Anomaly Detection of Periodic Multivariate Time Series under High Acquisition Frequency Scene in IoT

Shuo Zhang, Xiaofei Chen, Jiayuan Chen, Qiao Jiang, Hejiao Huang
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引用次数: 7

Abstract

Anomaly Detection of Multivariate Time Series is an intensive research topic in data mining, especially with the rise of Industry 4.0. However, few existing approaches are taken under high acquisition scene, and only a minority of them took periodicity of time series into consideration. In this paper, we propose a novel network Dual-window RNN-CNN to detect periodic time series anomalies of high acquisition frequency scene in IoT. We first apply Dual-window to segment time series according to the periodicity of data and solve the time alignment problem. Then we utilize Multi-head GRU to compress the data volume and extract temporal features sensor by sensor, which not only solves the problems caused by high acquisition but also adds more flexible transfer ability to our network. In order to improve the robustness of our network in different periodic scenes of IoT, three different kinds of GRU mode are put forward. Finally we use CNN-based Autoencoder to locate anomalies according to both temporal and spatial dependencies. It should also be note that Multi-head GRU broadens the receptive field of CNN-based Autoencoder. Two parts of experiment were carried to verify the validity of Dual-Window RNN-CNN. The first part is conducted on UCR/UEA benchmark to discuss the performance of Dual-Window RNN-CNN under different structures and hyper parameters, for datasets in UCR/UAE benchmark contain enough timestamps to monitor the high acquisition and periodicity in IoT. The second part is conducted on Yahoo Webscope benchmark and NAB to compare our network with other classic time series anomaly detection approaches. Experiment results confirm that our Dual-Window RNN-CNN outperforms other approaches in anomaly detection of periodic multivariate time series, demonstrating the advantages of our network in high acquisition scene.
物联网高采集频率场景下周期多元时间序列异常检测
随着工业4.0的兴起,多变量时间序列异常检测是数据挖掘领域的一个热点研究课题。然而,现有的方法很少考虑高采集场景,而且只有少数方法考虑了时间序列的周期性。在本文中,我们提出了一种新的双窗口RNN-CNN网络来检测物联网中高采集频率场景的周期性时间序列异常。首先根据数据的周期性,应用双窗口对时间序列进行分割,解决时间对齐问题。然后利用Multi-head GRU压缩数据量,逐个传感器提取时间特征,既解决了高采集带来的问题,又使网络具有更灵活的传输能力。为了提高网络在物联网不同周期场景下的鲁棒性,提出了三种不同的GRU模式。最后利用基于cnn的自编码器根据时间和空间依赖关系定位异常。值得注意的是,多头GRU拓宽了基于cnn的自编码器的接受域。通过两部分实验验证了双窗口RNN-CNN的有效性。第一部分是在UCR/UEA基准测试上进行的,讨论了双窗口RNN-CNN在不同结构和超参数下的性能,因为UCR/UAE基准测试中的数据集包含足够的时间戳来监控物联网中的高采集和周期性。第二部分在Yahoo Webscope基准测试和NAB上进行,将我们的网络与其他经典的时间序列异常检测方法进行比较。实验结果证实,我们的双窗口RNN-CNN在周期性多元时间序列异常检测方面优于其他方法,证明了我们的网络在高采集场景下的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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