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Cluster-based Cooperative Back Propagation Network Approach for Intrusion Detection in MANET

机译:MANET中基于集群的协同反向传播网络入侵检测方法

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Mobile ad-hoc networks (MANET) are particularly vulnerable on account of its intrinsic characteristics of open medium, dynamic topology, absence of central authorities, distributed cooperation and constrained capability. These vulnerabilities create significant challenges for routing protocols operating in the entire network. In which, the reactive routing, i.e. AODV, bears the brunt of various kinds of attacks. In this paper, we try to build an efficient defense system based on a cooperative scheme to detect intrusions in AODV-based ad hoc networks using clustering technique and Back Propagation Network (BPN). A clustering architecture provides network scalability and fault tolerance, and results in more efficient use of network resources. Back-propagation neural networks is used for the purpose of anomaly detection and the feature is selected from the packets. The effectiveness of the proposed scheme is illustrated by means of extensive simulations using NS-2 simulator. Specifically, the comparison between BPN and finite state machine (FSM) is given.
机译:移动自组织网络(MANET)由于其开放介质的固有特性,动态拓扑,缺少中央机构,分布式合作和能力受限而特别脆弱。这些漏洞给整个网络中运行的路由协议带来了严峻的挑战。其中,反应式路由,即AODV,首当其冲地受到各种攻击。在本文中,我们尝试建立一种基于协作方案的高效防御系统,以使用聚类技术和反向传播网络(BPN)来检测基于AODV的自组织网络中的入侵。群集体系结构提供了网络可伸缩性和容错能力,并导致网络资源的更有效利用。反向传播神经网络用于异常检测,并且从数据包中选择特征。该方案的有效性通过使用NS-2仿真器的广泛仿真来说明。具体来说,给出了BPN与有限状态机(FSM)的比较。

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