利用多尺度卷积融合和记忆增强对抗式自动编码器检测多元时间序列中的各种异常现象

IF 6.6 1区 计算机科学 Q1 Multidisciplinary
Zefei Ning;Hao Miao;Zhuolun Jiang;Li Wang
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引用次数: 0

摘要

时间序列异常检测是许多应用中的一项重要任务,基于深度学习的时间序列异常检测已经取得了很大进展。然而,由于复杂的设备交互,时间序列会表现出多样的异常信号形状、微妙的异常和不平衡的异常实例,这使得时间序列异常检测仍然是一个挑战。多变量时间序列的融合与分析有助于揭示其内在的时空特征,并有助于发现复杂而微妙的异常。本文提出了一种用于多变量时间序列异常检测的新方法,名为 "多尺度卷积融合和记忆增强对抗自动编码器(MCFMAAE)"。这是一个基于编码器-解码器的框架,由四个主要部分组成。多尺度卷积融合模块融合多传感器信号,捕捉各种尺度的时间信息。基于自我注意力的编码器采用多头注意力机制进行序列建模,捕捉全局上下文信息。记忆模块用于探索正常样本的内部结构,将其捕捉到潜在空间,从而记住典型模式。最后,解码器用于重建信号,然后计算异常得分。此外,模型中还添加了一个额外的判别器,这增强了自动编码器的表示能力,避免了过拟合。在公共数据集上的实验表明,与其他最先进的方法相比,MCFMAAE 提高了性能,为多变量时间序列异常检测提供了有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Multi-Scale Convolution Fusion and Memory-Augmented Adversarial Autoencoder to Detect Diverse Anomalies in Multivariate Time Series
Time series anomaly detection is an important task in many applications, and deep learning based time series anomaly detection has made great progress. However, due to complex device interactions, time series exhibit diverse abnormal signal shapes, subtle anomalies, and imbalanced abnormal instances, which make anomaly detection in time series still a challenge. Fusion and analysis of multivariate time series can help uncover their intrinsic spatio-temporal characteristics, and contribute to the discovery of complex and subtle anomalies. In this paper, we propose a novel approach named Multi-scale Convolution Fusion and Memory-augmented Adversarial AutoEncoder (MCFMAAE) for multivariate time series anomaly detection. It is an encoder-decoder-based framework with four main components. Multi-scale convolution fusion module fuses multi-sensor signals and captures various scales of temporal information. Self-attention-based encoder adopts the multi-head attention mechanism for sequence modeling to capture global context information. Memory module is introduced to explore the internal structure of normal samples, capturing it into the latent space, and thus remembering the typical pattern. Finally, the decoder is used to reconstruct the signals, and then a process is coming to calculate the anomaly score. Moreover, an additional discriminator is added to the model, which enhances the representation ability of autoencoder and avoids overfitting. Experiments on public datasets demonstrate that MCFMAAE improves the performance compared to other state-of-the-art methods, which provides an effective solution for multivariate time series anomaly detection.
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来源期刊
Tsinghua Science and Technology
Tsinghua Science and Technology COMPUTER SCIENCE, INFORMATION SYSTEMSCOMPU-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
10.20
自引率
10.60%
发文量
2340
期刊介绍: Tsinghua Science and Technology (Tsinghua Sci Technol) started publication in 1996. It is an international academic journal sponsored by Tsinghua University and is published bimonthly. This journal aims at presenting the up-to-date scientific achievements in computer science, electronic engineering, and other IT fields. Contributions all over the world are welcome.
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