基于深度神经网络的流氓接入点位置预测

Apisak Ketkhaw, S. Thipchaksurat
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引用次数: 1

摘要

无线局域网(WLAN)中严重的安全问题之一是非法接入点(rap)的存在。为了防止我们的网络受到RAP攻击,我们需要使用RAP检测方法来识别RAP。然而,RAP位置的确定也是一项具有挑战性的任务。本文的目的是提出RAP的位置预测方案。我们将提出的方案称为流氓接入点的位置预测(LPRAP)。LPRAP方案由RAP检测机制和RAP位置预测机制两部分组成。通过考虑SSID、广播信标帧的持续时间和MAC地址,将指纹的概念应用到RAP检测机制中。我们证明了这种机制可以检测RAP的数量。对于RAP位置预测机制,我们利用深度神经元网络(deep neuron network, DNN)来预测RAP的位置并评估其有效性。我们通过与其他机器学习方法(如支持向量机(SVM)、k近邻(KNN)、朴素贝叶斯和多层感知器(MLP))进行比较来评估LPRAP的性能。并与粒子群算法进行了比较。结果表明,LPRAP预测RAP位置的准确率高达99.29%。
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Location Prediction of Rogue Access Point Based on Deep Neural Network Approach
One of the serious security problems in wireless local networks (WLAN) is the existence of the rogue access points (RAPs). To prevent our network from the RAP attacks, we need to identify the RAPs by using the RAP detection methods. However, the identification of RAP location is also a challenging task. The objective of this paper is to propose the location prediction scheme for the RAP. We call our proposed scheme as the location prediction of rogue access point (LPRAP). The LPRAP scheme consists of two mechanisms, the RAP detection mechanism and the RAP location prediction mechanism. We apply the concept of the fingerprint in the RAP detection mechanism by considering the SSID, time duration of broadcasting beacon frame and MAC address. We show that this mechanism can detect the number of RAP. For the RAP location prediction mechanism, we utilize the deep neuron network (DNN) to predict the location of RAPs and evaluate its effectiveness. We evaluate the performance of LPRAP by comparing with those of other machine learning methods such as Support Vector Machine (SVM), K-Nearest Neighbor (KNN), Naive Bayes, and Multi-layer Perceptron (MLP). We also compare with particle swarm optimization algorithm. The results show that LPRAP can accurately predict the location of RAP up to 99.29%.
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