Structural damage identification: a random sampling-high dimensional model representation approach
Structural damage identification: a random sampling-high dimensional model representation approach
Structural damage identification and quantification of damage using non-destructive methods are important aspects for any civil, mechanical and aerospace engineering structures. In this study, a novel damage identification algorithm has been developed using random sampling-high dimensional model representation approach. A global sensitivity analysis based on random sampling-high dimensional model representation is adopted for important parameter screening purpose. Three different structures (spring mass damper system, simply supported beam and fibre-reinforced polymer composite bridge deck) have been used for various single and multiple damage conditions to validate the proposed algorithm. The performance of this method is found to be quite satisfactory in the realm of damage detection in structures. The random sampling-high dimensional model representation-based approach for meta-model formation is particularly useful in damage identification as it works well when large numbers of input parameters are involved. In this study, two different optimization methods have been used and their relative capability to identify damage has been discussed. Performance of this damage identification algorithm under the influence of noise has also been addressed in this article.
Damage identification, Genetic algorithm, Global sensitivity analysis, Goal attainment algorithm, Multi-objective optimization, Random sampling-high dimensional model representation, Structural health monitoring
908-927
Mukhopadhyay, Tanmoy
2ae18ab0-7477-40ac-ae22-76face7be475
Chowdhury, Rajib
0e309fcb-059f-4630-b6e4-3823c67c1dad
Chakrabarti, Anupam
a33871da-c3f8-440c-afea-00c3e9e5a240
June 2016
Mukhopadhyay, Tanmoy
2ae18ab0-7477-40ac-ae22-76face7be475
Chowdhury, Rajib
0e309fcb-059f-4630-b6e4-3823c67c1dad
Chakrabarti, Anupam
a33871da-c3f8-440c-afea-00c3e9e5a240
Mukhopadhyay, Tanmoy, Chowdhury, Rajib and Chakrabarti, Anupam
(2016)
Structural damage identification: a random sampling-high dimensional model representation approach.
Advances in Structural Engineering, 19 (6), .
(doi:10.1177/1369433216630370).
Abstract
Structural damage identification and quantification of damage using non-destructive methods are important aspects for any civil, mechanical and aerospace engineering structures. In this study, a novel damage identification algorithm has been developed using random sampling-high dimensional model representation approach. A global sensitivity analysis based on random sampling-high dimensional model representation is adopted for important parameter screening purpose. Three different structures (spring mass damper system, simply supported beam and fibre-reinforced polymer composite bridge deck) have been used for various single and multiple damage conditions to validate the proposed algorithm. The performance of this method is found to be quite satisfactory in the realm of damage detection in structures. The random sampling-high dimensional model representation-based approach for meta-model formation is particularly useful in damage identification as it works well when large numbers of input parameters are involved. In this study, two different optimization methods have been used and their relative capability to identify damage has been discussed. Performance of this damage identification algorithm under the influence of noise has also been addressed in this article.
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Published date: June 2016
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Publisher Copyright:
© The Author(s) 2016.
Keywords:
Damage identification, Genetic algorithm, Global sensitivity analysis, Goal attainment algorithm, Multi-objective optimization, Random sampling-high dimensional model representation, Structural health monitoring
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Local EPrints ID: 483541
URI: http://eprints.soton.ac.uk/id/eprint/483541
ISSN: 1369-4332
PURE UUID: 994e777d-c04d-4629-8f12-e9d943757301
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Date deposited: 01 Nov 2023 17:59
Last modified: 18 Mar 2024 04:10
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Contributors
Author:
Tanmoy Mukhopadhyay
Author:
Rajib Chowdhury
Author:
Anupam Chakrabarti
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