DDOS ATTACK DETECTION USING HYBRID (CCN AND LSTM) ML MODEL

Thura Jabbar Khaleel, Nadia Adnan Shiltagh
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Abstract

LSTM (Long Short-Term Memory) and CNN (Convolutional Neural Networks) are two types of deep learning algorithms; by combining the strengths of LSTM and CNN, researchers have developed deep learning models that can effectively detect SDN (Software-Defined Network) attacks including Distributed Denial of Service. These models effectively analyze network traffic, encompassing temporal and spatial characteristics, resulting in precise identification of malicious traffic.In this research, a hybrid model composed of CNN and LSTM is used to detect the DDoS attack in SDN network. Where the CNN component of the model can identify spatial patterns in network traffic, such as the characteristics of individual packets, while the LSTM component can capture temporal patterns in traffic over time, such as the timing and frequency of traffic bursts. The proposed model has been trained on a labeled network traffic dataset, with one class representing normal traffic and another class representing DDoS attack traffic. During the training process, the model adjusts its weights and biases to minimize the difference between its predicted output and the actual output for each input sample. Once trained, the hybrid model classifies incoming network traffic in the dataset as either normal or malicious with an initial accuracy of (78.18%) and losses of (39.77%) at the 1st epoch till it reaches an accuracy of (99.99%) with losses of (9.29×10-5) at the epoch number 500. It should be mentioned that the hybrid model of CNN and LSTM for DDoS detection is implemented using Python Anaconda platform with an ETA 28ms/step.
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使用混合(ccn和lstm) ml模型进行Ddos攻击检测
LSTM(长短期记忆)和CNN(卷积神经网络)是两种类型的深度学习算法;通过结合LSTM和CNN的优势,研究人员开发了可以有效检测SDN(软件定义网络)攻击的深度学习模型,包括分布式拒绝服务。这些模型有效地分析了网络流量,涵盖了时间和空间特征,从而精确识别出恶意流量。在本研究中,采用一种由CNN和LSTM组成的混合模型来检测SDN网络中的DDoS攻击。其中,模型的CNN组件可以识别网络流量中的空间模式,例如单个数据包的特征,而LSTM组件可以捕获流量随时间变化的时间模式,例如流量爆发的时间和频率。该模型在一个标记的网络流量数据集上进行了训练,其中一类代表正常流量,另一类代表DDoS攻击流量。在训练过程中,模型调整其权重和偏差,以最小化每个输入样本的预测输出与实际输出之间的差异。经过训练后,混合模型将数据集中传入的网络流量分类为正常或恶意,初始准确率为78.18%,第一个epoch的损失为39.77%,直到它达到准确率为99.99%,epoch号为500时损失为9.29×10-5。值得一提的是,CNN和LSTM用于DDoS检测的混合模型是使用Python Anaconda平台实现的,ETA为28ms/步。
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