Optimal Linear Stealthy Attacks on Remote State Estimation: A Colored Noise-Based Approach
研究了针对线性网络物理系统的有色噪声最优线性隐蔽攻击设计,通过特征分解和矩阵分裂方法求解优化问题,并用无人机示例验证攻击效果。
This article focuses on the design of optimal linear stealthy (OLS) attacks with colored noises for linear cyber-physical systems (CPSs). Unlike existing linear attacks that neglect the autocorrelation of attack signals, OLS attacks with colored noises are more destructive while eliminating their impact on the residuals. By leveraging eigendecomposition and matrix splitting methods, explicit solutions for optimal attacks are derived by solving two distinct optimization problems. To illustrate the superiority of such attack behaviors, we further investigate OLS attacks with colored noises and historical innovations, where the leverage of historical data is maximized to enhance attack performances. Finally, we provide an illustration of the effectiveness of these attacks through an example of an uncrewed aerial vehicle (UAV).