基于机器学习的工业服务互联网DDoS攻击分类

Ghazia Qaiser, S. Chandrasekaran, R. Chai, Jinchuan Zheng
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引用次数: 1

摘要

有各种各样的研究文章提出了不同的工业物联网和工业服务互联网(IIoS)技术,用于工业4.0的创新实践。与此同时,iio的概念被认为是智能产业的关键推动者。因此,随着时间的推移,工业物联网已经演变成IIoS,它引入了服务化过程来衡量产品或服务质量。iio背后的理念是战略性地利用互联网作为平台,为不同行业的服务部门聚集新的价值。IIoS是考虑改进最终生产线的一个重要方面。然而,与此同时,互联网固有的脆弱性使其面临网络安全攻击的风险,特别是DDoS攻击。这项研究的重点是调查可能对iio产生负面影响的DDoS漏洞。该研究评估了六种机器学习算法检测DDoS攻击的能力。上述ML算法在现有文献中以数据流量分类而闻名。此外,该研究还可以帮助用户诊断潜在的DDoS威胁并优化生产线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying DDoS Attack in Industrial Internet of Services Using Machine Learning
There were various research articles proposed different IIoT and Industrial Internet of Services (IIoS) techniques for Industry 4.0 innovative practices. At the same time, the concept of IIoS is considered a critical enabler for smart industries. Therefore, IIoT has evolved over time into an IIoS, which introduces servitization processes to measure product or service quality. The idea behind IIoS is to strategically use the Internet as a platform to assemble new value for the services sector in different industries. The IIoS is a vital aspect to consider for improving the final production line. However, at the same time, the internet’s inherent vulnerability puts it at risk of cyber security attacks, particularly DDoS attacks.This research is focused on investigating DDoS vulnerabilities that can negatively impact IIoS. The study evaluates six machine learning algorithms in terms of their ability to detect DDoS attacks. The mentioned ML algorithms are renowned for data traffic classification within the existing literature. Moreover, this research can assist users in diagnosing potential DDoS threats and optimizing production lines.
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