固体力学学报(英文版)2024,Vol.37Issue(3) :498-518.DOI:10.1007/s10338-024-00491-7

Feature Selection Using Tree Model and Classification Through Convolutional Neural Network for Structural Damage Detection

Zihan Jin Jiqiao Zhang Qianpeng He Silang Zhu Tianlong Ouyang Gongfa Chen
固体力学学报(英文版)2024,Vol.37Issue(3) :498-518.DOI:10.1007/s10338-024-00491-7

Feature Selection Using Tree Model and Classification Through Convolutional Neural Network for Structural Damage Detection

Zihan Jin 1Jiqiao Zhang 2Qianpeng He 2Silang Zhu 2Tianlong Ouyang 2Gongfa Chen2
扫码查看

作者信息

  • 1. School of Civil and Transportation Engineering,Guangdong University of Technology,Guangzhou 510006,China;Guangdong Tianxin Electric Power Engineering Testing Co.,Ltd,Guangzhou 510663,China
  • 2. School of Civil and Transportation Engineering,Guangdong University of Technology,Guangzhou 510006,China
  • 折叠

Abstract

Structural damage detection(SDD)remains highly challenging,due to the difficulty in selecting the optimal damage features from a vast amount of information.In this study,a tree model-based method using decision tree and random forest was employed for feature selection of vibration response signals in SDD.Signal datasets were obtained by numerical experiments and vibration experiments,respectively.Dataset features extracted using this method were input into a convolutional neural network to determine the location of structural damage.Results indicated a 5%to 10%improvement in detection accuracy compared to using original datasets without feature selection,demonstrating the feasibility of this method.The proposed method,based on tree model and classification,addresses the issue of extracting effective information from numerous vibration response signals in structural health monitoring.

Key words

Feature selection/Structural damage detection/Decision tree/Random forest/Convolutional neural network

引用本文复制引用

基金项目

Project of Guangdong Province High Level University Construction for Guangdong University of Technology(262519003)

College Student Innovation Training Program of Guangdong University of Technology(S202211845154)

College Student Innovation Training Program of Guangdong University of Technology(xj2023118450384)

出版年

2024
固体力学学报(英文版)
中国力学学会

固体力学学报(英文版)

EI
影响因子:0.214
ISSN:0894-9166
段落导航相关论文