Abstract

We develop a novel deep learning framework to achieve highly accurate machine fault diagnosis using transfer learning to enable and accelerate the training of deep neural network. Compared with existing methods, the proposed method is faster to train and more accurate. First, original sensor data are converted to images by conducting a Wavelet transformation to obtain time-frequency distributions. Next, a pretrained network is used to extract lower level features. The labeled time-frequency images are then used to fine-tune the higher levels of the neural network architecture. This paper creates a machine fault diagnosis pipeline and experiments are carried out to verify the effectiveness and generalization of the pipeline on three main mechanical datasets including induction motors, gearboxes, and bearings with sizes of 6000, 9000, and 5000 time series samples, respectively. We achieve state-of-the-art results on each dataset, with most datasets showing test accuracy near 100%, and in the gearbox dataset, we achieve significant improvement from 94.8% to 99.64%. We created a repository including these datasets located at mlmechanics.ics.uci.edu.

Keywords

Computer sciencePipeline (software)Artificial intelligenceTransfer of learningGeneralizationArtificial neural networkDeep learningFault (geology)WaveletMachine learningPattern recognition (psychology)Transformation (genetics)Data mining

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Publication Info

Year
2018
Type
article
Volume
15
Issue
4
Pages
2446-2455
Citations
1415
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

1415
OpenAlex
46
Influential
1334
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Cite This

Siyu Shao, Stephen McAleer, Ruqiang Yan et al. (2018). Highly Accurate Machine Fault Diagnosis Using Deep Transfer Learning. IEEE Transactions on Industrial Informatics , 15 (4) , 2446-2455. https://doi.org/10.1109/tii.2018.2864759

Identifiers

DOI
10.1109/tii.2018.2864759

Data Quality

Data completeness: 81%