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DDoS Detection on Network Protocol Using Neural Network with Feature Extract Optimization

机译:使用功能提取优化的神经网络对网络协议的DDOS检测

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Security of a system is a factor that needs to be considered in the operation of information systems, which are intended to prevent threats to the system and detect and correct due to any system damage. Various techniques used for hacking such as Attack Distribution Denial of Service. DDoS attacks are attacks carried out by an attacker by sending many packets to the server. Packages sent can contain malware so that the network that is attacked can experience out of bandwidth because the attacks run continuously. Security of a system is a factor that needs to be considered in the operation of information systems, which are intended to prevent threats to the system and detect and correct due to any system damage. The types of attacks can be Ping of Death, flooding, Remote controlled attacks, UDP floods, and Smurf Attack. This study aims to develop a new approach to detect DDoS attacks, based on packet data capture in network log forms and feature extract optimization that is statistically analyzed with neural network functions as a detection method. The method is done by adjusting the weight value of each connectivity from the input, neuron, and output. This method shows the journey of data that is on the network when exposed to a DDOS attack, so this method can help identify DDoS attacks with an accuracy of 88%.
机译:系统的安全性是在信息系统的操作中需要考虑的一个因素,这旨在防止对系统的威胁并通过任何系统损坏来检测和正确。用于黑客攻击的各种技术,如攻击分配拒绝服务。 DDOS攻击是攻击者通过向服务器发送许多数据包进行的攻击。发送的包可以包含恶意软件,以便攻击的网络可能会出现在带宽外,因为攻击连续运行。系统的安全性是在信息系统的操作中需要考虑的一个因素,这旨在防止对系统的威胁并通过任何系统损坏来检测和正确。攻击类型可以是死亡,洪水,远程控制攻击,UDP洪水和SMURF攻击的攻击。本研究旨在基于网络日志形式中的数据包数据捕获和特征提取优化的数据包数据捕获来开发一种检测DDOS攻击的新方法,并且用神经网络用作检测方法。该方法是通过调整来自输入,神经元和输出的每个连接性的权重值来完成的。此方法显示在接触到DDOS攻击时在网络上的数据之旅,因此此方法可以帮助识别DDOS攻击,精度为88%。

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