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在物联网环境中利用基于深度学习的最优特征剪枝进行分布式拒绝服务(DDoS)网络攻击检测。

Harnessing feature pruning with optimal deep learning based DDoS cyberattack detection on IoT environment.

作者信息

Yang Eunmok, Jeong Sooyong, Seo Changho

机构信息

Department of Financial Information Security, Kookmin University, Seoul, 02707, South Korea.

Department of Convergence Science, Kongju National University, Gongju, 32588, South Korea.

出版信息

Sci Rep. 2025 May 20;15(1):17516. doi: 10.1038/s41598-025-02152-2.

Abstract

The swift development of the Internet of Things (IoT) devices has created a pressing need for effective cybersecurity measures. They are vulnerable to different cyber threats that can compromise the functionality and security of urban systems. Distributed Denial of Service (DDoS) attacks are among IoT networks' most challenging and destructive cyber threats. With the rapid growth in IoT devices and users, the vulnerability of IoT devices to such attacks has enhanced significantly, making DDoS attacks a predominant threat. This work introduces several approaches for effectively detecting IoT-based DDoS threats. Classical machine learning (ML) techniques mostly face difficulty in managing real-world traffic characteristics effectually, making them less appropriate for detecting DDoS attacks. In contrast, Artificial Intelligence (AI)-based methods have proven more effective in detecting cyber-attacks than conventional approaches. This manuscript proposes an effective Feature Pruning with Optimal Deep Learning-based DDoS Attack Detection (FPODL-DDoSAD) technique in the IoT framework. The FPODL-DDoSAD technique initially uses a min-max scalar for the data scaling into the standard layout. Besides, the feature pruning process is performed using an improved pelican optimization algorithm (IPOA), which enables the choice of an optimal subset of features. Meanwhile, DDoS attacks are recognized using a sparse denoising autoencoder (SDAE) model. Furthermore, the parameter tuning of the SDAE classifier is accomplished by utilizing the Fish Migration Optimizer (FMO) technique. The experimental values of the FPODL-DDoSAD approach are assessed on the benchmark BoT-IoT dataset. The comparison study of the FPODL-DDoSAD method demonstrates a superior accuracy value of 99.80% over existing techniques.

摘要

物联网(IoT)设备的迅速发展产生了对有效网络安全措施的迫切需求。它们容易受到不同的网络威胁,这些威胁可能会损害城市系统的功能和安全性。分布式拒绝服务(DDoS)攻击是物联网网络面临的最具挑战性和破坏性的网络威胁之一。随着物联网设备和用户的快速增长,物联网设备对此类攻击的脆弱性显著增强,使得DDoS攻击成为主要威胁。这项工作介绍了几种有效检测基于物联网的DDoS威胁的方法。经典机器学习(ML)技术在有效管理现实世界流量特征方面大多面临困难,使其不太适合检测DDoS攻击。相比之下,基于人工智能(AI)的方法在检测网络攻击方面已被证明比传统方法更有效。本文提出了一种在物联网框架中基于最优深度学习的有效特征剪枝DDoS攻击检测(FPODL-DDoSAD)技术。FPODL-DDoSAD技术最初使用最小-最大标量将数据缩放到标准布局。此外,特征剪枝过程使用改进的鹈鹕优化算法(IPOA)执行,这使得能够选择最优的特征子集。同时,使用稀疏去噪自动编码器(SDAE)模型识别DDoS攻击。此外,SDAE分类器的参数调整通过利用鱼群迁移优化器(FMO)技术来完成。FPODL-DDoSAD方法的实验值在基准BoT-IoT数据集上进行评估。FPODL-DDoSAD方法的比较研究表明,与现有技术相比,其准确率高达99.80%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5678/12092571/396a5c9c1807/41598_2025_2152_Fig1_HTML.jpg

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