在云服务器中使用网络安全深度模型缓解攻击

Ramesh Babu P, P. Anitha, Wakgari Dibaba, R. Boddu
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引用次数: 0

摘要

在世界各地,过时的云正在迅速升级到目前正在安装的现代云。云计算带来了许多潜在的好处,但它也不是没有任何潜在的缺点。保护云免受恶意网络活动是一项极其重要的课题。最具挑战性的方面是管理如此庞大的网络,因为数以百万计的传感器不断地在其中发送和接收数据包。在模型中引入卷积神经网络,实现了对网络钓鱼和应用层DDoS攻击的识别。研究结果提供了证据,表明所提出的模型在确定是否存在网络钓鱼企图方面是有效的。调查结果充分表明,建议的策略可以用于以分散的方式识别攻击。与LSTM和SAE等现有方法相比,本文提出的方法具有更高的精度。
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Mitigation of Attacks Using Cybersecurity Deep Models in Cloud Servers
All throughout the world, the outdated cloud is being rapidly upgraded to the modern cloud that is currently being installed. A cloud comes with a number of potential benefits, yet it is not devoid of any potential downsides. The protection of the cloud from malicious cyber activity is an extremely important subject. The most challenging aspect is managing such a huge network because millions of sensors are constantly sending and receiving data packets over it. A convolutional neural network is incorporated into the model so that it can recognize phishing and application-layer DDoS attacks. The findings of the research provide evidence that the proposed model is effective in determining whether phishing attempts are being made. The findings make it abundantly evident that the strategy that was suggested can be utilized to identify attacks in a decentralized manner. The proposed methods achieve more amount of accuracy than the existing methods like LSTM and SAE.
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