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Anomaly detection in ad-hoc networks based on deep learning model: A plug and play device

机译:基于深度学习模型的ad-hoc网络异常检测:即插即用设备

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Ad-hoc network is a temporary self-organizing network that needs no fixed infrastructure. So it has been applied extensively in many areas requesting temporary communication such as military field, emergency disaster relief and road traffic. While, due to the feature of self-organization and wireless communication channels, ad-hoc network is more vulnerable to various attacks compared to the traditional network. In this paper, we proposed a plug and play device to detect Denial of Service (DoS) and privacy attacks. This device mainly includes capture tool and deep learning detection model. Capture tool is used to grab packets in ad-hoc networks, deep learning detection model is used for detecting attacks. An alarm will be triggered if the detected result is attack. In this way, we can avoid the detected attack to spreading out in larger scale. The proposed method can be used as the second line of dense to issue the early-warning signal. In the experiment, first, we use Deep neural network (DNN) detection model to detect DoS attacks; next, we use DNN, Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) detection model to detect XSS and SQL attacks. The results show that these detection models can achieve very high Accuracy, Precision, Recall and F1 - score. In addition, the time efficiency among the CNN, the LSTM and the DNN is in acceptable range. It proofs that the proposed method can be effectively applied for attack detection. It is important to note that the proposed method can be extended to all other attacks with little modification in ad-hoc networks. (C) 2018 Elsevier B.V. All rights reserved.
机译:Ad-hoc网络是一个临时的自组织网络,不需要固定的基础结构。因此,它已广泛应用于许多要求临时通信的领域,例如军事领域,紧急救灾和道路交通。同时,由于自组织和无线通信通道的特点,自组织网络比传统网络更容易受到各种攻击。在本文中,我们提出了一种即插即用设备来检测拒绝服务(DoS)和隐私攻击。该设备主要包括捕获工具和深度学习检测模型。捕获工具用于在ad-hoc网络中捕获数据包,深度学习检测模型用于检测攻击。如果检测到的结果是攻击,将触发警报。这样,我们可以避免检测到的攻击大规模扩展。所提方法可作为第二行密集信号发出预警信号。在实验中,首先,我们使用深度神经网络(DNN)检测模型来检测DoS攻击。接下来,我们使用DNN,卷积神经网络(CNN)和长短期记忆(LSTM)检测模型来检测XSS和SQL攻击。结果表明,这些检测模型可以实现很高的准确性,精密度,召回率和F1-得分。另外,CNN,LSTM和DNN之间的时间效率在可接受的范围内。证明了该方法可以有效地应用于攻击检测。重要的是要注意,所提议的方法几乎可以在ad-hoc网络中扩展为所有其他攻击。 (C)2018 Elsevier B.V.保留所有权利。

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