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Anomaly Detection for Non-Stationary and Non-Periodic Univariate Time Series

机译:非静止和非周期性单变量时间序列的异常检测

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摘要

This study proposes an anomaly detection method called wavelet autoencoder anomaly detection (WAAD) for non-stationary and non-periodic univariate time series. The method first applies discrete wavelet transform to time series of a sliding time window to obtain wavelet transform coefficients. It then uses an autoencoder to encode and decode (reconstruct) these coefficients. WAAD calculates the reconstruction error for every time window. An anomaly is assumed to occur for specific conditions of the errors. By five NAB datasets, the performance of WAAD is evaluated and compared with other methods to show its superiority.
机译:本研究提出了一种异常检测方法,称为小波AutoEncoder异常检测(Waad)的非静止和非周期性单变量时间序列。该方法首先将离散小波变换应用于滑动时间窗口的时间序列,以获得小波变换系数。然后,它使用AutoEncoder来编码和解码(重建)这些系数。 Waad计算每次窗口的重建错误。假设异常发生的错误的特定条件。通过五个NAB数据集,评估磨难的性能,并与其他方法进行比较,以显示其优越性。

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