EPri-MDAS: An efficient privacy-preserving multiple data aggregation scheme without trusted authority for fog-based smart grid

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
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引用次数: 0

Abstract

With the increasingly pervasive deployment of fog servers, fog computing extends data processing and analysis to network edges. At the same time, as the next-generation power grid, the smart grid should meet the requirements of security, efficiency, and real-time monitoring of user energy consumption. By utilizing the low-latency and distributed properties of fog computing, it can improve communication efficiency and user service satisfaction in smart grids. For the sake of providing adequate functionality for the power grid, various schemes have been proposed. Whereas, many methods are vulnerable to privacy leakage since the existence of trusted authority may increase the exposure to threats. In this paper, we propose the EPri-MDAS: an Efficient Privacy-preserving Multiple Data Aggregation Scheme without trusted authority based on the ElGamal homomorphic cryptosystem, which achieves both data integrity verification and data source authentication with the most efficient block cipher-based authenticated encryption algorithm. It performs well in energy efficiency with strong security. Especially, the proposed multidimensional aggregation statistics scheme can perform the fine-grained data analyses; it also allows for fault tolerance while protecting personal privacy. The security analysis and simulation experiments show that EPri-MDAS can satisfy the security requirements and work efficiently in the smart grid.
EPri-MDAS:基于雾的智能电网的高效隐私保护多数据聚合方案(无需可信机构
随着雾服务器部署的日益普及,雾计算将数据处理和分析扩展到了网络边缘。同时,作为下一代电网,智能电网应满足安全、高效和实时监控用户能耗的要求。利用雾计算的低延迟和分布式特性,可以提高智能电网的通信效率和用户服务满意度。为了给电网提供足够的功能,人们提出了各种方案。然而,由于可信机构的存在可能会增加威胁的风险,因此许多方法都容易造成隐私泄露。在本文中,我们提出了 EPri-MDAS:一种基于 ElGamal 同态加密系统的高效隐私保护多重数据聚合方案,该方案不需要可信机构,通过最高效的基于块密码的认证加密算法实现了数据完整性验证和数据源认证。它在高能效和强安全性方面表现出色。特别是所提出的多维聚合统计方案可以进行细粒度的数据分析,还能在保护个人隐私的同时实现容错。安全分析和仿真实验表明,EPri-MDAS 能够满足智能电网的安全要求并高效工作。
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CiteScore
4.70
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0.00%
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