利用剪枝深度集合学习检测物联网网络中的 DDoS 攻击

Makhduma F. Saiyedand;Irfan Al-Anbagi
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引用次数: 0

摘要

物联网(IoT)设备的激增使其更容易受到分布式拒绝服务(DDoS)攻击。DDoS 攻击已演变成复杂的多载体威胁,采用大流量和小流量攻击策略,给使用传统方法进行检测带来了挑战。这些挑战凸显了可靠的检测和预防措施的重要性。本文介绍了一种新颖的带剪枝功能的深度集合学习(DEEPShield)系统,可在资源受限的环境中高效地检测大流量和小流量 DDoS 攻击。DEEPShield 系统通过将卷积神经网络(CNN)和长短期记忆(LSTM)网络与网络流量分析系统集成在一起,使用了集合学习技术。该系统可分析和预处理网络流量,同时不依赖数据,因此检测准确率很高。此外,DEEPShield 系统还应用单元剪枝来完善集合模型,在保持准确性和计算效率之间平衡的同时,优化这些模型,以便在边缘设备上部署。由于缺乏针对大流量和小流量 DDoS 攻击的详细数据集,本文还引入了一个名为 HL-IoT 的数据集,其中包括这两种攻击类型。此外,在各种负载场景和网络流量负载下对 DEEPShield 系统进行的测试平台评估展示了其有效性和鲁棒性。在各种数据集(包括 HL-IoT、ToN-IoT、CICIDS-17 和 ISCX-12)上,与最先进的深度集合和深度学习方法相比,DEEPShield 系统对两种 DDoS 攻击类型的准确率始终保持在 90% 以上。此外,DEEPShield 系统在降低内存和处理要求的情况下实现了这一性能,凸显了其对边缘计算场景的适应性。
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Deep Ensemble Learning With Pruning for DDoS Attack Detection in IoT Networks
The upsurge of Internet of Things (IoT) devices has increased their vulnerability to Distributed Denial of Service (DDoS) attacks. DDoS attacks have evolved into complex multi-vector threats that high-volume and low-volume attack strategies, posing challenges for detection using traditional methods. These challenges highlight the importance of reliable detection and prevention measures. This paper introduces a novel Deep Ensemble learning with Pruning (DEEPShield) system, to efficiently detect both high- and low-volume DDoS attacks in resource-constrained environments. The DEEPShield system uses ensemble learning by integrating a Convolutional Neural Network (CNN) and a Long Short-Term Memory (LSTM) network with a network traffic analysis system. This system analyzes and preprocesses network traffic while being data-agnostic, resulting in high detection accuracy. In addition, the DEEPShield system applies unit pruning to refine ensemble models, optimizing them for deployment on edge devices while maintaining a balance between accuracy and computational efficiency. To address the lack of a detailed dataset for high- and low-volume DDoS attacks, this paper also introduces a dataset named HL-IoT, which includes both attack types. Furthermore, the testbed evaluation of the DEEPShield system under various load scenarios and network traffic loads showcases its effectiveness and robustness. Compared to the state-of-the-art deep ensembles and deep learning methods across various datasets, including HL-IoT, ToN-IoT, CICIDS-17, and ISCX-12, the DEEPShield system consistently achieves an accuracy over 90% for both DDoS attack types. Furthermore, the DEEPShield system achieves this performance with reduced memory and processing requirements, underscoring its adaptability for edge computing scenarios.
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