A Novel Unsupervised Graph Wavelet Autoencoder for Mechanical System Fault Detection
Tianfu Li, Chuang Sun, Ruqiang Yan, Xuefeng Chen

TL;DR
This paper introduces a new unsupervised graph wavelet autoencoder architecture for fault detection in mechanical systems, leveraging multiscale feature extraction to improve detection accuracy over existing methods.
Contribution
The paper proposes the first graph wavelet autoencoder and variational autoencoder models that enhance multiscale feature extraction for fault detection in mechanical systems.
Findings
Improved fault detection accuracy by 3-4% over existing methods.
Effective multiscale feature extraction via spectral graph wavelet transform.
Successful application on datasets from fuel control systems and acoustic monitoring.
Abstract
Reliable fault detection is an essential requirement for safe and efficient operation of complex mechanical systems in various industrial applications. Despite the abundance of existing approaches and the maturity of the fault detection research field, the interdependencies between condition monitoring data have often been overlooked. Recently, graph neural networks have been proposed as a solution for learning the interdependencies among data, and the graph autoencoder (GAE) architecture, similar to standard autoencoders, has gained widespread use in fault detection. However, both the GAE and the graph variational autoencoder (GVAE) have fixed receptive fields, limiting their ability to extract multiscale features and model performance. To overcome these limitations, we propose two graph neural network models: the graph wavelet autoencoder (GWAE), and the graph wavelet variational…
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Taxonomy
TopicsFault Detection and Control Systems · Machine Fault Diagnosis Techniques · Anomaly Detection Techniques and Applications
MethodsGraph Neural Network
