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An Effective Intrusion Detection Model for Dynamic Topological Channel Behavior Using Dense Node Behavior

机译:使用密集节点行为的动态拓扑通道行为的有效入侵检测模型

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摘要

Mobile Ad-hoc Network (MANET) with open medium and dynamic topological* structure leads to different vulnerable attacks increasing the most challenging task in detecting intrusion detection model. Most of the existing Intrusion detection model in MANET provides security depending on the accessible resources while have trouble in dealing with intrusion detection model for dynamic topological channel behavior. In addition, the intrusion detection and response system in MANET does not address for dynamically changing topological zone. Due to the dynamic change involved in the topological structure, node location information is not sufficient for analyzing the behavior. Therefore, we are persuaded to design a new intrusion detection model which involves new detection architecture to efficiently detect the abnormalities in mobile ad hoc networks based on the knowledge of channel behavior. The research work is mainly concentrated on obtaining the perfect channel knowledge in mobile ad-hoc network model with accurate node location information. To improve the detection accuracy on dynamically changing topology, Prediction and Supportive architecture using Channel Prediction (PS-CP) is proposed in this paper. The PS-CP architecture deals with perfecting the channel knowledge and achieves higher security in MANET. First, a Channel Prediction scheme is employed that provides an extensive historic knowledge of mobile route path to easily predict and effortlessly perfect the dynamic topological channel. Then, an Arbitrary Bernoulli Matrix is employed to obtain relation between initial node point and dynamic network node changing topological structure aiming at improving intrusion detection accuracy. Finally, Dense Node Behavior model analyzes the behavior of dynamic topological control based on the located node information for minimizing the false positive rate. In addition, different location point are identified using PS-CP architecture to improve the intrusion detection rate thus enhances the false negative rate. Simulation results demonstrate that the proposed intrusion detection achieves efficient amount of predicted class positive rate, detection rate, detection accuracy, false positive rate and mean route lifetime in mobile ad-hoc network.
机译:具有开放介质和动态拓扑结构的移动自组织网络(MANET)导致不同的易受攻击,从而增加了检测入侵检测模型中最具挑战性的任务。 MANET中大多数现有的入侵检测模型都根据可访问资源提供安全性,同时在处理动态拓扑通道行为的入侵检测模型时遇到麻烦。此外,MANET中的入侵检测和响应系统无法解决动态更改拓扑区域的问题。由于拓扑结构涉及动态变化,因此节点位置信息不足以分析行为。因此,我们被劝说设计一种新的入侵检测模型,该模型包含新的检测体系结构,以基于信道行为的知识有效地检测移动自组织网络中的异常。研究工作主要集中在获得具有精确节点位置信息的移动自组织网络模型中的完美信道知识。为了提高动态变化拓扑的检测精度,提出了一种基于信道预测的预测和支持体系结构(PS-CP)。 PS-CP体系结构致力于完善通道知识,并在MANET中实现更高的安全性。首先,采用信道预测方案,该方案可提供有关移动路线路径的广泛历史知识,以轻松预测并轻松完善动态拓扑信道。然后,采用任意伯努利矩阵来获取初始节点与动态网络节点改变拓扑结构之间的关系,旨在提高入侵检测的准确性。最后,密集节点行为模型基于所定位的节点信息分析动态拓扑控制的行为,以最大程度地降低误报率。另外,使用PS-CP架构识别不同的位置点,以提高入侵检测率,从而提高假阴性率。仿真结果表明,所提出的入侵检测能够在移动自组网中实现有效的预测类正向率,检测率,检测精度,误报率和平均路由寿命。

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