Evaluating and Detecting Internal Attacks in a Mobile Robotic Network

E. Basan, A. Basan, O. Makarevich
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引用次数: 9

Abstract

In this paper we consider the problem of the need for deep traffic analysis to detect attacks on a network of mobile robots, as well as to assess their effectiveness. The object of the study is a group of mobile robots. It provide a means to analyze the security of mobile robot networks. It analyzes the anomalous activity of robots in a mobile network, based on analysis of traffic at the network and transport layers. To carry out such an analysis, a mathematical approach based on mathematical statistics and probability theory is used. It allows detecting attacks distributed denial of service and Sibyl attack. In addition, this technique allows us to determine what metrics are affected by this or that attack. In addition, it is possible to assess under what conditions the attack has the greatest impact on the network. In this paper, an experimental study was carried out and statistical data collected, the analysis of which allowed us to confirm theoretical assumptions.
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移动机器人网络内部攻击评估与检测
在本文中,我们考虑了需要深度流量分析来检测对移动机器人网络的攻击,以及评估其有效性的问题。本研究的对象是一组移动机器人。为移动机器人网络的安全性分析提供了一种方法。它基于对网络和传输层流量的分析,分析了移动网络中机器人的异常活动。为了进行这样的分析,使用了基于数理统计和概率论的数学方法。它允许检测攻击,分布式拒绝服务和Sibyl攻击。此外,该技术允许我们确定哪些指标受到这种或那种攻击的影响。此外,还可以评估在什么条件下攻击对网络的影响最大。在本文中,我们进行了实验研究,收集了统计数据,并对其进行了分析,从而证实了理论假设。
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