Utilities around the world are reported to invest a total of around 30 billion over the next few years for installation of more than 300 million smart meters, replacing traditional analog meters [1]. By mid-decade, with full country wide deployment, there will be almost 1.3 billion smart meters in place [1]. Collection of fine grained energy usage data by these smart meters provides numerous advantages such as energy savings for customers with use of demand optimization, a billing system of higher accuracy with dynamic pricing programs, bidirectional information exchange ability between end-users for better consumer-operator interaction, and so on. However, all these perks associated with fine grained energy usage data collection threaten the privacy of users. With this technology, customers' personal data such as sleeping cycle, number of occupants, and even type and number of appliances stream into the hands of the utility companies and can be subject to misuse. This research paper addresses privacy violation of consumers' energy usage data collected from smart meters and provides a novel solution for the privacy protection while allowing benefits of energy data analytics. First, we demonstrate the successful application of occupancy detection attacks using a deep neural network method that yields high accuracy results. We then introduce Adversarial Machine Learning Occupancy Detection Avoidance with Blockchain (AMLODA-B) framework as a counter-attack by deploying an algorithm based on the Long Short Term Memory (LSTM) model into the standardized smart metering infrastructure to prevent leakage of consumers personal information. Our privacy-aware approach protects consumers' privacy without compromising the correctness of billing and preserves operational efficiency without use of authoritative intermediaries.
翻译:据报道,在未来几年里,世界各地的公用事业机构总共投资约300亿亿美元,用于安装3亿多智能米,取代传统模拟米[1]。到十年中期,随着全国全面部署,将有近13亿智能米到位[1]。通过这些智能米收集精细的能源使用数据,可以提供许多好处,例如,利用需求优化为客户节省能源、采用动态定价程序提供更准确的收费系统、最终用户之间双向信息交流能力,以更好地消费者-运营者互动,等等。然而,所有这些与精细的能源使用数据收集相关的风险都威胁到用户隐私。有了这种技术,客户的个人数据,如睡眠周期、用户数量、甚至电器流到公用事业公司手中的种类和数量等,可能会被滥用。这份研究论文涉及对从智能计量中收集的消费者能源使用数据的隐私侵犯,并为隐私保护提供了新颖的解决办法,同时允许能源数据分析方法的可靠性。首先,我们展示了使用深度神经网络系统检测攻击的成功应用,从而不产生高度准确性的结果。我们随后将Adversarial 用于一个基于内部智能智能智能智能的智能智能智能智能智能智能分析框架框架框架。