学习智能电表数据的稀疏隐私保护表示

Mohammadhadi Shateri, Francisco Messina, P. Piantanida, F. Labeau
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引用次数: 3

摘要

细粒度的智能电表(SMs)数据记录和通信实现了智能电网(SGs)的一些功能,如电能质量监控、负荷预测、故障检测等。此外,它还使用户能够更好地控制自己的用电量。然而,众所周知,它也泄露了用户的敏感信息,即攻击者可以通过分析短信数据推断出用户的私人信息。在本研究中,我们提出了一种基于短信数据非均匀降采样的隐私保护方法。我们将其表述为学习SMs数据的稀疏表示的问题,具有最小的信息泄漏和最大的效用。该体系结构包括一个释放器,它是一个循环神经网络(RNN),通过屏蔽短信数据来训练生成稀疏表示,以及一个实用程序和对手网络(RNN),它帮助释放器最小化关于私有属性的信息泄漏,同时保持短信数据的重构误差最小(即最大效用)。基于实际短信数据评估了所提出技术的性能,并与均匀降采样、随机(非均匀)降采样以及使用数据操作方法的最新隐私保护方法进行了比较。结果表明,我们的方法在隐私-效用权衡方面表现更好,同时释放的数据更少,因此效率更高。
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Learning Sparse Privacy-Preserving Representations for Smart Meters Data
Fine-grained Smart Meters (SMs) data recording and communication has enabled several features of Smart Grids (SGs) such as power quality monitoring, load forecasting, fault detection, and so on. In addition, it has benefited the users by giving them more control over their electricity consumption. However, it is well-known that it also discloses sensitive information about the users, i.e., an attacker can infer users' private information by analyzing the SMs data. In this study, we propose a privacy-preserving approach based on non-uniform down-sampling of SMs data. We formulate this as the problem of learning a sparse representation of SMs data with minimum information leakage and maximum utility. The architecture is composed of a releaser, which is a recurrent neural network (RNN), that is trained to generate the sparse representation by masking the SMs data, and an utility and adversary networks (also RNNs), which help the releaser to minimize the leakage of information about the private attribute, while keeping the reconstruction error of the SMs data minimum (i.e., maximum utility). The performance of the proposed technique is assessed based on actual SMs data and compared with uniform down-sampling, random (non-uniform) down-sampling, as well as the state-of-the-art in privacy-preserving methods using a data manipulation approach. It is shown that our method performs better in terms of the privacy-utility trade-off while releasing much less data, thus also being more efficient.
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