Adversarial attacks on data-driven algorithms applied in the power system will be a new type of threat to grid security. Literature has demonstrated that the adversarial attack on the deep-neural network can significantly mislead the load fore-cast of a power system. However, it is unclear how the new type of attack impacts the operation of the grid system. In this research, we manifest that the adversarial algorithm attack induces a significant cost-increase risk which will be exacerbated by the growing penetration of intermittent renewable energy. In Texas, a 5% adversarial attack can increase the total generation cost by 17% in a quarter, which accounts for around $20 million. When wind-energy penetration increases to over 40%, the 5% adversarial attack will inflate the genera-tion cost by 23%. Our research discovers a novel approach to defending against the adversarial attack: investing in the energy-storage system. All current literature focuses on developing algorithms to defend against adversarial attacks. We are the first research revealing the capability of using the facility in a physical system to defend against the adversarial algorithm attack in a system of the Internet of Things, such as a smart grid system.
翻译:对电力系统应用的数据驱动算法的对抗性攻击将是对电网安全的一种新型威胁。文献表明,对深神经网络的对抗性攻击可以大大误导电网的负荷前方。 然而,尚不清楚的是,新类型的攻击如何影响电网系统的运行。在这项研究中,我们表明,对抗性算法攻击引发了巨大的成本增加风险,而这种风险将因间歇性可再生能源不断渗透而加剧。在得克萨斯州,5%的对抗性攻击可以使总发电成本在四分之一中增加17%,大约2 000万美元。当风能渗透到40%以上时,5%的对抗性攻击将增加23 % 。我们的研究发现了一种新颖的防范对抗性攻击的方法:投资于能源储存系统。所有现有文献都侧重于发展对抗对抗对抗对抗性攻击性攻击的算法。我们是第一个研究显示,在物质互联网系统中,例如智能电网系统,利用该设施防御对抗对抗对抗对抗性算法攻击的能力。