As Industry 4.0 and digitalization continue to advance, the reliance on information technology increases, making the world more vulnerable to cyber-attacks, especially cyber-physical attacks that can manipulate physical systems and compromise operational data integrity. Detecting cyber-attacks in multistage manufacturing systems (MMS) is crucial due to the growing sophistication of attacks and the complexity of MMS. Attacks can propagate throughout the system, affecting subsequent stages and making detection more challenging than in single-stage systems. Localization is also critical due to the complex interactions in MMS. To address these challenges, a group lasso regression-based framework is proposed to detect and localize attacks in MMS. The proposed algorithm outperforms traditional hypothesis testing-based methods in expected detection delay and localization accuracy, as demonstrated in a linear multistage manufacturing system.
翻译:随着工业 4.0 和数字化的不断发展,对信息技术的依赖性越来越高,使得世界更容易受到网络攻击的威胁,尤其是那些能够操纵物理系统并破坏操作数据完整性的网络物理攻击。在多阶段制造系统(MMS)中检测网络攻击至关重要,因为攻击的日益复杂和 MMS 的复杂性。攻击会在整个系统中传播,影响后续阶段,从而使检测比单级系统更具挑战性。由于 MMS 的复杂相互作用,本文对检测和定位 MMS 中的攻击提出了一种基于组 Lasso 回归的框架。实验结果表明,在线性多阶段制造系统中,所提算法在期望检测延迟时间和定位精度方面均优于传统的假设检验方法。