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Achieving Differential Privacy of Data Disclosure from Non-intrusive Load Monitoring in Smart Grid

机译:通过智能电网中的非侵入式负载监控实现数据披露的差异隐私

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In smart grid, large quantities of smart meters are installed in customers' homes to collect electricity usage data, which can then be used to draw the load curve versus time of a day, and develop a plan or model for power generation. However, such data can also reveal customer's daily activities. In addition, a non-intrusive load monitoring (NILM) device can monitor an electrical circuit that contains a number of appliances which switch on and off independently. If an adversary analyzes the meter readings together with the data measured by NILM device, the customer's privacy will be disclosed. In this paper, we propose an effective privacy-preserving scheme for electric load monitoring, which can guarantee differential privacy of data disclosure in smart grid. In the proposed scheme, an energy consumption behavior model based on Factorial Hidden Markov Model (FHMM) is established. In addition, Laplace noise is added to the behavior parameter, which is different from the traditional methods that usually add noise to the energy consumption data. The analysis shows that the proposed scheme can get a better trade-off between utility and privacy compared with other popular methods.
机译:在智能电网中,大量智能电表安装在客户家中,以收集用电数据,然后可用于绘制负荷曲线与一天中的时间的关系,并制定发电计划或模型。但是,此类数据也可以显示客户的日常活动。另外,非侵入式负载监视(NILM)设备可以监视包含许多独立打开和关闭的设备的电路。如果对手分析了抄表读数以及NILM设备测得的数据,则将披露客户的隐私。本文提出了一种有效的电力负荷监控隐私保护方案,该方案可以保证智能电网数据公开的隐私差异性。在该方案中,建立了基于因子隐马尔可夫模型(FHMM)的能耗行为模型。另外,将拉普拉斯噪声添加到行为参数,这与通常将噪声添加到能耗数据的传统方法不同。分析表明,与其他流行方法相比,该方案可以在效用和隐私之间取得更好的权衡。

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