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Evolving Block-Based Neural Network and Field Programmable Gate Arrays for Host-Based Intrusion Detection System

机译:基于块的基于主机入侵检测系统的基于块的神经网络和现场可编程门阵列

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In this paper, we design a prototype with hybrid software-enabled detection engine on the basis of an evolving block-based neural network (BBNN), and integrate it with a Field Programmable Gate Arrays (FPGA) board to enable a real-time host-based intrusion detection system (IDS). The established prototype can feed sequence of system calls obtained from a server directly into the BBNN based IDS. The structure and weights of BBNN are evolved by Genetic Algorithms. Experimental performance comparisons have been conducted against four major Support Vector Machines (SVMs) by carrying out leave-one-out cross validation. The results show that the improved BBNN outperforms other algorithms with respect to the classification and detection performances. The false alarm rate is successfully reduced as low as 2.22% while the detection rate 100% is still maintained. The running times of the proposed hardware based IDS versus other software based systems are also discussed.
机译:在本文中,我们根据基于块的神经网络(BBNN)的基于不断发展的块的神经网络(BBNN)来设计具有混合软件的检测引擎的原型,并将其与现场可编程门阵列(FPGA)板集成,以启用实时主机基于入侵检测系统(IDS)。已建立的原型可以将从服务器获得的系统调用序列直接进入基于BBNN的IDS。 BBNN的结构和重量由遗传算法演变。通过执行休假交叉验证,已经针对四个主要支持向量机(SVM)进行了实验性能比较。结果表明,改进的BBNN相对于分类和检测性能优于其他算法。误报率成功降低至2.22%,而仍保持100%的检测率。还讨论了所提出的硬件ID的运行时间与其他基于软件的系统。

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