分层网络中协作式入侵检测的资源感知部署优化 / Resource-Aware Deployment Optimization for Collaborative Intrusion Detection in Layered Networks
1️⃣ 一句话总结
这项研究提出了一种新型协作式入侵检测框架,它能根据节点的可用资源和数据类型动态优化检测器部署,从而在分布式环境中以低计算开销实现高效、自适应的入侵检测。
Collaborative Intrusion Detection Systems (CIDS) are increasingly adopted to counter cyberattacks, as their collaborative nature enables them to adapt to diverse scenarios across heterogeneous environments. As distributed critical infrastructure operates in rapidly evolving environments, such as drones in both civil and military domains, there is a growing need for CIDS architectures that can flexibly accommodate these dynamic changes. In this study, we propose a novel CIDS framework designed for easy deployment across diverse distributed environments. The framework dynamically optimizes detector allocation per node based on available resources and data types, enabling rapid adaptation to new operational scenarios with minimal computational overhead. We first conducted a comprehensive literature review to identify key characteristics of existing CIDS architectures. Based on these insights and real-world use cases, we developed our CIDS framework, which we evaluated using several distributed datasets that feature different attack chains and network topologies. Notably, we introduce a public dataset based on a realistic cyberattack targeting a ground drone aimed at sabotaging critical infrastructure. Experimental results demonstrate that the proposed CIDS framework can achieve adaptive, efficient intrusion detection in distributed settings, automatically reconfiguring detectors to maintain an optimal configuration, without requiring heavy computation, since all experiments were conducted on edge devices.
分层网络中协作式入侵检测的资源感知部署优化 / Resource-Aware Deployment Optimization for Collaborative Intrusion Detection in Layered Networks
这项研究提出了一种新型协作式入侵检测框架,它能根据节点的可用资源和数据类型动态优化检测器部署,从而在分布式环境中以低计算开销实现高效、自适应的入侵检测。
源自 arXiv: 2602.11851