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Predicting Model for Identifying the Malicious Activity of Nodes in MANETs

机译:识别船只节点恶意活动的预测模型

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For many applications based on Mobile Ad Hoc Networks (MANETs), the position of the nodes is generally hard to be determined. In sensor networks, for instance, such information may be critical for the MANETs. Additionally, one problem to be faced in this scenario is the fake parameters broadcasted by misbehaving/malicious nodes, which can either compromise results about positioning, or deplete power resources of mobile devices. Therefore, in this paper we propose a model for (1) identifying the fake parameters broadcasted in the network, and for (2) detecting the malicious/misbehaving nodes. The Linear Regression and Variance Analysis (LRVA) are both the basis for the multi-step-ahead predictions in this paper. Through NS-2 and Avrora, we simulated the movement and energy consumption of nodes in a MANET, analyzing the time series of beacon-packets exchanged in the network. As a result of the LRVA employment, the fake parameters broadcasted in the network were detected, with the malicious/misbehaving nodes identified. The simulations presented in this paper show low power consumption, which allows the jointly employment of LRVA with other security techniques in the MANETs.
机译:对于基于移动临时网络(船只)的许多应用程序,通常难以确定节点的位置。例如,在传感器网络中,这些信息对于船只来说可能是至关重要的。此外,在这种情况下要面临的一个问题是由行为行为/恶意节点广播的假参数,可以损害移动设备的定位或耗尽功率资源的结果。因此,在本文中,我们提出了一种(1)识别网络中广播的虚假参数的模型,以及(2)检测恶意/行为不端节点。线性回归和方差分析(LRVA)都是本文中的多级预测的基础。通过NS-2和Avrora,我们模拟了漫步剧中节点的运动和能耗,分析了网络中交换的信标数据的时间序列。由于LRVA就业,检测到网络中广播的假参数,并识别恶意/行为不端的节点。本文提出的模拟显示出低功耗,这使得LRVA与船只中的其他安全技术共同使用。

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