Vulnerability assessment and defense technology for smart home cybersecurity considering pricing cyberattacks

Yang Liu, Shiyan Hu, Tsung-Yi Ho
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引用次数: 48

Abstract

Smart home, which controls the end use of the power grid, has become a critical component in the smart grid infrastructure. In a smart home system, the advanced metering infrastructure (AMI) is used to connect smart meters with the power system and the communication system of a smart grid. The electricity pricing information is transmitted from the utility to the local community, and then broadcast through wired or wireless networks to each smart meter within AMI. In this work, the vulnerability of the above process is assessed. Two closely related pricing cyberattacks which manipulate the guideline electricity prices received at smart meters are considered and they aim at reducing the expense of the cyberattacker and increasing the peak energy usage in the local community. A countermeasure technique which uses support vector regression and impact difference for detecting anomaly pricing is then proposed. These pricing cyberattacks explore the interdependance between the transmitted electricity pricing in the communication system and the energy load in the power system, which are the first such cyber-attacks in the smart home context. Our simulation results demonstrate that the pricing cyberattack can reduce the attacker's bill by 34.3% at the cost of the increase of others' bill by 7.9% on average. In addition, the pricing cyberattack can unbalance the energy load of the local power system as it increases the peak to average ratio by 35.7%. Furthermore, our simulation results show that the proposed countermeasure technique can effectively detect the electricity pricing manipulation.
考虑定价网络攻击的智能家居网络安全脆弱性评估与防御技术
智能家居控制着电网的最终使用,已成为智能电网基础设施的关键组成部分。在智能家居系统中,采用先进的计量基础设施(AMI)将智能电表与智能电网的电力系统和通信系统连接起来。电价信息从公用事业传输到当地社区,然后通过有线或无线网络广播到AMI内的每个智能电表。在本工作中,对上述流程的脆弱性进行了评估。考虑了两种密切相关的定价网络攻击,它们操纵智能电表接收的指导电价,其目的是减少网络攻击者的费用并增加当地社区的峰值能源使用。提出了一种基于支持向量回归和影响差分的异常定价检测方法。这些定价网络攻击探索了通信系统中传输电价与电力系统中能源负荷之间的相互依赖关系,这是智能家居背景下的首次此类网络攻击。仿真结果表明,定价网络攻击可以使攻击者的账单平均减少34.3%,而代价是他人的账单平均增加7.9%。此外,定价网络攻击使当地电力系统的能源负荷失衡,峰值平均比提高了35.7%。仿真结果表明,本文提出的对策技术能够有效地检测出电价操纵行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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