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Self-Supervised Anomaly Detection for In-Vehicle Network Using Noised Pseudo Normal Data

机译:使用中断伪常规数据的车载网络自我监督的异常检测

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摘要

As the risk of cyber and safety threats to vehicle systems has increased, the anomaly detection in in-vehicle networks (IVN) has received the attention of researchers. Although, machine-learning-based anomaly detection methods have been proposed, there are limitations in detecting unknown attacks that the model has not learned because general supervised learning-based approaches depend on training dataset. To solve this problem, we propose a novel self-supervised method for IVN anomaly detection using noised pseudo normal data. The proposed method consists of two deep-learning models of the generator and the detector, which generates noised pseudo normal data and detects anomalies, respectively. Firstly, the generator is trained with only normal network traffic to generate pseudo normal traffic data. Then, the anomaly detector is trained to classify normal traffic and noised pseudo normal traffic as normal and abnormal, respectively. The experimental results demonstrate that the anomaly detection models, trained with the proposed method, not only significantly improved in the detection of unknown attacks, but also outperformed other semi-supervised learning-based methods.
机译:由于网络和安全威胁对车辆系统的风险增加,车载网络(IVN)的异常检测得到了研究人员的注意。虽然已经提出了基于机器学习的异常检测方法,但是检测模型尚未学习的未知攻击存在局限性,因为一般监督的基于学习的方法取决于训练数据集。为了解决这个问题,我们提出了一种使用所述伪正常数据的IVN异常检测的新型自我监督方法。所提出的方法包括发电机和检测器的两个深学习模型,其分别产生了发出的伪正常数据并分别检测异常。首先,发电机训练,只有正常的网络流量训练以产生伪正常流量数据。然后,培训异常检测器以分别将正常流量分类,并分别发出正常和异常的伪正常流量。实验结果表明,随着所提出的方法训练的异常检测模型,在检测到未知攻击时不仅显着提高,而且表现出其他基于半监督的学习的方法。

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