Anomaly Detection in Quasi-Periodic Time Series based on Automatic Data Segmentation and Attentional LSTM-CNN (Extended Abstract)

Fan Liu, Xingshe Zhou, Jinli Cao, Zhu Wang, Tianben Wang, Hua Wang, Yanchun Zhang
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Abstract

Quasi-periodic time series (QTS) exists widely in the real world, and it is important to detect the anomalies of QTS. In this paper, we propose an automatic QTS anomaly detection framework (AQADF) consisting of a two-level clustering-based QTS segmentation algorithm (TCQSA) and a hybrid attentional LSTM-CNN model (HALCM). TCQSA first automatically splits the QTS into quasi-periods which are then classified by HALCM into normal periods or anomalies. Notably, TCQSA integrates a hierarchical clustering and the k-means technique, making itself highly universal and noise-resistant. HALCM hybridizes LSTM and CNN to simultaneously extract the overall variation trends and local features of QTS for modeling its fluctuation pattern. Furthermore, we embed a trend attention gate (TAG) into the LSTM, a feature attention mechanism (FAM) and a location attention mechanism (LAM) into the CNN to finely tune the extracted variation trends and local features according to their true importance to yield a better representation of the fluctuation pattern of the QTS. On four public datasets, HALCM exceeds four state-of-the-art baselines and obtains at least 97.3% accuracy, TCQSA exceeds two cutting-edge QTS segmentation algorithms and can be applied to different types of QTSs.
基于自动数据分割和注意力LSTM-CNN的准周期时间序列异常检测(扩展摘要)
准周期时间序列在现实世界中广泛存在,对其异常的检测具有重要意义。本文提出了一种QTS自动异常检测框架(AQADF),该框架由基于两级聚类的QTS分割算法(TCQSA)和混合注意LSTM-CNN模型(HALCM)组成。TCQSA首先自动将QTS划分为准周期,然后由HALCM分类为正常周期或异常周期。值得注意的是,TCQSA集成了分层聚类和k-means技术,使其具有高度通用性和抗噪声性。HALCM将LSTM和CNN杂交,同时提取QTS的整体变化趋势和局部特征,对其波动模式进行建模。此外,我们在LSTM中嵌入趋势注意门(TAG),在CNN中嵌入特征注意机制(FAM)和位置注意机制(LAM),根据提取的变化趋势和局部特征的真实重要性对其进行微调,从而更好地表征QTS的波动模式。在4个公开数据集上,HALCM超过了4个最先进的基线,获得了至少97.3%的准确率,TCQSA超过了2个最先进的QTS分割算法,可以应用于不同类型的QTS。
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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