We design and demonstrate a method for early detection of Denial-of-Service attacks. The proposed approach takes advantage of the OpenRAN framework to collect measurements from the air interface (for attack detection) and to dynamically control the operation of the Radio Access Network (RAN). For that purpose, we developed our near-Real Time (RT) RAN Intelligent Controller (RIC) interface. We apply and analyze a wide range of Machine Learning algorithms to data traffic analysis that satisfy the accuracy and latency requirements set by the near-RT RIC. Our results show that the proposed framework is able to correctly classify genuine vs. malicious traffic with high accuracy (i.e., 95%) in a realistic testbed environment, allowing us to detect attacks already at the Distributed Unit (DU), before malicious traffic even enters the Centralized Unit (CU).
翻译:我们设计并展示了一种早期发现拒绝服役袭击的方法。拟议办法利用开放区域网框架,从空中界面收集测量数据(用于攻击探测),并动态控制无线电接入网络(RAN)的运作。为此目的,我们开发了近实时(RT)RAN智能控制器(RIC)接口。我们应用并分析了一系列机器学习算法进行数据流量分析,以满足近RT RIC规定的准确性和延缓性要求。我们的结果显示,拟议框架能够在现实的测试环境中对真实交通与恶意交通进行准确的分类(即95%),使我们能够在恶意交通进入中央化单位之前探测分散股(DU)已经发生的袭击。