Vladimir Ciric , Marija Milosevic , Danijel Sokolovic , Ivan Milentijevic
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The aim of this paper is to design and implement a modular network intrusion detection architecture capable of simulating cyberattacks based on real-world scenarios while evaluating its defense capabilities. The architecture is designed as a full pipeline from real-time network data collection and transformation to threat-information presentation and visualization, with a pre-trained artificial intelligence module at its core. Well-known components like CICFlowMeter, Prometheus, and Grafana are used and modified to fit our data preparation and core modules to form the proposed architecture for real-world network traffic security monitoring. For the sake of cyberattack simulation, the proposed architecture is situated within a virtual environment, surrounded by the Kali Linux-based penetration simulation agent on one side and a vulnerable agent on the other. The intrusion detection artificial intelligence module is trained on the CICIDS-2017 dataset, and it is demonstrated using the proposed architecture that, despite being trained on an outdated dataset, the trained module is still effective in detecting sophisticated modern attacks. Two case studies are given to illustrate how modular architectures and virtual environments can be valuable tools to assess the security properties of artificial intelligence-based solutions through simulation in real-world scenarios.</p></div>","PeriodicalId":3,"journal":{"name":"ACS Applied Electronic Materials","volume":null,"pages":null},"PeriodicalIF":4.3000,"publicationDate":"2024-02-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Modular deep learning-based network intrusion detection architecture for real-world cyber-attack simulation\",\"authors\":\"Vladimir Ciric , Marija Milosevic , Danijel Sokolovic , Ivan Milentijevic\",\"doi\":\"10.1016/j.simpat.2024.102916\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>In an increasingly digitalized world, cybersecurity has emerged as a critical component of safeguarding sensitive information and infrastructure from malicious threats. 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Well-known components like CICFlowMeter, Prometheus, and Grafana are used and modified to fit our data preparation and core modules to form the proposed architecture for real-world network traffic security monitoring. For the sake of cyberattack simulation, the proposed architecture is situated within a virtual environment, surrounded by the Kali Linux-based penetration simulation agent on one side and a vulnerable agent on the other. The intrusion detection artificial intelligence module is trained on the CICIDS-2017 dataset, and it is demonstrated using the proposed architecture that, despite being trained on an outdated dataset, the trained module is still effective in detecting sophisticated modern attacks. 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引用次数: 0
摘要
在日益数字化的世界中,网络安全已成为保护敏感信息和基础设施免受恶意威胁的关键组成部分。威胁行为者往往比防御者领先一步,甚至更早一步,这导致安全团队在试图检测零日攻击时越来越依赖人工智能。然而,文献中可以找到的大多数基于人工智能的网络安全解决方案都是在至少五年或五年以上的参考数据集上进行训练和测试的,因此对其安全性能的了解比较模糊。此外,它们往往被设计成孤立的、自我关注的组件。本文旨在设计并实现一种模块化网络入侵检测架构,该架构能够模拟基于真实世界场景的网络攻击,同时评估其防御能力。该架构设计为从实时网络数据收集和转换到威胁信息展示和可视化的完整流水线,其核心是预先训练好的人工智能模块。我们使用了 CICFlowMeter、Prometheus 和 Grafana 等知名组件,并对其进行了修改,以适应我们的数据准备和核心模块,从而形成适用于现实世界网络流量安全监控的拟议架构。为了模拟网络攻击,拟议架构被置于虚拟环境中,一侧是基于 Kali Linux 的渗透模拟代理,另一侧是易受攻击代理。入侵检测人工智能模块是在 CICIDS-2017 数据集上进行训练的,使用所提出的架构证明,尽管是在过时的数据集上进行训练,但训练后的模块仍能有效检测到复杂的现代攻击。本文给出了两个案例研究,以说明模块化架构和虚拟环境如何成为有价值的工具,通过在真实世界场景中进行模拟,评估基于人工智能的解决方案的安全特性。
Modular deep learning-based network intrusion detection architecture for real-world cyber-attack simulation
In an increasingly digitalized world, cybersecurity has emerged as a critical component of safeguarding sensitive information and infrastructure from malicious threats. The threat actors are often in line or even one step ahead of the defense, causing the increasing reliance of security teams on artificial intelligence while trying to detect zero-day attacks. However, most of the cybersecurity solutions based on artificial intelligence that can be found in the literature are trained and tested on reference datasets that are at least five or more years old, which gives a vague insight into their security performances. Moreover, they often tend to be designed as isolated, self-focused components. The aim of this paper is to design and implement a modular network intrusion detection architecture capable of simulating cyberattacks based on real-world scenarios while evaluating its defense capabilities. The architecture is designed as a full pipeline from real-time network data collection and transformation to threat-information presentation and visualization, with a pre-trained artificial intelligence module at its core. Well-known components like CICFlowMeter, Prometheus, and Grafana are used and modified to fit our data preparation and core modules to form the proposed architecture for real-world network traffic security monitoring. For the sake of cyberattack simulation, the proposed architecture is situated within a virtual environment, surrounded by the Kali Linux-based penetration simulation agent on one side and a vulnerable agent on the other. The intrusion detection artificial intelligence module is trained on the CICIDS-2017 dataset, and it is demonstrated using the proposed architecture that, despite being trained on an outdated dataset, the trained module is still effective in detecting sophisticated modern attacks. Two case studies are given to illustrate how modular architectures and virtual environments can be valuable tools to assess the security properties of artificial intelligence-based solutions through simulation in real-world scenarios.