While digitization of distribution grids through information and communications technology brings numerous benefits, it also increases the grid's vulnerability to serious cyber attacks. Unlike conventional systems, attacks on many industrial control systems such as power grids often occur in multiple stages, with the attacker taking several steps at once to achieve its goal. Detection mechanisms with situational awareness are needed to detect orchestrated attack steps as part of a coherent attack campaign. To provide a foundation for detection and prevention of such attacks, this paper addresses the detection of multi-stage cyber attacks with the aid of a graph-based cyber intelligence database and alert correlation approach. Specifically, we propose an approach to detect multi-stage attacks by leveraging heterogeneous data to form a knowledge base and employ a model-based correlation approach on the generated alerts to identify multi-stage cyber attack sequences taking place in the network. We investigate the detection quality of the proposed approach by using a case study of a multi-stage cyber attack campaign in a future-orientated power grid pilot.
翻译:虽然通过信息和通信技术实现分配网的数字化带来许多好处,但也增加了电网易受严重网络攻击的脆弱性。与常规系统不同,对许多工业控制系统如电网的攻击经常发生在多个阶段,攻击者立即采取若干步骤实现其目标。需要具备情境意识的探测机制,以探测有计划的攻击步骤,作为连贯攻击运动的一部分。为侦查和预防这种攻击打下基础,本文件在基于图表的网络情报数据库和警报相关方法的帮助下,探讨多阶段网络攻击的探测问题。具体地说,我们提出一种方法,通过利用各种数据形成知识库,对产生的警报采用基于模型的关联方法,以确定网络中发生的多阶段网络攻击序列。我们通过在面向未来的电网试点中利用多阶段网络攻击运动的个案研究,调查拟议方法的探测质量。