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Multi-Agent Intrusion Detection System in Industrial Network using Ant Colony Clustering Approach and Unsupervised Feature Extraction

机译:使用蚁群聚类方法工业网络多功能入侵检测系统和无监督的特征提取

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Industrial control systems have been globally connected to the open computer networks for decentralized management and control purposes. Most of these networked control systems that are not designed with security protection can be vulnerable to network attacks nowadays, so there is a growing demand of efficient and scalable Intrusion Detection Systems (IDS) in the network infrastructure of industrial plants. In this paper, we present a multi-agent IDS architecture that is designed for decentralized intrusion detection and prevention control in large switched networks. An efficient and biologically inspired learning model is proposed for anomaly intrusion detection in the multi-agent IDS. The proposed model called Ant Colony Clustering Model (ACCM) improves the existing ant-based clustering approach in searching for near-optimal clustering heuristically, in which meta-heuristics engages the optimization principles in swarm intelligence. In order to alleviate the curse of dimensionality, four unsupervised feature extraction algorithms are applied and evaluated on their effectiveness to enhance the clustering solution. The experimental results on KDD-Cup99 IDS benchmark data demonstrate that applying ACCM with one of the feature extraction algorithms is effective to detect known or unseen intrusion attacks with high detection rate and recognize normal network traffic with low false positive rate.
机译:工业控制系统已全局连接到开放的计算机网络以进行分散管理和控制目的。大多数未设计有安全保护这些网络控制系统容易受到网络攻击的今天,所以在工业厂房的网络基础设施的高效,可扩展的入侵检测系统的不断增长的需求(IDS)。在本文中,我们提出了一种多功能IDS架构,该架构专为大型交换网络中的分散性入侵检测和预防控制而设计。提出了一种高效和生物启发的学习模型,用于多种子体ID中的异常入侵检测。拟议的型号称为蚁群聚类模型(ACCM)可以提高现有的基于基于蚂蚁的聚类方法,用于寻找近乎最佳聚类的启发性,其中Meta-heuRistics从群体智能中参与优化原则。为了减轻维度的诅咒,施加四种无监督的特征提取算法,并评估其有效性,以增强聚类溶液。 KDD-Cup99 IDS基准数据的实验结果表明,使用具有高检测率的已知或看不见的入侵攻击具有高检测率的已知或看不见的入侵攻击,并以低误频率识别正常网络流量的施加ACCM。

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