Authors
Atik Faysal, WK Ngui, MH Lim, MS Leong
Publication date
2023/7
Journal
Journal of Vibration Engineering & Technologies
Volume
11
Issue
5
Pages
1987-2011
Publisher
Springer Nature Singapore
Description
Purpose
Deep Neural Networks (DNNs) typically require enormous labeled training samples to achieve optimum performance. Therefore, numerous forms of data augmentation techniques are employed to compensate for the lack of training samples.
Methods
In this paper, a data augmentation technique named ensemble augmentation is proposed to generate real-like samples. This augmentation method uses the power of white noise added in ensembles to the original samples to generate real-like samples. After averaging the signal with ensembles, a new signal is obtained that contains the characteristics of the original signal. The parameters for the ensemble augmentation are validated using a simulated signal. The proposed method is evaluated by 10 class-bearing vibration data using three Transfer Learning (TL) models, namely, Inception-V3, MobileNet-V2, and ResNet50. The outputs from the proposed …
Total citations
2023202411
Scholar articles
A Faysal, WK Ngui, MH Lim, MS Leong - Journal of Vibration Engineering & Technologies, 2023