The advances in deep learning (DL) techniques have the potential to deliver transformative technological breakthroughs to numerous complex tasks in modern power systems that suffer from increasing uncertainty and nonlinearity. However, the vulnerability of DL has yet to be thoroughly explored in power system tasks under various physical constraints. This work, for the first time, proposes a novel physics-constrained backdoor poisoning attack, which embeds the undetectable attack signal into the learned model and only performs the attack when it encounters the corresponding signal. The paper illustrates the proposed attack on the real-time fault line localization application. Furthermore, the simulation results on the 68-bus power system demonstrate that DL-based fault line localization methods are not robust to our proposed attack, indicating that backdoor poisoning attacks pose real threats to DL implementations in power systems. The proposed attack pipeline can be easily generalized to other power system tasks.
翻译:深层次学习技术的进步有可能为现代电力系统许多复杂任务带来变革性技术突破,这些复杂任务日益受到不确定性和非线性的影响;然而,在各种物质制约下,电力系统的任务尚未彻底探讨DL的脆弱性;这项工作首次提出一种新的物理限制的后门中毒袭击,将无法检测的攻击信号嵌入学习的模型,只有在遇到相应的信号时才进行攻击;文件说明了拟议对实时断层线本地化应用进行的攻击;此外,68号公共汽车电源系统的模拟结果显示,DL断层定位方法对我们拟议的攻击并不健全,表明后门中毒袭击对动力系统实施DL构成真正的威胁;拟议的攻击管道很容易被推广到其他电力系统任务中。