Machine Learning Based Physical-Layer Intrusion Detection and Location for the Smart Grid

G. Prasad, Yinjia Huo, L. Lampe, Victor C. M. Leung
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引用次数: 20

Abstract

Security and privacy of smart grid communication data is crucial given the nature of the continuous bidirectional information exchange between the consumer and the utilities. Data security has conventionally been ensured using cryptographic techniques implemented at the upper layers of the network stack. However, it has been shown that security can be further enhanced using physical layer (PHY) methods. To aid and/or complement such PHY and upper layer techniques, in this paper, we propose a PHY design that can detect and locate not only an active intruder but also a passive eavesdropper in the network. Our method can either be used as a stand-alone solution or together with existing techniques to achieve improved smart grid data security. Our machine learning based solution intelligently and automatically detects and locates a possible intruder in the network by reusing power line transmission modems installed in the grid for communication purposes. Simulation results show that our cost-efficient design provides near ideal intruder detection rates and also estimates its location with a high degree of accuracy.
基于机器学习的智能电网物理层入侵检测与定位
考虑到用户和公用事业公司之间持续双向信息交换的性质,智能电网通信数据的安全性和隐私性至关重要。数据安全通常是通过在网络堆栈的上层实现的加密技术来确保的。然而,已经证明使用物理层(PHY)方法可以进一步增强安全性。为了辅助和/或补充这种物理层和上层技术,在本文中,我们提出了一种物理层设计,它不仅可以检测和定位网络中的主动入侵者,也可以检测和定位网络中的被动窃听者。我们的方法既可以作为一个独立的解决方案使用,也可以与现有技术一起使用,以实现改进的智能电网数据安全性。我们基于机器学习的解决方案通过重复使用安装在电网中的电力线传输调制解调器用于通信目的,智能地自动检测和定位网络中可能的入侵者。仿真结果表明,我们的设计具有成本效益,提供了接近理想的入侵者检测率,并能高度准确地估计其位置。
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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