Using Deep learning for network traffic prediction to secure Software networks against DDoS attacks

D. T. Sulaga, Angelika Maag, Indra Seher, Amr Elchouemi
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Abstract

Deep learning (DL) is an emerging technology that is being used in many areas due to its effectiveness. One of its major applications is attack detection and prevention of backdoor attacks. Sampling-based measurement approaches in the software-defined network of an Internet of Things (IoT) network often result in low accuracy, high overhead, higher memory consumption, and low attack detection. This study aims to review and analyse papers on DL-based network prediction techniques against the problem of Distributed Denial of service attack (DDoS) in a secure software network. Techniques and approaches have been studied, that can effectively predict network traffic and detect DDoS attacks. Based on this review, major components are identified in each work from which an overall system architecture is suggested showing the basic processes needed. Major findings are that the DL is effective against DDoS attacks more than other state of the art approaches.
利用深度学习进行网络流量预测,保护软件网络免受DDoS攻击
深度学习(DL)是一项新兴技术,由于其有效性而被应用于许多领域。它的主要应用之一是攻击检测和防止后门攻击。在物联网(IoT)网络的软件定义网络中,基于采样的测量方法通常会导致精度低、开销高、内存消耗高和攻击检测低。本研究旨在回顾和分析安全软件网络中针对分布式拒绝服务攻击(DDoS)问题的基于dl的网络预测技术的论文。研究了能够有效预测网络流量和检测DDoS攻击的技术和方法。在此回顾的基础上,确定了每个工作中的主要组件,并据此建议了显示所需基本过程的整体系统架构。主要的发现是,DL比其他先进的方法更有效地对抗DDoS攻击。
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