改进:基于智能机器学习的便携式、可靠和优化的未来车辆验证系统

A. S. Shreyas Madhav, A. Mohan, A. Tyagi
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引用次数: 0

摘要

过去十年的技术进步使交通领域发生了革命性的变化。自动驾驶和半自动驾驶汽车以最少的人工干预为个人交通提供便利,现已成为全球关注的焦点。该行业的数字化伴随着重大的安全挑战,包括确保可靠的传输和强大的通信网络,这对智能汽车的正常运行至关重要。负责在汽车内部架构的各个重要组件之间建立连接的CAN总线架构是入侵的主要目标。此外,还必须在车辆与智能手机等外部设备之间建立安全连接,以增强旅行体验。因此,迫切需要一个完整的自动驾驶汽车安全入侵检测框架。本文介绍了一种基于智能机器学习的便携式、可靠和优化的未来车辆验证系统(improved),旨在提供一种可行的解决方案,以抵御车辆内部网络和建立的车对设备网络上的车辆网络攻击。提出的框架本质上是双重的-初始模块侧重于通过入侵检测的机器学习建模来确保控制器局域网(CAN)的安全性。第二个模块旨在利用数据分析来检测和阻止外部/内部设备建立的网络上的恶意行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPROVE: Intelligent Machine Learning based Portable, Reliable and Optimal VErification System for Future Vehicles
The technological progress over the past decade has revolutionized the transportation domain. Autonomous and semi-autonomous vehicles have now gained the global spotlight for facilitating personal transportation with minimal manual intervention. The digitization of this industry has been accompanied by significant security challenges in terms of ensuring reliable transmission and robust communication networks which are critical for the proper functioning of the smart vehicle. The CAN bus architecture responsible to establishing connectivity within the various vital components of the car’s internal architecture is a prime target for intrusions. Secure connections must also be established between the vehicle and external devices such as smartphones for enhancing the travel experience. Hence a complete security intrusion detection framework for self-driving cars is of dire need. This article introduces an Intelligent Machine Learning based Portable, Reliable and Optimal VErification System (IMPROVE) for Future Vehicles that aims to provide a viable solution to resist vehicular cyberattacks both on the internal network of the vehicle and the vehicle to device network established. The proposed framework is twofold in nature- The initial module focusses on ensuring Controller Area Network (CAN) security through machine learning modelling for intrusion detection. The second module is oriented towards utilizing data analysis to detect and block malicious behaviour on networks established with external/internal devices.
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