Quantification and localisation of damage in beam-like structures by using artificial neural networks with experimental validation
Quantification and localisation of damage in beam-like structures by using artificial neural networks with experimental validation
This paper presents a damage detection algorithm using a combination of global (changes in natural frequencies) and local (curvature mode shapes) vibration-based analysis data as input in artificial neural networks (ANNs) for location and severity prediction of damage in beam-like structures. A finite element analysis tool has been used to obtain the dynamic characteristics of intact and damaged cantilever steel beams for the first three natural modes. Different damage scenarios have been introduced by reducing the local thickness of the selected elements at different locations along finite element model (FEM) of the beam structure. The necessary features for damage detection have been selected by performing sensitivity analyses and different input–output sets have been introduced to various ANNs. In order to check the robustness of the input used in the analysis and to simulate the experimental uncertainties, artificial random noise has been generated numerically and added to noise-free data during the training of the ANNs. In the experimental analysis, two steel beams with eight distributed surface-bonded electrical strain gauges and an accelerometer mounted at the tip have been used to obtain modal parameters such as resonant frequencies and strain mode shapes. Finally, trained feed-forward backpropagation ANNs have been tested using the data obtained from the experimental damage case for quantification and localisation of the damage.
damage identification, vibration-based analysis, strain mode shape, finite element analysis, artificial neural networks
1785-1802
Sahin, M.
c1472b10-23a0-4504-9483-59d4e6b1ed4a
Shenoi, R.A.
a37b4e0a-06f1-425f-966d-71e6fa299960
2003
Sahin, M.
c1472b10-23a0-4504-9483-59d4e6b1ed4a
Shenoi, R.A.
a37b4e0a-06f1-425f-966d-71e6fa299960
Sahin, M. and Shenoi, R.A.
(2003)
Quantification and localisation of damage in beam-like structures by using artificial neural networks with experimental validation.
Engineering Structures, 25 (14), .
(doi:10.1016/j.engstruct.2003.08.001).
Abstract
This paper presents a damage detection algorithm using a combination of global (changes in natural frequencies) and local (curvature mode shapes) vibration-based analysis data as input in artificial neural networks (ANNs) for location and severity prediction of damage in beam-like structures. A finite element analysis tool has been used to obtain the dynamic characteristics of intact and damaged cantilever steel beams for the first three natural modes. Different damage scenarios have been introduced by reducing the local thickness of the selected elements at different locations along finite element model (FEM) of the beam structure. The necessary features for damage detection have been selected by performing sensitivity analyses and different input–output sets have been introduced to various ANNs. In order to check the robustness of the input used in the analysis and to simulate the experimental uncertainties, artificial random noise has been generated numerically and added to noise-free data during the training of the ANNs. In the experimental analysis, two steel beams with eight distributed surface-bonded electrical strain gauges and an accelerometer mounted at the tip have been used to obtain modal parameters such as resonant frequencies and strain mode shapes. Finally, trained feed-forward backpropagation ANNs have been tested using the data obtained from the experimental damage case for quantification and localisation of the damage.
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Published date: 2003
Keywords:
damage identification, vibration-based analysis, strain mode shape, finite element analysis, artificial neural networks
Identifiers
Local EPrints ID: 22512
URI: http://eprints.soton.ac.uk/id/eprint/22512
ISSN: 0141-0296
PURE UUID: 2ec7fbd8-2d2e-4b44-bae7-3a745cc72bde
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Date deposited: 21 Mar 2006
Last modified: 15 Mar 2024 06:38
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Author:
M. Sahin
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