Auto-detection of acoustic emission signals from cracking of concrete structures using convolutional neural networks: Upscaling from specimen

  • Han, Gyeol
  • Kim, Yong-Min
  • Kim, Hyunwoo
  • Oh, Tae-Min
  • Song, Ki-Il
  • 외 4명
Citations

WEB OF SCIENCE

30
Citations

SCOPUS

34

초록

Acoustic emission (AE) monitoring has gained significant interest as a promising method for monitoring of changes in structural integrity and durability. Long-term AE monitoring needs to detect and distinguish crack signals from ambient noise (or dummy) signals; however, it is still a daunting task which currently limits field implementation of the AE method. Herein, we explore the feasibility of using convolutional neural network (CNN) models to detect AE crack signals from ambient signals. The trained models are validated both with noise-embedded synthesized signals and with upscaled physical model experiments simulating earthquake loading to a scaled model foundation by using a large-scale shaking table. The 2D CNN model trained the laboratory-synthesized signal sets effectively captured the crack and crack-free signals in all cases including the upscaled physical model experiments. This study presents a simple but robust CNN model for pre-filtering of crack signals and a novel training method for enhanced accuracy, which can be applied for real-time structural health monitoring of concrete-based structures. © 2021 Elsevier Ltd

키워드

Acoustic emissionConvolutional neural networkCrack detectionMachine learningStructure health monitoring
제목
Auto-detection of acoustic emission signals from cracking of concrete structures using convolutional neural networks: Upscaling from specimen
저자
Han, GyeolKim, Yong-MinKim, HyunwooOh, Tae-MinSong, Ki-IlKim, AyoungKim, YoungchulCho, YoungtaeKwon, Tae-Hyuk
DOI
10.1016/j.eswa.2021.115863
발행일
2021-12
유형
Article
저널명
Expert Systems with Applications
186