A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings
Transfer learning is a promising deep learning approach that can be used in applications that suffer from insufficient training data. Parameter transfer, which is a method of improving the accuracy and training speed by training the target network using the parameters of the source network, selects...
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doaj-ba826f17f9ee4ee8a81b14ebf69658312021-03-29T22:29:30ZengIEEEIEEE Access2169-35362019-01-017469174693010.1109/ACCESS.2019.29062738671465A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element BearingsHyunjae Kim0Byeng D. Youn1https://orcid.org/0000-0001-9749-266XDepartment of Mechanical Engineering, Seoul National University, Seoul, South KoreaDepartment of Mechanical Engineering, Seoul National University, Seoul, South KoreaTransfer learning is a promising deep learning approach that can be used in applications that suffer from insufficient training data. Parameter transfer, which is a method of improving the accuracy and training speed by training the target network using the parameters of the source network, selects two conventional parameter repurposing methods, such as parameter freezing and fine-tuning depending on the amount of target data and network size. In this paper, we propose a novel method to increase the performance in the target domain in an intermediate approach of both methods. The proposed method, selective parameter freezing (SPF), freezes only a portion of parameters not freeze or fine-tunes all parameters within a layer by choosing output-sensitive parameters from the source network. Freezing only sensitive parameters while training is to reduce the amount of trainable parameter and protect informative parameters from overfitting to a small number of target data. Using two sets of the source-target domain, artificial faults with different fault size and artificial faults-natural faults of rolling element bearing, the proposed SPF allows adaptation to the target domain by choosing the best degree of freezing with various amounts of target data and size of networks compared to conventional approaches.https://ieeexplore.ieee.org/document/8671465/Fault diagnosistransfer learningconvolution neural networksrolling element bearingsparameter transfer |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hyunjae Kim Byeng D. Youn |
spellingShingle |
Hyunjae Kim Byeng D. Youn A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings IEEE Access Fault diagnosis transfer learning convolution neural networks rolling element bearings parameter transfer |
author_facet |
Hyunjae Kim Byeng D. Youn |
author_sort |
Hyunjae Kim |
title |
A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings |
title_short |
A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings |
title_full |
A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings |
title_fullStr |
A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings |
title_full_unstemmed |
A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings |
title_sort |
new parameter repurposing method for parameter transfer with small dataset and its application in fault diagnosis of rolling element bearings |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2019-01-01 |
description |
Transfer learning is a promising deep learning approach that can be used in applications that suffer from insufficient training data. Parameter transfer, which is a method of improving the accuracy and training speed by training the target network using the parameters of the source network, selects two conventional parameter repurposing methods, such as parameter freezing and fine-tuning depending on the amount of target data and network size. In this paper, we propose a novel method to increase the performance in the target domain in an intermediate approach of both methods. The proposed method, selective parameter freezing (SPF), freezes only a portion of parameters not freeze or fine-tunes all parameters within a layer by choosing output-sensitive parameters from the source network. Freezing only sensitive parameters while training is to reduce the amount of trainable parameter and protect informative parameters from overfitting to a small number of target data. Using two sets of the source-target domain, artificial faults with different fault size and artificial faults-natural faults of rolling element bearing, the proposed SPF allows adaptation to the target domain by choosing the best degree of freezing with various amounts of target data and size of networks compared to conventional approaches. |
topic |
Fault diagnosis transfer learning convolution neural networks rolling element bearings parameter transfer |
url |
https://ieeexplore.ieee.org/document/8671465/ |
work_keys_str_mv |
AT hyunjaekim anewparameterrepurposingmethodforparametertransferwithsmalldatasetanditsapplicationinfaultdiagnosisofrollingelementbearings AT byengdyoun anewparameterrepurposingmethodforparametertransferwithsmalldatasetanditsapplicationinfaultdiagnosisofrollingelementbearings AT hyunjaekim newparameterrepurposingmethodforparametertransferwithsmalldatasetanditsapplicationinfaultdiagnosisofrollingelementbearings AT byengdyoun newparameterrepurposingmethodforparametertransferwithsmalldatasetanditsapplicationinfaultdiagnosisofrollingelementbearings |
_version_ |
1724191544413519872 |