基于Gazelle优化算法的贝叶斯加权随机森林多类DDOS攻击检测分类

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
R. Barona, E. Babu Raj
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引用次数: 0

摘要

分布式拒绝服务(DDoS)攻击的增加对当前网络的安全性和稳定性构成了相当大的威胁,特别是在物联网(IoT)和云环境中。传统的检测方法往往难以在检测精度和计算效率之间取得平衡。本文提出了一种基于Gazelle优化算法优化贝叶斯加权随机森林的多类DDOS攻击检测分类方法(DDOS- ad - bwrf - goa)。首先,从CICDDoS2019数据集中收集原始数据。然后,对输入数据进行预处理,利用自适应Bitonic滤波进行归一化。预处理后的数据被提供给改进前馈长短期记忆技术,以选择增加模型执行时间的特征。选择的特征提供给贝叶斯加权随机森林(BWRF),该算法对多类DDOS攻击进行分类。一般来说,贝叶斯加权随机森林不采用任何优化方法来定义最优参数,以保证准确的DDOS识别。因此,提出了GOA算法来优化贝叶斯加权随机森林分类器。在MATLAB中实现了该方法。性能指标,如准确性,精密度,召回率,f1评分,特异性,错误率和计算时间进行评估。与现有技术(用于DDOS检测和分类的混合深度学习方法(HDL-DDOS-DC)、利用学习技术抵御DDOS攻击的边缘hetiot防御(EHD-DDOS-LT)和基于自治核心网的数字双机智能DDOS检测(DTI-DDOS-ACN))相比,本文方法的准确率分别提高了15.34%、24.1%和18.9%,准确率分别提高了12.4%、18.24%和22.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Multiclass DDOS Attack Detection Using Bayesian Weighted Random Forest Optimized With Gazelle Optimization Algorithm

The increase in Distributed Denial of Service (DDoS) attacks poses a considerable threat to the security and stability of the current network, especially in Internet of Things (IoT) and cloud environments. Traditional detection methods often struggle with the inability to achieve a balance between detection accuracy and computational efficiency. In this manuscript, the Classification of Multiclass DDOS Attack Detection using Bayesian Weighted Random Forest Optimized with Gazelle Optimization Algorithm (DDOS-AD-BWRF-GOA) is proposed. First, the raw data is gathered from the CICDDoS2019 dataset. Then, input data are preprocessed utilizing Adaptive Bitonic Filtering for normalizing the values. The preprocessed data are fed to the Improved Feed Forward Long Short-Term Memory technique for selecting features that increase the model's execution time. The selected features are supplied to the Bayesian Weighted Random Forest (BWRF), which classifies the multiclass DDOS attack. In general, Bayesian Weighted Random Forest does not adopt any optimization methods to define optimal parameters to guarantee exact DDOS identification. Hence, GOA is proposed to optimize the Bayesian Weighted Random Forest classifier. The proposed method is implemented in MATLAB. The performance metrics, such as Accuracy, Precision, Recall, F1-score, Specificity, Error rate, and Computational time are evaluated. The proposed method attains 15.34%, 24.1%, and 18.9% higher accuracy and 12.4%, 18.24%, and 22.6% higher precision when analyzed with existing techniques: Hybrid deep learning method for DDOS detection and classification (HDL-DDOS-DC), Edge-HetIoT Defense against DDoS attack utilizing learning techniques (EHD-DDOS-LT), and Digital twin-enabled intelligent DDOS detection for autonomous core networks (DTI-DDOS-ACN), respectively.

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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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