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Anomaly Detection in Vehicle-to-Infrastructure Communications

机译:车辆到基础设施通信中的异常检测

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This paper presents a neural network-based anomaly detection system for vehicular communications. The proposed system is able to detect in-vehicle data tampering in order to avoid the transmission of bogus or harmful information. We investigate the use of Long Short-term Memory (LSTM) and Multilayer Perceptron (MLP) neural networks to build two prediction models. For each model, an efficient architecture is designed based on appropriate hardware requirements. Then, a comparative performance analysis is provided to recommend the most efficient neural network model. Finally, a set of metrics are selected to show the accuracy of the proposed detection system under several types of security attacks.
机译:本文提出了一种基于神经网络的车辆通信异常检测系统。所提出的系统能够检测车载数据篡改,从而避免伪造或有害信息的传输。我们调查使用长短期记忆(LSTM)和多层感知器(MLP)神经网络来建立两个预测模型。对于每种模型,都会根据适当的硬件要求来设计有效的体系结构。然后,提供比较性能分析以推荐最有效的神经网络模型。最后,选择一组指标以显示所提出的检测系统在几种类型的安全攻击下的准确性。

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