基于深度学习的软件定义网络控制器DDoS攻击检测方法

Amran Mansoor, Mohammed Anbar, A. A. Bahashwan, Basim Ahmad Alabsi, S. Rihan
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引用次数: 0

摘要

云计算的快速发展导致了软件定义网络(SDN)的发展,这是一种提供动态管理和提高性能的网络策略。然而,安全威胁日益受到关注,特别是SDN控制器成为恶意行为者和潜在的分布式拒绝服务(DDoS)攻击的有吸引力的目标。许多研究人员提出了检测DDoS攻击的不同方法。然而,这些方法存在高误报,导致准确率低,其背后的主要原因是使用了不合格的特征和不真实的数据集。因此,可以利用深度学习(DL)算法技术检测针对SDN控制器的DDoS攻击。此外,所提出的方法包括三个阶段,(1)数据预处理,(2)交叉特征选择,旨在识别DDoS检测的重要特征,以及(3)使用递归神经网络(rnn)模型进行检测。使用基准数据集通过标准评估指标(包括假阳性率和检测准确率)对所提出的方法进行评估。结果表明:推荐的方法能够有效检测DDoS攻击,平均检测准确率为94.186%,平均检测精度为92.146%,平均FPR为8.114%,平均F1-measure为94.276%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-Based Approach for Detecting DDoS Attack on Software-Defined Networking Controller
The rapid growth of cloud computing has led to the development of the Software-Defined Network (SDN), which is a network strategy that offers dynamic management and improved performance. However, security threats are a growing concern, particularly with the SDN controller becoming an attractive target for malicious actors and potential Distributed Denial of Service (DDoS) attacks. Many researchers have proposed different approaches to detecting DDoS attacks. However, those approaches suffer from high false positives, leading to low accuracy, and the main reason behind this is the use of non-qualified features and non-realistic datasets. Therefore, the deep learning (DL) algorithmic technique can be utilized to detect DDoS attacks on SDN controllers. Moreover, the proposed approach involves three stages, (1) data preprocessing, (2) cross-feature selection, which aims to identify important features for DDoS detection, and (3) detection using the Recurrent Neural Networks (RNNs) model. A benchmark dataset is employed to evaluate the proposed approach via standard evaluation metrics, including false positive rate and detection accuracy. The findings indicate that the recommended approach effectively detects DDoS attacks with average detection accuracy, average precision, average FPR, and average F1-measure of 94.186 %, 92.146%, 8.114%, and 94.276%, respectively.
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