4.8 Article

Blockchain-Enabled Federated Learning Data Protection Aggregation Scheme With Differential Privacy and Homomorphic Encryption in IIoT

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 18, Issue 6, Pages 4049-4058

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2021.3085960

Keywords

Industrial Internet of Things; Collaborative work; Data models; Computational modeling; Distributed databases; Security; Blockchain; Blockchain; differential privacy; federated learning; homomorphic encryption; privacy protection

Funding

  1. National Natural Science Foundation of China [62002048, U19A2066]
  2. Open Project of Guangdong Provincial Key Laboratory of Information Security Technology [2020B1212060078]
  3. Sichuan Science and Technology Plan Projects - Key Research and Development Projects [2020YFG0294]
  4. Chengdu Science and Technology Project Key R&D Support Program - Major Science and Technology Application Demonstration Project [2019-YF09-00048-CG]
  5. Research Startup Fund (Central Universities) [Y030202059018061]

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This article presents a blockchain-enabled federated learning application model and data protection methods based on differential privacy and homomorphic encryption. Experimental results demonstrate that the method has better performance in data sharing and model sharing.
With rapid growth in data volume generated from different industrial devices in IoT, the protection for sensitive and private data in data sharing has become crucial. At present, federated learning for data security has arisen, and it can solve the security concerns on data sharing by model sharing on Internet of mutual distrust. However, the hackers still launch attack aiming at the security vulnerabilities (e.g., model extraction attack and model reverse attack) in federated learning. In this article, to address the above problems, we first design an application model of blockchain-enabled federated learning in Industrial Internet of Things (IIoT), and formulate our data protection aggregation scheme based on the above model. Then, we give the distributed K-means clustering based on differential privacy and homomorphic encryption, and the distributed random forest with differential privacy and the distributed AdaBoost with homomorphic encryption methods, which enable multiple data protection in data sharing and model sharing. Finally, we integrate the methods with blockchain and federated learning, and provide the complete security analysis. Extensive experimental results show that our aggregation scheme and working mechanism have the better performance in the selected indicators.

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