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Abnormal Bus Data Detection of Intelligent and Connected Vehicle Based on Neural Network

机译:基于神经网络的智能和连接车辆的异常总线数据检测

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In the paper, our research of abnormal bus data analysis of intelligent and connected vehicle aims to detect the abnormal data rapidly and accurately generated by the hackers who send malicious commands to attack vehicles through three patterns, including remote non-contact, short-range non-contact and contact. The research routine is as follows: Take the bus data of 10 different brands of intelligent and connected vehicles through the real vehicle experiments as the research foundation, set up the optimized neural network, collect 1000 sets of the normal bus data of 15 kinds of driving scenarios and the other 300 groups covering the abnormal bus data generated by attacking the three systems which are most common in the intelligent and connected vehicles as the training set. In the end after repeated amendments, with 0.5 seconds per detection, the intrusion detection system has been attained in which for the controlling system the abnormal bus data is detected at the accuracy rate of 96% and the normal data is detected at the accuracy rate of 90%, for the body system the abnormal one is 87% and the normal one is 80%, for the entertainment system the abnormal one is 80% and the normal one is 65%.
机译:在本文中,我们对智能和连接的车辆的异常总线数据分析的研究旨在通过三种模式发送恶意命令的黑客快速准确地检测异常数据,包括攻击车辆,包括远程非接触,短程 - 联系并联系。研究程序如下:通过真正的车辆实验乘坐10种不同品牌的智能和连通车辆的总线数据作为研究基础,建立了优化的神经网络,收集1000套的正常总线数据15种驾驶场景和其他300组覆盖通过攻击智能和连接车辆中最常见的三个系统生成的异常总线数据作为培训集。最后在重复修改后,每次检测0.5秒后,已经实现了入侵检测系统,其中用于控制系统,以96%的精度率检测到异常总线数据,并以精度率检测到正常数据90%,对于身体系统的异常是87%,正常的一个是80%,对于娱乐系统,异常是80%,正常的一个是65%。

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