An AI Based IDS Framework For Detecting DDoS Attacks In Cloud Environment

S. Asha Varma, K. Ganesh Reddy
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Abstract

ABSTRACTCloud computing makes it easier for users to access resources from anywhere at any time. This is for as long as they have access to the internet connectivity by employing a “pay-as-you-use” model. Despite its merits, cloud computing faces shortcomings, notably the escalating security concerns linked with it. Distributed Denial of Service (DDoS) attack is a primary and biggest concert to the availability of the services offered by cloud. DDoS attacks use numerous machines to flood consumers with packets with high data overhead, flooding the network with unwanted traffic. Due to the obsolete datasets, many deep learning (DL) models are processing-intensive or may not successfully address new DDoS threats. This paper seeks to address this issue by proposing FEwDN, an AI-based DDoS detection framework that employs a hybrid approach, integrating machine learning and deep learning algorithms. The framework optimizes feature selection via ensemble techniques, enhancing accuracy by leveraging deep neural networks for traffic classification. The proposed framework is experimented on the CICDDoS2019 dataset and demonstrates superior performance over benchmark techniques across multiple metrics. The FEwDN outperforms well with other models against various performance metrics. This research strengthens cloud security and DDoS detection in modern clouds.KEYWORDS: Cloud computingDDoS attacksdeep learning techniquesmachine learning Disclosure statementNo potential conflict of interest was reported by the authors.
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基于AI的云环境下DDoS攻击检测IDS框架
摘要云计算使用户可以更方便地随时随地访问资源。只要他们采用“按需付费”模式接入互联网,就可以享受这种服务。尽管有其优点,云计算也面临着缺点,尤其是与之相关的安全问题。分布式拒绝服务(DDoS)攻击是对云提供的服务可用性的主要和最大的威胁。DDoS攻击使用大量机器向消费者发送具有高数据开销的数据包,使网络充斥不必要的流量。由于过时的数据集,许多深度学习(DL)模型都是处理密集型的,或者可能无法成功应对新的DDoS威胁。本文试图通过提出FEwDN来解决这个问题,FEwDN是一种基于人工智能的DDoS检测框架,采用混合方法,集成了机器学习和深度学习算法。该框架通过集成技术优化特征选择,通过利用深度神经网络进行流量分类来提高准确性。所提出的框架在CICDDoS2019数据集上进行了实验,并在多个指标上证明了优于基准技术的性能。FEwDN在各种性能指标上优于其他模型。本研究加强了现代云中的云安全和DDoS检测。关键词:云计算ddos攻击深度学习技术机器学习披露声明作者未报告潜在利益冲突。
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