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A Deep Learning-Based Methodology in Fog Environment for DDOS Attack Detection

机译:用于DDOS攻击检测的雾环境中基于深入的学习方法

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The Distributed denial-of-service (DDoS) attack pose a great threat to a heterogeneous network like Internet of things (IoT). The loss to a firm caused by a DDoS attack is directly proportional to the duration of the attack so it is important to identify and mitigate the attack as soon as possible. The traditional architecture of IoT has three layers consisting of the end device in the bottommost layer, controllers in the middle layer, and cloud in the uppermost layer. Any kind of decision-making is done in the cloud so the whole process is slowed down due to latency delay. We have adopted the architecture of a fog layer with sufficient computing power above the end device layer. We have used two deep Learning-based models. First long short-term memory (LSTM) model to identify the malicious data from the benign data and second convolutional neural network (CNN) model to further classify the data into attack categories. Our lstm model has an accuracy of 98 percent and cnn model has an accuracy of 86 percent.
机译:分布式拒绝服务(DDOS)攻击对异构网络构成了巨大的威胁,如物联网(物联网)。由DDOS攻击引起的公司的损失与攻击的持续时间成正比,因此尽快识别和减轻攻击是很重要的。传统的IOT架构有三个层,该层由最端设备组成,中间层中的控制器,以及最上层的云。任何类型的决策都是在云中完成的,因此由于延迟延迟,整个过程减慢了。我们已经采用了雾层的架构,具有足够的终端设备层上方的计算电源。我们使用了两个基于深度学习的模型。第一个长期短期内存(LSTM)模型,用于识别来自良性数据和第二卷积神经网络(CNN)模型的恶意数据,以进一步将数据分类为攻击类别。我们的LSTM模型的准确性为98%,CNN模型的准确性为86%。

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