Most traditional false data injection attack (FDIA) detection approaches rely on a key assumption, i.e., the power system can be accurately modeled. However, the transmission line parameters are dynamic and cannot be accurately known during operation and thus the involved modeling errors should not be neglected. In this paper, an illustrative case has revealed that modeling errors in transmission lines significantly weaken the detection effectiveness of conventional FDIA approaches. To tackle this issue, we propose an FDIA detection mechanism from the perspective of transfer learning. Specifically, the simulated power system is treated as a source domain, which provides abundant simulated normal and attack data. The real world's running system whose transmission line parameters are unknown is taken as a target domain where sufficient real normal data are collected for tracking the latest system states online. The designed transfer strategy that aims at making full use of data in hand is divided into two optimization stages. In the first stage, a deep neural network (DNN) is built by simultaneously optimizing several well-designed objective terms with both simulated data and real data, and then it is fine-tuned via real data in the second stage. Several case studies on the IEEE 14-bus and 118-bus systems verify the effectiveness of the proposed mechanism.
翻译:多数传统的虚假数据注入攻击(FDIA)探测方法,大多数传统的虚假数据注入攻击(FDIA)探测方法都依赖于一个关键假设,即电源系统可以精确地建模,然而,传输线参数是动态的,在运行期间无法准确知道,因此不应忽视有关的模型错误;在本文件中,一个说明性案例表明,传输线的模型错误大大削弱了FDIA方法的探测效力。为了解决这一问题,我们提议从转移学习的角度来建立一个FDIA探测机制。具体地说,模拟动力系统被视为源域,提供大量模拟正常和攻击数据。真实世界的运行系统,其传输线参数未知,作为目标域,收集足够的真实正常数据以跟踪最新系统,在线进行。设计旨在充分利用手头数据的传输战略分为两个优化阶段。在第一阶段,通过同时优化若干设计良好的客观术语,同时使用模拟数据和真实数据,然后通过第二阶段的实际数据加以调整。关于IEEEE 14-Bus和118-Bus机制的拟议有效性和118-Bus机制的若干案例研究。