云环境下使用飞蛾火焰优化和机器学习的自动拒绝服务检测

A. Thillaivanan, S. Wategaonkar, Suganthi Duraisamy, Ravi Mishra, S. Nagaraj, Kamlesh Singh
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引用次数: 0

摘要

拒绝服务(DoS)攻击检测是指阻止和检测恶意企图使网络资源或服务无法提供给目标用户的行为。DoS攻击一直是组织关注的主要问题,因为它们会干扰关键服务的可访问性并造成经济损失。在云环境中,由于基础设施的动态和分布式特性,减轻和检测此类攻击非常具有挑战性。在这方面,机器学习(ML)方法在识别DoS攻击方面具有潜力,通过使用网络流量特征来查找可能指定攻击的异常异常或范例。本研究介绍了在云环境下使用蛾焰优化与机器学习(dod - mfoml)技术的自动拒绝服务检测。DoS - mfoml技术用于识别DoS攻击,MFO算法用于特征选择,以获得改进的结果。使用极端梯度增强(XGBoost)分类器检测DoS攻击。最后,dsd - mfoml技术采用灰狼优化器(GWO)算法进行参数整定。在基准数据集上对DoSD-MFOML方法进行了性能验证,并在多个度量下对结果进行了研究。实验结果证实了DoS - mfoml技术在DoS攻击检测中的性能提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Denial of Service Detection Using Moth Flame Optimization With Machine Learning in Cloud Environment
Denial of Service (DoS) attack detection refers to preventing and detecting malicious attempts to make network resources or services unavailable to its intended users. DoS attacks is been a main concern for organizations since they can disturb the accessibility of critical services and cause economic losses. In cloud environments, the mitigation and detection of such attacks were very challenging because of the dynamic and distributed nature of infrastructure. In this regard, Machine Learning (ML) methods are potential in identifying DoS attacks, by using network traffic features to find unusual anomalies or paradigms that may specify an attack. This research work introduces an automated Denial of Service Detection using Moth Flame optimization with Machine Learning (DoSD-MFOML) technique in cloud environment. The DoSD-MFOML technique recognizes DoS attacks and the MFO algorithm is used for feature selection purposes to attain improved results. The detection of DoS attacks takes place using extreme gradient boosting (XGBoost) classifier. Finally, the DoSD-MFOML technique employs grey wolf optimizer (GWO) algorithm for the parameter tuning procedure. The performance validation of the DoSD-MFOML method is tested on benchmark dataset and the outcomes are studied under several measures. The experimental outcome confirms the increased performances of the DoSD-MFOML technique for DoS attack detection purposes.
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