Deep Transfer Learning Approach for Localization of Damage Area in Composite Laminates Using Acoustic Emission Signal

Author:

Zhao Jingyu1ORCID,Xie Weihua1ORCID,Yu Dong1ORCID,Yang Qiang1,Meng Songhe1,Lyu Qihui2

Affiliation:

1. Science and Technology on Advanced Composites in Special Environment Laboratory, Harbin Institute of Technology, Harbin 150080, China

2. School of Science, Harbin Institute of Technology, Shenzhen 518055, China

Abstract

Intelligent composite structures with self-aware functions are preferable for future aircrafts. The real-time location of damaged areas of composites is a key step. In this study, deep transfer learning was used to achieve the real-time location of damaged areas. The sensor network obtained acoustic emission signals from different damaged areas of the aluminum alloy plate. The acoustic emission time-domain signal is transformed into the input image by continuous wavelet transform. The convolutional neural network-based model automatically localized the damaged area by extracting features from the input image. A small amount of composite acoustic emission data was used to fine-tune some network parameters of the basic model through transfer learning. This enabled the model to classify the damaged area of composites. The accuracy of the transfer learning model trained with 900 samples is 96.38%, which is comparable to the accuracy of the model trained directly with 1800 samples; the training time of the former is only 17.68% of that of the latter. The proposed method can be easily adapted to new composite structures using transfer learning and a small dataset, providing a new idea for structural health monitoring.

Funder

National Natural Science Foundation of China

Science Foundation of National Key Laboratory of Science and Technology on Advanced Composites in Special Environments

Publisher

MDPI AG

Subject

Polymers and Plastics,General Chemistry

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