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Experiment-based detection of service disruption attacks in optical networks using data analytics and unsupervised learning

机译:使用数据分析和无监督学习的基于实验的光网络中服务中断攻击检测

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The paper addresses the detection of malicious attacks targeting service disruption at the optical layer as a key prerequisite for fast and effective attack response and network recovery. We experimentally demonstrate the effects of signal insertion attacks with varying intensity in a real-life scenario. By applying data analytics tools, we analyze the properties of the obtained dataset to determine how the relationships among different optical performance monitoring (OPM) parameters of the signal change in the presence of an attack as opposed to the normal operating conditions. In addition, we evaluate the performance of an unsupervised learning technique, i.e., a clustering algorithm for anomaly detection, which can detect attacks as anomalies without prior knowledge of the attacks. We demonstrate the potential and the challenges of unsupervised learning for attack detection, propose guidelines for attack signature identification needed for the detection of the considered attack methods, and discuss remaining challenges related to optical network security.
机译:本文致力于在光学层检测针对服务中断的恶意攻击,这是快速有效的攻击响应和网络恢复的关键前提。我们通过实验证明了在现实生活中信号插入攻击的强度不同。通过应用数据分析工具,我们分析了获得的数据集的属性,以确定信号的不同光学性能监控(OPM)参数之间的关系在发生攻击(与正常操作条件相对)时如何发生变化。此外,我们评估了无监督学习技术的性能,即用于异常检测的聚类算法,该算法可以将攻击检测为异常,而无需事先了解攻击。我们演示了无监督学习对攻击检测的潜力和挑战,提出了检测所考虑的攻击方法所需的攻击特征识别指南,并讨论了与光网络安全性相关的其余挑战。

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