Publication result detail

Structural damage detection by progressive continuous wavelet transform and singular value decomposition of noisy mode shapes

HU, S.; DING, Z.; LIU, S.; WEI, Q.; NOVÁK, D.; CAO, M.

Original Title

Structural damage detection by progressive continuous wavelet transform and singular value decomposition of noisy mode shapes

English Title

Structural damage detection by progressive continuous wavelet transform and singular value decomposition of noisy mode shapes

Type

WoS Article

Original Abstract

For decades, damage identification based on structural mode shapes has been a popular research topic. While mode shapes provide valuable spatial structural information, the sensitivity to localized damage remains limited. In contrast, modal curvature exhibits high sensitivity to local damage, enabling precise damage localization. However, its susceptibility to environmental noise poses a significant limitation. To this end, a novel damage identification method is proposed by integrating continuous wavelet transform (CWT) and singular value decomposition (SVD). First, the CWT is applied to structural mode shapes for generating continuous wavelet coefficients. Subsequently, the SVD is performed on these coefficients, yielding new damage indicator termed as the singular image of continuous wavelet coefficients (SICWC). The SICWC enhances damage sensitivity and localization accuracy by suppressing noise-induced global trends in structural mode shapes. The effectiveness of proposed method is validated through numerical simulations of a cantilever beam under noisy conditions, as well as experimental detection of a cracked beam using mode shapes acquired via a scanning laser vibrometer. The results demonstrate that SICWC effectively mitigates the limitations of traditional damage detection methods based on mode shape and curvature.

English abstract

For decades, damage identification based on structural mode shapes has been a popular research topic. While mode shapes provide valuable spatial structural information, the sensitivity to localized damage remains limited. In contrast, modal curvature exhibits high sensitivity to local damage, enabling precise damage localization. However, its susceptibility to environmental noise poses a significant limitation. To this end, a novel damage identification method is proposed by integrating continuous wavelet transform (CWT) and singular value decomposition (SVD). First, the CWT is applied to structural mode shapes for generating continuous wavelet coefficients. Subsequently, the SVD is performed on these coefficients, yielding new damage indicator termed as the singular image of continuous wavelet coefficients (SICWC). The SICWC enhances damage sensitivity and localization accuracy by suppressing noise-induced global trends in structural mode shapes. The effectiveness of proposed method is validated through numerical simulations of a cantilever beam under noisy conditions, as well as experimental detection of a cracked beam using mode shapes acquired via a scanning laser vibrometer. The results demonstrate that SICWC effectively mitigates the limitations of traditional damage detection methods based on mode shape and curvature.

Keywords

damage detection, mode shape, singular value decomposition, wavelet transform, noisy environment, scanning laser vibrometer

Key words in English

damage detection, mode shape, singular value decomposition, wavelet transform, noisy environment, scanning laser vibrometer

Authors

HU, S.; DING, Z.; LIU, S.; WEI, Q.; NOVÁK, D.; CAO, M.

Released

01.11.2025

Periodical

Journal of Vibroengineering

Volume

27

Number

7

State

Republic of Lithuania

Pages from

1240

Pages to

1260

Pages count

21

URL

BibTex

@article{BUT200272,
  author="{} and  {} and  {} and  {} and Drahomír {Novák} and  {}",
  title="Structural damage detection by progressive continuous wavelet transform and singular value decomposition of noisy mode shapes",
  journal="Journal of Vibroengineering",
  year="2025",
  volume="27",
  number="7",
  pages="1240--1260",
  doi="10.21595/jve.2025.24920",
  issn="1392-8716",
  url="https://www.extrica.com/article/24920"
}