Skip to Main Content (Press Enter)

Logo UNIME
  • ×
  • Home
  • Degrees
  • Courses
  • Jobs
  • People
  • Outputs
  • Organizations
  • Third Mission
  • Expertise & Skills

Expertise & Skills
Logo UNIME

|

UNIFIND - Expertise & Skills

unime.it
  • ×
  • Home
  • Degrees
  • Courses
  • Jobs
  • People
  • Outputs
  • Organizations
  • Third Mission
  • Expertise & Skills
  1. Outputs

Automatic crack classification by exploiting statistical event descriptors for deep learning

Academic Article
Publication Date:
2021
abstract:
In modern building infrastructures, the chance to devise adaptive and unsupervised data-driven structural health monitoring (SHM) systems is gaining in popularity. This is due to the large availability of big data from low-cost sensors with communication capabilities and advanced modeling tools such as deep learning. A promising method suitable for smart SHM is the analysis of acoustic emissions (AEs), i.e., ultrasonic waves generated by internal ruptures of the concrete when it is stressed. The advantage in respect to traditional ultrasonic measurement methods is the absence of the emitter and the suitability to implement continuous monitoring. The main purpose of this paper is to combine deep neural networks with bidirectional long short term memory and advanced statistical analysis involving instantaneous frequency and spectral kurtosis to develop an accurate classification tool for tensile, shear and mixed modes originated from AE events (cracks). We inves-tigated effective event descriptors to capture the unique characteristics from the different types of modes. Tests on experimental results confirm that this method achieves promising classification among different crack events and can impact on the design of the future of SHM technologies. This approach is effective to classify incipient damages with 92% of accuracy, which is advantageous to plan maintenance.
Iris type:
14.a.1 Articolo su rivista
Keywords:
Acoustic emission; Bidirectional long short term memory; Damage classification; Deep learning; Structural health monitoring
List of contributors:
Siracusano, G.; Garesci, Francesca; Finocchio, G.; Tomasello, R.; Lamonaca, F.; Scuro, C.; Carpentieri, M.; Chiappini, M.; La Corte, A.
Authors of the University:
FINOCCHIO Giovanni
GARESCI' Francesca
Handle:
https://iris.unime.it/handle/11570/3224776
Published in:
APPLIED SCIENCES
Journal
  • Overview

Overview

URL

https://www.mdpi.com/2076-3417/11/24/12059
  • Guide
  • Help
  • Accessibility
  • Privacy
  • Use of cookies
  • Legal notes

Powered by VIVO | Designed by Cineca | 26.4.5.0