4.7 Article

Privacy-enhanced momentum federated learning via differential privacy and chaotic system in industrial Cyber-Physical systems

期刊

ISA TRANSACTIONS
卷 128, 期 -, 页码 17-31

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.isatra.2021.09.007

关键词

Federated learning; Deep learning; Privacy-preserving; Differential privacy; Chaotic system

资金

  1. National Science and Technology Major Project of China [2018YFB0204304]
  2. Tianjin Research Innovation Project for Postgraduate Students [2019YJSB06]

向作者/读者索取更多资源

This paper proposes a Privacy-Enhanced Momentum Federated Learning framework (PEMFL) that protects the privacy information of industrial agents through the use of differential privacy and chaos-based encryption method. Experimental results demonstrate that PEMFL performs well in terms of accuracy and privacy security.
By leveraging Industrial Cyber-Physical Systems (ICPSs), deep learning-based methods are applied to address various industrial issues. Due to privacy policy reasons, conventional centralized learning (CL) may be improper for some industrial scenarios with sensitive data, such as smart medicine. Recently, federated learning (FL) as a novel collaboration learning approach has received extensive attention, which can break data barriers between different institutions to improve the model performance. How-ever, the privacy information of the industrial agents may be inferred from their shared parameters. In this paper, we propose a Privacy-Enhanced Momentum Federated Learning framework, named PEMFL, that amalgamates differential privacy (DP), Momentum FL (MFL) and chaos-based encryption method. During the training, differentially privacy is used to disturb the industrial agents' gradient parameters in order to preserve their privacy information. Meanwhile, each industrial agent uses the chaos system -based encryption method to encrypt the weight parameters of their local models, which has two advantages: (1) the encryption method can enhance privacy protection; (2) the cloud server cannot access the truth value of the global model parameters which is a vital asset to the industrial agents. In addition, Momentum Gradient Descent (MGD) and an adjusting learning rate schedule are adopted to improve training efficiency for the PEMFL. The performance of the PEMFL is evaluated based on two non-i.i.d datasets. Theoretical analysis and experimental results demonstrate the excellent performance of the PEMFL in terms of accuracy and privacy security.(c) 2021 ISA. Published by Elsevier Ltd. All rights reserved.

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