Improving Convolutional Neural Networks for Fault Diagnosis by Assimilating Global Features
Saif S. S. Al-Wahaibi, Qiugang Lu

TL;DR
This paper introduces a novel local-global CNN architecture that directly captures both local and global features from multivariate time-series data converted into images, significantly improving fault diagnosis accuracy.
Contribution
The paper proposes a new LG-CNN architecture that integrates global feature extraction with local features for enhanced fault diagnosis in complex processes.
Findings
LG-CNN outperforms traditional CNN on the TEP dataset.
Global features improve fault classification accuracy.
Model complexity remains manageable with wider receptive fields.
Abstract
Deep learning techniques have become prominent in modern fault diagnosis for complex processes. In particular, convolutional neural networks (CNNs) have shown an appealing capacity to deal with multivariate time-series data by converting them into images. However, existing CNN techniques mainly focus on capturing local or multi-scale features from input images. A deep CNN is often required to indirectly extract global features, which are critical to describe the images converted from multivariate dynamical data. This paper proposes a novel local-global CNN (LG-CNN) architecture that directly accounts for both local and global features for fault diagnosis. Specifically, the local features are acquired by traditional local kernels whereas global features are extracted by using 1D tall and fat kernels that span the entire height and width of the image. Both local and global features are…
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Taxonomy
TopicsFault Detection and Control Systems · Mineral Processing and Grinding · Spectroscopy and Chemometric Analyses
