lines and IoT surveillance systems. It is common to observe the industrial knowledge using deep learning and data mining methods based on the IoT data. However, some knowledge is not easy to be mined from only one factory's data because the samples are still few. If multiple factories within an alliance can gather their data together, more knowledge could be mined. However, the key concern of these factories is the data security. Existing matrix-based methods can guarantee the data security inside a factory but do not allow the data sharing among factories, and thus their mining performance is poor due to lack of correlation. To address this concern, in this article we propose the novel federated tensor mining (FTM) framework to federate multisource data together for tensor-based mining while guaranteeing the security. The key contribution of FTM is that every factory only needs to share its ciphertext data for security issue, and these ciphertexts are adequate for tensor-based knowledge mining due to its homomorphic attribution. Real-data-driven simulations demonstrate that FTM not only mines the same knowledge compared with the plaintext mining, but also is enabled to defend the attacks from distributed eavesdroppers and centralized hackers. In our typical experiment, compared with the matrix-based privacy-preserving compressive sensing (PPCS), FTM increases up to 24% on mining accuracy.

Original languageEnglish
Article number8815886
Pages (from-to)2144-2153
Number of pages10
JournalIEEE Transactions on Industrial Informatics
Volume16
Issue number3
DOIs
StatePublished - Mar 2020

Keywords

  • Industrial internet of things
  • security
  • tensor-based data mining

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