Modern smart grid systems are heavily dependent on Information and Communication Technology, and this dependency makes them prone to cyberattacks. The occurrence of a cyberattack has increased in recent years resulting in substantial damage to power systems. For a reliable and stable operation, cyber protection, control, and detection techniques are becoming essential. Automated detection of cyberattacks with high accuracy is a challenge. To address this, we propose a two-layer hierarchical machine learning model having an accuracy of 95.44 % to improve the detection of cyberattacks. The first layer of the model is used to distinguish between the two modes of operation (normal state or cyberattack). The second layer is used to classify the state into different types of cyberattacks. The layered approach provides an opportunity for the model to focus its training on the targeted task of the layer, resulting in improvement in model accuracy. To validate the effectiveness of the proposed model, we compared its performance against other recent cyber attack detection models proposed in the literature.
翻译:现代智能电网系统严重依赖信息和通信技术,这种依赖性使它们容易受到网络攻击。近年来,网络攻击的发生有所增加,对电力系统造成重大破坏。对于可靠和稳定的操作来说,网络保护、控制和检测技术正在变得至关重要。以高精度自动检测网络攻击是一个挑战。为了解决这个问题,我们提出了一个双层等级机器学习模型,精确度为95.44%,以改进网络攻击的探测。模型的第一层用来区分两种行动模式(正常状态或网络攻击)。第二层用来将国家分为不同类型的网络攻击。分层方法为模型提供了一个机会,将其培训集中于层次的既定任务,从而改进模型的准确性。为了验证拟议模型的有效性,我们将其业绩与文献中提议的其他最近的网络攻击探测模型进行比较。