As large-scale time-series data can easily be found in real-world applications, multivariate time-series anomaly detection has played an essential role in diverse industries. It enables productivity improvement and maintenance cost reduction by preventing malfunctions and detecting anomalies based on time-series data. However, multivariate time-series anomaly detection is challenging because real-world time-series data exhibit complex temporal dependencies. For this task, it is crucial to learn a rich representation that effectively contains the nonlinear temporal dynamics of normal behavior. In this study, we propose an unsupervised multivariate time-series anomaly detection model named RAE-MEPC which learns informative normal representations based on multi-resolution ensemble and predictive coding. We introduce multi-resolution ensemble encoding to capture the multi-scale dependency from the input time series. The encoder hierarchically aggregates the temporal features extracted from the sub-encoders with different encoding lengths. From these encoded features, the reconstruction decoder reconstructs the input time series based on multi-resolution ensemble decoding where lower-resolution information helps to decode sub-decoders with higher-resolution outputs. Predictive coding is further introduced to encourage the model to learn the temporal dependencies of the time series. Experiments on real-world benchmark datasets show that the proposed model outperforms the benchmark models for multivariate time-series anomaly detection.
翻译:由于在现实世界应用中可以很容易地找到大规模的时间序列数据,多变时间序列异常现象的探测在不同行业中发挥了不可或缺的作用。通过防止故障和根据时间序列数据发现异常现象,可以提高生产率和降低维护成本。然而,由于现实世界时间序列数据显示出复杂的时间依赖性,多变时间序列异常现象的探测具有挑战性。对于这项任务,至关重要的是要学习一个丰富的代表,其中有效地包含正常行为的非线性时间动态。在本研究中,我们提议一个名为 RAE-MEPC 的多变时间序列异常现象探测模型,该模型能够通过多解析共和预测编码来学习信息性正常表示。我们引入了多解调共识编码的编码异常序列编码,以捕捉投入时间序列中多尺度的依赖性。对于从子编码序列中提取的时间特征的分级汇总,至关重要。从这些模型中,重建解码解码元序列重建了基于多解码的多解算性时间序列的输入时间序列,在多解析共解码解码式解码式解码式解码的基础上,低分辨率信息有助于解码的解算模型的解码性缩缩缩缩缩缩缩缩数据。