论文标题
基于注意力的ConvlstM自动编码器,具有动态阈值,用于多元时间序列中无监督的异常检测
An Attention-based ConvLSTM Autoencoder with Dynamic Thresholding for Unsupervised Anomaly Detection in Multivariate Time Series
论文作者
论文摘要
由于智能制造中的复杂系统正在生产大量的多元时间序列数据,因此需要改进的异常检测框架来减少操作风险和对系统操作员的监视负担。但是,构建此类框架很具有挑战性,因为通常无法获得足够多的有缺陷的训练数据,并且需要框架来捕获不同时间步骤的时间和上下文依赖性,同时又对噪声进行了强大的效果。在本文中,我们提出了一个基于动态阈值(ACLAE-DT)框架的无监督卷积长短期记忆(ConvlstM)自动编码器,用于多元时间序列中的异常检测和诊断。该框架首先要预处理和丰富数据,然后构造特征图像以通过捕获时间序列对之间的相互关系来跨不同时间步骤表征系统状态。之后,将构造的特征图像馈入基于注意力的Convlstm自动编码器,该图像旨在编码构造的特征图像并捕获时间行为,然后解码压缩知识表示形式以重建特征图像输入。然后,计算重建误差并遵守基于统计的动态阈值机制,以检测和诊断异常。对现实生活制造数据进行的评估结果证明了在不同的实验环境下对最新方法的拟议方法的性能强度。
As a substantial amount of multivariate time series data is being produced by the complex systems in Smart Manufacturing, improved anomaly detection frameworks are needed to reduce the operational risks and the monitoring burden placed on the system operators. However, building such frameworks is challenging, as a sufficiently large amount of defective training data is often not available and frameworks are required to capture both the temporal and contextual dependencies across different time steps while being robust to noise. In this paper, we propose an unsupervised Attention-based Convolutional Long Short-Term Memory (ConvLSTM) Autoencoder with Dynamic Thresholding (ACLAE-DT) framework for anomaly detection and diagnosis in multivariate time series. The framework starts by pre-processing and enriching the data, before constructing feature images to characterize the system statuses across different time steps by capturing the inter-correlations between pairs of time series. Afterwards, the constructed feature images are fed into an attention-based ConvLSTM autoencoder, which aims to encode the constructed feature images and capture the temporal behavior, followed by decoding the compressed knowledge representation to reconstruct the feature images input. The reconstruction errors are then computed and subjected to a statistical-based, dynamic thresholding mechanism to detect and diagnose the anomalies. Evaluation results conducted on real-life manufacturing data demonstrate the performance strengths of the proposed approach over state-of-the-art methods under different experimental settings.