使用基于机器学习的网络安全的自主网络服务

Q2 Engineering
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引用次数: 0

摘要

本研究涵盖了保护自动驾驶车辆中的控制器区域网络(CAN)总线系统免受网络攻击的关键主题。随着车辆日益自动化和互联化,CAN系统遭受网络攻击的风险和后果大幅上升,从而产生安全和安保隐患。为了识别异常情况并将流量分类为攻击或常规类别,该研究着眼于CAN总线的弱点,并建议使用决策树、聚类和深度学习等机器学习技术。为了改进CAN系统中异常和网络攻击的检测,建议的方法将数据平衡、特征选择和集成学习与基于投票的策略相结合。准确度、精密度、召回率、f1分数和混淆矩阵等指标可用于评估所提出的方法。根据研究结果,这些建议的解决方案为识别CAN系统中的网络攻击和异常提供了一种更可靠、更有效的方法,从而促进了自动驾驶汽车网络安全的发展。在概述信息安全的必要性和自动驾驶汽车的优势的同时,它还提出了加强其安全性的尖端方法。总的来说,本文强调了改进自动驾驶汽车安全措施的迫切需要,因为网络攻击对这些车辆的安全功能构成了严重威胁。该研究通过提出识别异常和网络攻击的尖端方法,提出了提高自动驾驶汽车CAN总线系统安全性的潜在方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous network services using machine learning-based cybersecurity
The crucial topic of protecting Controller Area Network (CAN) bus systems in autonomous vehicles against cyberattacks is covered in this research. The risk and consequences of cyberattacks on CAN systems rise considerably as vehicles become increasingly automated and linked, creating safety and security hazards. In order to identify anomalies and categorize traffic into attack or conventional categories, the study looks at the weaknesses of CAN buses and recommends using machine learning techniques like Decision Trees, Clustering, and Deep Learning. To improve the detection of anomalies and cyber-attacks in CAN systems, the suggested methods combine data balance, feature selection, and ensemble learning with a voting-based strategy. Metrics like accuracy, precision, recall, F1-score, and confusion matrix can be used to assess the presented approaches. According to the study's findings, these suggested solutions provide a more reliable and efficient way to identify cyber-attacks and anomalies in CAN systems, boosting the development of cyber security for autonomous vehicles. While outlining the necessity of information security and the advantages of autonomous vehicles, it also suggests cutting-edge ways to strengthen their security. Overall, this article highlights the urgent need for improved security measures in autonomous cars since cyberattacks pose a serious threat to the functioning of these vehicles in a safe and secure manner. The study proposes a potential approach to enhancing the security of CAN bus systems in autonomous vehicles by suggesting cutting-edge approaches for identifying anomalies and cyber-attacks.
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