A Unique Deep Intrusion Detection Approach (UDIDA) for Detecting the Complex Attacks

P. V. Krishna, Venkata Durgarao Matta
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Abstract

Intrusion Detection System (IDS) is one of the applications to detect intrusions in the network. IDS aims to detect any malicious activities that protect the computer networks from unknown persons or users called attackers. Network security is one of the significant tasks that should provide secure data transfer. Virtualization of networks becomes more complex for IoT technology. Deep Learning (DL) is most widely used by many networks to detect the complex patterns. This is very suitable approaches for detecting the malicious nodes or attacks. Software-Defined Network (SDN) is the default virtualization computer network. Attackers are developing new technology to attack the networks. Many authors are trying to develop new technologies to attack the networks. To overcome these attacks new protocols are required to prevent these attacks. In this paper, a unique deep intrusion detection approach (UDIDA) is developed to detect the attacks in SDN. Performance shows that the proposed approach is achieved more accuracy than existing approaches.
一种独特的检测复杂攻击的深度入侵检测方法
入侵检测系统(IDS)是检测网络入侵的应用之一。IDS旨在检测任何恶意活动,以保护计算机网络免受未知人员或称为攻击者的用户的攻击。网络安全是提供安全数据传输的重要任务之一。对于物联网技术来说,网络虚拟化变得更加复杂。深度学习(Deep Learning, DL)被广泛应用于网络的复杂模式检测。这是一种非常适合检测恶意节点或攻击的方法。SDN (Software-Defined Network)是默认的虚拟化计算机网络。攻击者正在开发攻击网络的新技术。许多作者正试图开发攻击网络的新技术。为了克服这些攻击,需要新的协议来防止这些攻击。本文提出了一种独特的深度入侵检测方法(UDIDA)来检测SDN中的攻击。性能表明,该方法比现有方法具有更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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