智能电网中具有局部差分隐私的高效数据聚合方案

Na Gai, Kaiping Xue, Peixuan He, Bin Zhu, Jianqing Liu, D. He
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引用次数: 18

摘要

智能电网将传统电网与信息通信技术相结合,实现了可靠、高效、灵活的电网数据处理。控制中心可以通过用户的汇总数据对电网的供需情况进行评估,进而对供电、电价等进行动态调整。然而,由于从用户那里收集的电网数据可能会泄露用户的用电习惯和日常活动,因此隐私问题成为一个关键问题。现有的智能电网隐私保护数据收集方案大多采用同态加密或随机化技术,这些方案要么计算量大,要么对可信第三方的要求不现实。提出了一种基于随机响应的满足局部差分隐私保护的智能电网数据聚合方案。该方案在保证参与者个人隐私的前提下,实现了高效实用的电力供需统计估计。性能分析表明,该方案在计算量和通信开销方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Data Aggregation Scheme with Local Differential Privacy in Smart Grid
Smart grid achieves reliable, efficient and flexible grid data processing by integrating traditional power grid with information and communication technology. The control center can evaluate the supply and demand of the power grid through aggregated data of users, and then dynamically adjust the power supply, price of the power, etc. However, since the grid data collected from users may disclose the user’s electricity using habits and daily activities, the privacy concern has become a critical issue. Most of the existing privacy-preserving data collection schemes for smart grid adopt homomorphic encryption or randomization techniques which are either impractical because of the high computation overhead or unrealistic for requiring the trusted third party. In this paper, we propose a privacy-preserving smart grid data aggregation scheme satisfying local differential privacy (LDP) based on randomized response. Our scheme can achieve efficient and practical estimation of the statistics of power supply and demand while preserving any individual participant’s privacy. The performance analysis shows that our scheme is efficient in terms of computation and communication overhead.
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