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VGG Based Unsupervised Anomaly Detection in Multivariate Time Series

机译:基于VGG基于多变量时间序列的无监督异常检测

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Anomaly detection in time series data is a known problem, but recent growth in the number of units that can produce data require models that work on unlabelled and diverse types of data. We propose to adapt the neural network introduced by Simonyan and Zisserman in 2015 called VGG16 and used to detect and classify objects in images. We show that the VGG16 architecture with 2-dimensional convolutions replaced with 1-dimensional version could be a building block of an autoencoder approach to detect anomalies. Additionally we show that the proposed model achieves results that are similar or better than of classical anomaly detection methods.
机译:异常检测时间序列数据是已知问题,但最近可以生产数据的单位数量的增长需要在未标识和不同类型的数据上工作的模型。 我们建议在2015年在2015年称为VGG16的神经网络和Zisserman推出的神经网络,并用于检测和分类图像中的对象。 我们展示了具有二维卷积的VGG16架构,替换为1维版本,可以是检测异常的AutoEncoder方法的构建块。 此外,我们表明所提出的模型实现了类似于或优于经典异常检测方法的结果。

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