论文标题
功率CPS的主动和被动混合检测方法通过改进的AKF和GRU-CNN进行了虚假数据注射攻击
Active and Passive Hybrid Detection Method for Power CPS False Data Injection Attacks with Improved AKF and GRU-CNN
论文作者
论文摘要
受到新一代信息技术的深度渗透的影响,电力系统逐渐演变为高度耦合的网络物理系统(CPS)。在许多可能的功率CPS网络攻击中,错误的数据注入攻击(FDIA)是最严重的。考虑到FDIA的现有知识驱动的检测过程长期以来一直处于被动检测状态,并且忽略了数据驱动的积极捕获功能的优势,一种主动和被动的Hybrid检测方法,用于Power CPS FDIAS,用于不良适应性Kalman Filter(AKF),并提出了这篇论文(CNN)。首先,我们在过滤差异和计算速度方面分析了传统AKF算法的缺点。改进了基于非负阳性自适应卡尔曼滤波器(NDAKF)的状态估计算法,并改善了FDIA的被动检测方法,并具有相似性的欧几里得距离检测和核心的残留检测。然后,在时间内存和特征表达能力方面,提出了基于GRU-CNN混合神经网络的FDIA的主动检测方法,结合GATE复发单元(GRU)和CNN的优势。最后,联合知识驱动和数据驱动的并行检测的结果用于定义混合的固定计算公式,并且考虑了并行模式的特征性约束,建立了FDIA的主动和被动混合检测方法。 Power CPS FDIA的模拟系统示例验证了本文提出的方法的有效性和准确性。
Influenced by deep penetration of the new generation of information technology, power systems have gradually evolved into highly coupled cyber-physical systems (CPS). Among many possible power CPS network attacks, a false data injection attacks (FDIAs) is the most serious. Taking account of the fact that the existing knowledge-driven detection process for FDIAs has been in a passive detection state for a long time and ignores the advantages of data-driven active capture of features, an active and passive hybrid detection method for power CPS FDIAs with improved adaptive Kalman filter (AKF) and convolutional neural networks (CNN) is proposed in this paper. First, we analyze the shortcomings of the traditional AKF algorithm in terms of filtering divergence and calculation speed. The state estimation algorithm based on non-negative positive-definite adaptive Kalman filter (NDAKF) is improved, and a passive detection method of FDIAs is constructed, with similarity Euclidean distance detection and residual detection at its core. Then, combined with the advantages of gate recurrent unit (GRU) and CNN in terms of temporal memory and feature-expression ability, an active detection method of FDIAs based on a GRU-CNN hybrid neural network is proposed. Finally, the results of joint knowledge-driven and data-driven parallel detection are used to define a mixed fixed-calculation formula, and an active and passive hybrid detection method of FDIAs is established, considering the characteristic constraints of the parallel mode. A simulation system example of power CPS FDIAs verifies the effectiveness and accuracy of the method proposed in this paper.