基于自编码器的复杂系统时间序列数据异常检测

Xundong Gong, Shibo Liao, Fei Hu, Xiaoqing Hu, Chunshan Liu
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引用次数: 0

摘要

本文提出了一种针对复杂系统(如电网和蜂窝网络)中时间序列数据的异常检测方法。所提出的异常检测方法是在无监督学习的基础上发展起来的,其中基于门控循环单元(GRU-AE)的自动编码器被训练来重建感兴趣的时间序列,并通过检测异常大的重建误差来检测异常。采用多时间戳叠加的方法减少了GRU-AE的时间步数,方便了模型的训练,并提出了一种新的随机变换训练方案,防止过拟合。提出的基于GRU-AE的探测器在多个时间尺度上用于检测不同类型的异常。实际蜂窝网络时间序列数据的数值结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autoencoder-Based Anomaly Detection for Time Series Data in Complex Systems
In this paper, we present a new anomaly detection method for time-series data in complex systems such as power grid and cellular networks. The proposed anomaly detection method is developed following unsupervised learning, where an AutoEncoder based on Gated Recurrent Units (GRU-AE) is trained to reconstruct a time-series of interest, and anomalies are detected via detecting exceptionally large reconstruction errors. A multi-timestamp stacking method is adopted to reduce the number of time steps in the GRU-AE to facilitate the training of the model and a new training scheme with random shuffling is proposed to prevent overfitting. The proposed GRU-AE based detector is applied in multiple time scales to detect different types of anomalies. Numerical results obtained via time-series data from real cellular network demonstrate the performance of the proposed method.
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