A Novel Intrusion Detection System in WSN using Hybrid Neuro-Fuzzy Filter with Ant Colony Algorithm

Sarah Salaheldin Lutfi, Evans Ga Usa. Aysik Consulting Services, Mahmoud Lutfi Ahmed
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引用次数: 20

Abstract

With the wide application of wireless sensor networks in military and environmental monitoring, security issues have become increasingly prominent. Data exchanged over wireless sensor networks is vulnerable to malicious attacks due to the lack of physical defense equipment. Therefore, corresponding schemes of intrusion detection are urgently needed to defend against such attacks. A new method of intrusion detection using Hybrid Neuro-Fuzzy Filter with Ant Colony Algorithm (HNF-ACA) is proposed in this study, which has been able to map the network status directly into the sensor monitoring data received by base station, accordingly that base station can sense the abnormal changes in network.The hybridized Sugeno-Mamdani based fuzzy interference system is implemented in both the NF filters to obtain more efficient noise removal system. The Modified Mutation Based Ant Colony Algorithm technique improves the accuracy of determining the membership values of input trust values of each node in fuzzy filters. To end, the proposed method was tested on the WSN simulation and the results showed that the intrusion detection method in this work can effectively recognise whether the abnormal data came from a network attack or just a noise than the existing methods.
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基于蚁群算法的神经模糊混合滤波的WSN入侵检测系统
随着无线传感器网络在军事和环境监测中的广泛应用,安全问题日益突出。由于缺乏物理防御设备,无线传感器网络上交换的数据容易受到恶意攻击。因此,迫切需要相应的入侵检测方案来防御此类攻击。本文提出了一种基于蚁群算法的混合神经模糊滤波(HNF-ACA)的入侵检测新方法,该方法可以将网络状态直接映射到基站接收到的传感器监测数据中,从而使基站能够感知网络的异常变化。在两种滤光器中都实现了基于Sugeno-Mamdani的混合模糊干扰系统,以获得更有效的去噪系统。改进的基于变异的蚁群算法提高了模糊滤波器中各节点输入信任值隶属度确定的准确性。最后,本文提出的方法在WSN仿真上进行了测试,结果表明,与现有的入侵检测方法相比,本文提出的入侵检测方法能够有效识别异常数据是来自网络攻击还是仅仅是噪声。
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