Statistical Appliance Inference in the Smart Grid by Machine Learning

Z. Bilgin, E. Tomur, M. Ersoy, Elif Ustundag Soykan
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引用次数: 3

Abstract

Smart Grid has been attracting more interest than ever thanks to emergence of enabling technologies such as 5G and IoT. Yet, there are some long-standing privacy concerns about revealing habits and lifestyles of people from fine-grained power consumption data collected through smart meters. In this context, the contribution of this work is twofold: First, we empirically demonstrate how appliance-level fine-grained power consumption data can reveal households' routines simply using probability density estimations derived from consumption data without requiring any complex analysis. Second, we point out that appliance types can be identified in a targeted house using circuit-level consumption data of other houses. We show how machine learning can be used maliciously to realize this threat in an automatic manner and achieve high success rate even with limited amount of training data on the public REDD dataset. In addition, we provide discussions on possible countermeasures against the threats examined in this study.
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基于机器学习的智能电网统计应用推断
由于5G和物联网等使能技术的出现,智能电网比以往任何时候都吸引了更多的兴趣。然而,从智能电表收集的细粒度功耗数据中揭示人们的习惯和生活方式,存在一些长期存在的隐私担忧。在这种情况下,这项工作的贡献是双重的:首先,我们从经验上证明了如何使用从消费数据中得出的概率密度估计来揭示家庭的日常生活,而不需要任何复杂的分析。其次,我们指出,可以使用其他房屋的电路级消耗数据来识别目标房屋中的电器类型。我们展示了如何恶意使用机器学习以自动方式实现这种威胁,并且即使在公共REDD数据集上的训练数据量有限的情况下也能取得很高的成功率。此外,我们还讨论了针对本研究中所审查的威胁的可能对策。
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