Highly accurate profiles of consumers daily energy usage are reported to power grid via smart meters which enables smart grid to effectively regulate power demand and supply. However, consumers energy consumption pattern can reveal personal and sensitive information regarding their lifestyle. Therefore, to ensure users privacy, differentially distributed noise is added to the original data. This technique comes with a trade off between privacy of the consumer versus utility of the data in terms of providing services like billing, Demand Response schemes, and Load Monitoring. In this paper, we propose a technique - Differential Privacy with Noise Cancellation Technique (DPNCT) - to maximize utility in aggregated load monitoring and fair billing while preserving users privacy by using noise cancellation mechanism on differentially private data. We introduce noise to the sensitive data stream before it leaves smart meters in order to guarantee privacy at individual level. Further, we evaluate the effects of different periodic noise cancelling schemes on privacy and utility i.e., billing and load monitoring. Our proposed scheme outperforms the existing scheme in terms of preserving the privacy while accurately calculating the bill.
翻译:消费者日常能源使用情况的高度准确性通过智能仪表向电网报告,使智能网能有效调节电力供需,但消费者能源消费模式能够揭示个人和敏感生活方式的信息,因此,为了确保用户隐私,原始数据中增加了不同分布的噪音,这种技术是消费者隐私与数据效用之间的交换,即提供账单、需求响应计划和负载监测等服务。我们在本文件中提议一种技术——有噪音取消技术的不同隐私(DPNCT)——通过对差异私人数据使用取消噪音的机制,最大限度地利用综合负荷监测和公平计费,同时保护用户隐私。我们在敏感数据流离开智能仪之前,对敏感数据流发出噪音,以保障个人隐私。此外,我们评估不同定期取消噪音的计划对隐私和效用(即计费和负载监测)的影响。我们提议的计划在准确计算法案时,在维护隐私方面超越了现有计划。