Multi-Head CNN-RNN for Multi-Time Series Anomaly Detection: An industrial case study
Metadatos
Mostrar el registro completo del ítemEditorial
Elsevier
Materia
Deep Learning Anomaly detection Convolutional neural networks
Fecha
2019-10Referencia bibliográfica
Publisher version: Canizo, M.; Triguero Velázquez, I.; Conde, A. y Onieva, E. (2019). Multi-Head CNN-RNN for Multi-Time Series Anomaly Detection: An industrial case study. Neurocomputing Volume 363, 21 October 2019, Pages 246-260. https://doi.org/10.1016/j.neucom.2019.07.034
Patrocinador
Basque Government, Elkartek program, TEKINTZE project, No. KK-2018/00104Resumen
Detecting anomalies in time series data is becoming mainstream in a wide variety of industrial applications in which sensors monitor expensive machinery. The complexity of this task increases when multiple heterogeneous sensors provide information of different nature, scales and frequencies from the same machine. Traditionally, machine learning techniques require a separate data pre-processing before training, which tends to be very time-consuming and often requires domain knowledge. Recent deep learning approaches have shown to perform well on raw time series data, eliminating the need for pre-processing. In this work, we propose a deep learning based approach for supervised multi-time series anomaly detection that combines a Convolutional Neural Network (CNN) and a Recurrent Neural Network (RNN) in different ways. Unlike other approaches, we use independent CNNs, so-called convolutional heads, to deal with anomaly detection in multi-sensor systems. We address each sensor individually avoiding the need for data pre-processing and allowing for a more tailored architecture for each type of sensor. We refer to this architecture as Multi-head CNN–RNN. The proposed architecture is assessed against a real industrial case study, provided by an industrial partner, where a service elevator is monitored. Within this case study, three type of anomalies are considered: point, context-specific, and collective.The experimental results show that the proposed architecture is suitable for multi-time series anomaly detection as it obtained promising results on the real industrial scenario





