Unsupervised Deep Anomaly Detection for Industrial Multivariate Time Series Data

被引:10
作者
Liu, Wenqiang [1 ]
Yan, Li [2 ]
Ma, Ningning [1 ]
Wang, Gaozhou [2 ]
Ma, Xiaolong [1 ]
Liu, Peishun [1 ]
Tang, Ruichun [1 ]
机构
[1] Ocean Univ China, Fac Informat Sci & Engn, Qingdao 266100, Peoples R China
[2] State Grid Shandong Elect Power Co, Informat & Telecommun Co, Jinan 250013, Peoples R China
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 02期
关键词
deep learning; anomaly detection; convolutional autoencoder; attention mechanism; unsupervised learning; NOVELTY DETECTION; WEB;
D O I
10.3390/app14020774
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
With the rapid development of deep learning, researchers are actively exploring its applications in the field of industrial anomaly detection. Deep learning methods differ significantly from traditional mathematical modeling approaches, eliminating the need for intricate mathematical derivations and offering greater flexibility. Deep learning technologies have demonstrated outstanding performance in anomaly detection problems and gained widespread recognition. However, when dealing with multivariate data anomaly detection problems, deep learning faces challenges such as large-scale data annotation and handling relationships between complex data variables. To address these challenges, this study proposes an innovative and lightweight deep learning model-the Attention-Based Deep Convolutional Autoencoding Prediction Network (AT-DCAEP). The model consists of a characterization network based on convolutional autoencoders and a prediction network based on attention mechanisms. The AT-DCAEP exhibits excellent performance in multivariate time series data anomaly detection without the need for pre-labeling large-scale datasets, making it an efficient unsupervised anomaly detection method. We extensively tested the performance of AT-DCAEP on six publicly available datasets, and the results show that compared to current state-of-the-art methods, AT-DCAEP demonstrates superior performance, achieving the optimal balance between anomaly detection performance and computational cost.
引用
收藏
页数:20
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