Performance Evaluation of Support Vector Machine Kernels in Intrusion Detection System for Wireless Sensor Network

IF 1.3 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Innovative Computing Information and Control Pub Date : 2021-11-16 DOI:10.11113/ijic.v12n1.334
Muhammad Amir Hamzah, S. H. Othman
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引用次数: 1

Abstract

Wireless sensor network is very popular in the industrial application due to its characteristics of infrastructure-less wireless network and self-configured for physical and environmental conditions monitoring. However, the dynamic environments of wireless network expose WSN to network vulnerabilities. Intrusion Detection System (IDS) has been used to mitigate the vulnerability issue of network. Researches towards the efficiency improvement of WSN-IDS has been extensively done because the rapid growth of technologies influence the growth of network attacks. Implementation Support Vector Machine (SVM) was found to be one of the optimum algorithms for the improvement of WSN-IDS. Yet, classification efficiency of SVM is based on the kernel function used because different kernel gives different SVM architecture. Linear classification of SVM has limitation to maximize the margin due to the dynamic environment of wireless network which consist of nonlinear data. Since maximizing the margin is the primary goal of SVM, it is crucial to implement the optimum kernel in the classification of nonlinear data. Each SVM model in this research use different kernels which are Linear, RBF, Polynomial and Sigmoid kernels. Further, NSL-KDD dataset was used for the experiment of this research. Performance of each kernel were evaluated based on the experimental result obtained and it was found that RBF kernel provides the best classification accuracy with the score of 91%. Finally, discussion based on the findings was made.
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支持向量机核在无线传感器网络入侵检测系统中的性能评价
无线传感器网络以其无基础设施的无线网络和自配置的物理和环境条件监测的特点,在工业应用中非常受欢迎。然而,无线网络的动态环境使WSN暴露在网络漏洞中。入侵检测系统(IDS)被用于缓解网络中的漏洞问题。由于技术的快速发展影响着网络攻击的增长,因此对WSN-IDS的效率提高进行了广泛的研究。实现支持向量机(SVM)是改进WSN-IDS的最佳算法之一。然而,支持向量机的分类效率取决于所使用的核函数,因为不同的核函数给出不同的支持向量机架构。由于无线网络是由非线性数据构成的动态环境,支持向量机的线性分类不能最大限度地实现余量。由于支持向量机的主要目标是使余量最大化,因此在非线性数据分类中实现最优核是至关重要的。本研究中每个支持向量机模型都使用了不同的核,分别是线性核、RBF核、多项式核和Sigmoid核。此外,本研究的实验采用NSL-KDD数据集。根据得到的实验结果对每个核的性能进行了评价,发现RBF核的分类准确率最高,达到91%。最后,根据研究结果进行了讨论。
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来源期刊
CiteScore
3.20
自引率
20.00%
发文量
0
审稿时长
4.3 months
期刊介绍: The primary aim of the International Journal of Innovative Computing, Information and Control (IJICIC) is to publish high-quality papers of new developments and trends, novel techniques and approaches, innovative methodologies and technologies on the theory and applications of intelligent systems, information and control. The IJICIC is a peer-reviewed English language journal and is published bimonthly
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