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A Machine Learning Approach for Combating Cyber Attacks in Self-Driving Vehicles

机译:一种机器学习方法,用于打击自动驾驶车辆的网络攻击

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Self-driving vehicles are very susceptible to cyber attacks. This paper aims to utilize a machine learning approach in combating cyber attacks on self-driving vehicles. We focus on detecting incorrect data that are injected into the data bus of vehicles. We will utilize the extreme gradient boosting approach, as a promising example of machine learning, to classify such incorrect information. We will discuss in details the research methodology, which includes acquiring the driving data, preprocessing it, artificially inserting incorrect information, and finally classifying it. Our results show that the considered algorithm achieve accuracy of up to 92% in detecting the abnormal behavior on the car data bus.
机译:自动驾驶车辆非常易于网络攻击。 本文旨在利用机器学习方法,在打击自动驾驶车辆上的网络攻击。 我们专注于检测注入车辆数据总线的错误数据。 我们将利用极端梯度升压方法,作为机器学习的有希望的例子,以分类此类不正确的信息。 我们将详细讨论研究方法,包括获取驱动数据,预处理它,人工插入错误的信息,最后分类它。 我们的结果表明,考虑的算法在检测到汽车数据总线上的异常行为时,达到高达92%的准确性。

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