Scopus Indexed Publications
Paper Details
- Title
-
Industrial Fault Detection Using Transfer Learning Models
- Author
-
,
F.M. Javed Mehedi Shamrat,
Saima Afrin,
Shaikat Saha,
- Email
-
- Abstract
-
Industry and equipment are
critical factors in the advancement of human society in the era of the
industrial revolution. Since factories are reliant on their machines,
they must be maintained daily. However, if the machines are too large
for us to observe, an automated process is required to monitor it. By
diagnosing the signal data using the CNN algorithm, faults in the
machines can be identified. This paper has proposed three transfer
learning-based fault diagnosis models using AlexNet, InceptionV3,
GoogLeNet with the pretrained weights of the ImageNet dataset. The
results of the classification of the three models are compared for their
performance. It is observed from the study that the proposed AlexNet
architecture shows a very high performance by classifying faults in
machines for the tested dataset compared to other models.
- Keywords
-
Faulty machinery , AlexNet , Transfer learning , Intelligent fault diagnosis , Incep-tionV3 , GoogLeNet
- Journal or Conference Name
- 2021 2nd International Conference on Smart Electronics and Communication (ICOSEC)
- Publication Year
-
2021
- Indexing
-
scopus