Multivariate Time Series Anomaly Detection
Multivariate time series anomaly detection aims to identify unusual patterns in data streams with multiple interconnected variables, improving system monitoring and predictive maintenance. Current research emphasizes developing efficient and accurate algorithms, focusing on deep learning architectures like graph neural networks, transformers, and autoencoders, often incorporating techniques like contrastive learning and diffusion models to handle complex dependencies and noise. This field is crucial for various applications, from industrial process monitoring and cybersecurity to financial fraud detection, with ongoing efforts to improve model interpretability, robustness to missing data, and real-time performance.
Papers
Interdependency Matters: Graph Alignment for Multivariate Time Series Anomaly Detection
Yuanyi Wang, Haifeng Sun, Chengsen Wang, Mengde Zhu, Jingyu Wang, Wei Tang, Qi Qi, Zirui Zhuang, Jianxin Liao
Convolutional Neural Network Design and Evaluation for Real-Time Multivariate Time Series Fault Detection in Spacecraft Attitude Sensors
Riccardo Gallon, Fabian Schiemenz, Alessandra Menicucci, Eberhard Gill