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Vibration-based structural damage detection strategy using FRFs and machine learning classifiers

Structures, ISSN: 2352-0124, Vol: 59, Page: 105753
2024
  • 11
    Citations
  • 0
    Usage
  • 31
    Captures
  • 1
    Mentions
  • 44
    Social Media
Metric Options:   Counts1 Year3 Year

Metrics Details

  • Citations
    11
    • Citation Indexes
      11
  • Captures
    31
  • Mentions
    1
    • News Mentions
      1
      • News
        1
  • Social Media
    44
    • Shares, Likes & Comments
      44
      • Facebook
        44

Most Recent News

New Machine Learning Findings Has Been Reported by Investigators at University of Sao Paulo (Vibration-based Structural Damage Detection Strategy Using Frfs and Machine Learning Classifiers)

2024 FEB 01 (NewsRx) -- By a News Reporter-Staff News Editor at Network Daily News -- Investigators publish new report on Machine Learning. According to

Article Description

In this paper, a damage detection strategy for beam-type structures based on frequency response functions (FRFs) is presented. Five aluminum beams of equal nominal dimensions are used in an experimental program under laboratory conditions to obtain experimental FRF data from both undamaged and damaged conditions. Damages are induced by creating rectangular notches on the beams using saw-cutting. A stochastic finite element model of the beam is developed in MATLAB to construct several training datasets. The damages are modeled by reducing the cross-sectional area at the corresponding damaged elements. Simple damage indexes are proposed as damage-sensitive features. Decision Tree, Support Vector Machines, and Artificial Neural Networks classifiers are trained in the first stage to perform damage detection and localization. Single and multiple damages located in a single zone and more than one zone simultaneously are considered. In the second stage, experimental data not used for training are used for validation. The results from the first stage suggest that the proposed damage indexes can effectively detect and locate structural damage in beams. Among all classifiers, Artificial Neural Networks is the classifier that best performed. High accuracy is achieved to identify the presence of damage (99.3%) and detecting its location on the beam for some of the training datasets (from 80.0% to 97.1%). In the second stage of validation, accuracy, as expected, decreased. However, misclassifications occur mainly for FRF samples in the impact zone, which indicates that the proposed strategy can be efficient to detect damages at locations other than the excitation zone.

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