Deep convolutional neural network with new training method and transfer learning for structural fault classification of vehicle instrument panel structure

  • Lee, Sang-Yun
  • Lee, Sang-Kwon
Citations

WEB OF SCIENCE

5
Citations

SCOPUS

10

초록

Structural defect have been detected by attaching sensors to all possible defect locations. A new method is proposed to enable the identification of structural defect locations with minimal data collection points using a deep convolutional neural network. Transfer learning was used to improve the accuracy of a hard-to-classify task by using a pre-trained model from an easy-to-classify task. To reduce the number of data collection points, it is necessary to learn the spatial information of the structure. To this end, a structure fault classification-deep convolutional neural network (SFC-DCNN) is proposed. It is an end-to-end convolutional neural network. The time-domain input data and convolutional neural network filter have 2 dimensions. With the proposed method, the accuracy of classifying the location of structural defects in a vehicle's instrument panel structure was verified with a single vibration measurement point where the location is independent of the structural fault location.

키워드

2D CNNStructural fault classificationSpatial information of input dataTransfer learningDIAGNOSIS
제목
Deep convolutional neural network with new training method and transfer learning for structural fault classification of vehicle instrument panel structure
저자
Lee, Sang-YunLee, Sang-Kwon
DOI
10.1007/s12206-020-1009-3
발행일
2020-11
유형
Article
저널명
Journal of Mechanical Science and Technology
34
11
페이지
4489 ~ 4498