基于自组织映射(SOM)的MANET入侵检测

V. Dinesh Kumar, S. Radhakrishnan
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引用次数: 14

摘要

移动自组织网络(MANET)具有动态性,由网络中的单个主机维护。在这些类型的网络中,所有的通信都是通过无线媒介进行的,网络的性质是分散的和动态的。入侵检测系统(IDS)是城域网中常用的第二种保护方式,它可以探测大量的安全问题,并提供针对恶意攻击的安全保护。入侵检测模型用于在系统遇到入侵者时,根据模式和警报来检测攻击。本文提出并实现了基于自组织映射(SOM)竞争网络等人工神经网络模型的入侵检测系统,该系统在基于输入数据模式的恶意节点检测中起着至关重要的作用。该模型处理了不同类型的攻击及其基于SOM模型的检测方法。该方法不仅可以提高检测率,而且可以降低虚警率,从而在攻击对网络造成更大破坏之前检测到攻击,并利用支持技术加以防范,提高网络性能。在不同参数下对模型的实验结果进行了评价。
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Intrusion detection in MANET using Self Organizing Map (SOM)
Mobile Ad-hoc networks (MANET) are formed with dynamism and upheld by individual hosts in a network. In these type of networks all communication occurs through a wireless medium and the nature of the network is decentralized and dynamic. Hence it probes for a number of security problems and in order provide security against malicious attacks, Intrusion Detection System (IDS) is commonly used as a second route of protection in MANET. Intrusion detection models are used to detect the attacks based on the patterns and alerts in case of intruders are being met with the system. In this paper, we propose and implement intrusion-detection system grounded on artificial neural network model such as Self-Organizing Map (SOM) based competitive network, which in turn plays a vital role in detection of malicious nodes based on input data patterns. The proposed model deals with different types of attacks and their detection approach based on SOM model. The approach aids at increasing Detection rate as well as reducing the False alarm rate, which in turn helps to detect those attacks before it makes larger damage to the network and prevent them with supportive techniques and increase the network performance. The experimental results of proposed model is evaluated under different parameters.
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