DDoS-FOCUS:使用深度学习方法缓解安全物联网网络的分布式DoS攻击

M. Al-khafajiy, Ghaith Al-Tameemi, T. Baker
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引用次数: 1

摘要

物联网设备和通信协议的快速发展为改善生活方式的服务和网络攻击提供了同样的机会。通常,物联网网络攻击者通过利用物联网的漏洞建立攻击军团,从而获得对大量物联网(例如物联网和雾节点)的访问权限,然后攻击物联网网络中的其他设备/节点。分布式拒绝服务(DDoS)洪水攻击是物联网的主要攻击类型。DDoS引起了安全专家的关注,因为它的性质是形成复杂的攻击,可以破坏带宽。DDoS可能会导致计划外的物联网服务中断,因此需要及时有效的DDoS缓解措施。在本文中,我们提出了一种DDoS-FOCUS;缓解雾节点DDoS攻击的解决方案。该解决方案包括植入雾节点的机器学习模型,以检测DDoS攻击者。利用传统神经网络和双向LSTM (CNN-BiLSTM)开发了一种混合深度学习模型,以缓解未来的DDoS攻击。该模型的初步测试在检测DDoS攻击方面产生了99.8%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DDoS-FOCUS: A Distributed DoS Attacks Mitigation using Deep Learning Approach for a Secure IoT Network
The fast growth of the Internet of Things devices and communication protocols poses equal opportunities for lifestyle-boosting services and pools for cyber attacks. Usually, IoT network attackers gain access to a large number of IoT (e.g., things and fog nodes) by exploiting their vulnerabilities to set up attack armies, then attacking other devices/nodes in the IoT network. The Distributed Denial of Service (DDoS) flooding-attacks are prominent attacks on IoT. DDoS concerns security professionals due to its nature in forming sophisticated attacks that can be bandwidth-busting. DDoS can cause unplanned IoT-services outages, hence requiring prompt and efficient DDoS mitigation. In this paper, we propose a DDoS-FOCUS; a solution to mitigate DDoS attacks on fog nodes. The solution encompasses a machine learning model implanted at fog nodes to detect DDoS attackers. A hybrid deep learning model was developed using Conventional Neural Network and Bidirectional LSTM (CNN-BiLSTM) to mitigate future DDoS attacks. A preliminary test of the proposed model produced an accuracy of 99.8% in detecting DDoS attacks.
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