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Security Risk Assessment for Connected Vehicles Based on Back Propagation Neural Network

机译:基于BP神经网络的互联车辆安全风险评估。

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The wide application of information communication technology makes connected vehicles (CV) more vulnerable to be attacked. The communication systems and key nodes of CVs, e.g., electronic control units, controller area network (CAN), in-vehicle infotainment system, will face various threats such as eavesdropping, tampering, and counterfeiting. Cyber security of vehicles should be paid more attention because it involves drivers' safety and public traffic security. It is impossible to deal with all kinds of security threats for the effect of performance, compatibility, cost, and efficiency of vehicles. Therefore, it is necessary to assess the security risk of CVs. This paper proposes a security risk assessment method based on the conventional security risk analysis model and utilized back propagation (BP) neural network. The simulation results show that the risk level of CVs can be evaluated quantitatively by trained neural networks, and the method is convenience and applicability for security risk assessment of vehicles.
机译:信息通信技术的广泛应用使联网车辆(CV)更容易受到攻击。 CV的通信系统和关键节点,例如电子控制单元,控制器局域网(CAN),车载信息娱乐系统,将面临各种威胁,例如窃听,篡改和伪造。车辆的网络安全应引起重视,因为它涉及驾驶员的安全和公共交通安全。由于车辆的性能,兼容性,成本和效率的影响,不可能应对各种安全威胁。因此,有必要评估CV的安全风险。提出了一种基于常规安全风险分析模型并利用BP神经网络的安全风险评估方法。仿真结果表明,可通过训练后的神经网络对CV的风险水平进行定量评估,该方法简便易行,适用于车辆的安全风险评估。

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