Sensors (Aug 2018)

Privacy-Preserving Data Aggregation against False Data Injection Attacks in Fog Computing

  • Yinghui Zhang,
  • Jiangfan Zhao,
  • Dong Zheng,
  • Kaixin Deng,
  • Fangyuan Ren,
  • Xiaokun Zheng,
  • Jiangang Shu

DOI
https://doi.org/10.3390/s18082659
Journal volume & issue
Vol. 18, no. 8
p. 2659

Abstract

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As an extension of cloud computing, fog computing has received more attention in recent years. It can solve problems such as high latency, lack of support for mobility and location awareness in cloud computing. In the Internet of Things (IoT), a series of IoT devices can be connected to the fog nodes that assist a cloud service center to store and process a part of data in advance. Not only can it reduce the pressure of processing data, but also improve the real-time and service quality. However, data processing at fog nodes suffers from many challenging issues, such as false data injection attacks, data modification attacks, and IoT devices’ privacy violation. In this paper, based on the Paillier homomorphic encryption scheme, we use blinding factors to design a privacy-preserving data aggregation scheme in fog computing. No matter whether the fog node and the cloud control center are honest or not, the proposed scheme ensures that the injection data is from legal IoT devices and is not modified and leaked. The proposed scheme also has fault tolerance, which means that the collection of data from other devices will not be affected even if certain fog devices fail to work. In addition, security analysis and performance evaluation indicate the proposed scheme is secure and efficient.

Keywords