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Structural damage identification using a Bayesian model selection framework

Structural damage identification using a Bayesian model selection framework
Structural damage identification using a Bayesian model selection framework

A Bayesian model class selection and updating framework is used for identifying the location and size of damage in a structure utilizing measured dynamic data. The framework consists of a two-level approach. At the first level the model classes chosen from a set of competing model classes are ranked and the best model class is selected. At the second level the free parameters of a model class are estimated given the measured data. The structural damage detection is accomplished by associating each model class to a damage location pattern in the structure, indicative of the location of damage. The probable damage locations are ranked according to the posterior probabilities of the corresponding model classes. The severity of damage is then inferred from the posterior probability of the model parameters corresponding to the most probable model class. The proposed damage identification methodology is illustrated by applying it to the identification of the location and severity of damage of a real bridge using simulated damage scenarios and from a laboratory singe-span bridge-like model using measured dynamic data.

1073-1080
DEStech Publications Inc.
Papadimitriou, C.
3be78708-ed90-4a1f-b18e-5fe4ec2c8de6
Papadioti, D. C.
09ccab39-1bc8-44ec-adc7-3c00f15d1f7d
Ntotsios, E.
877c3350-0497-4471-aa97-c101df72e05e
Casciati, Fabio
Giordano, Michele
Papadimitriou, C.
3be78708-ed90-4a1f-b18e-5fe4ec2c8de6
Papadioti, D. C.
09ccab39-1bc8-44ec-adc7-3c00f15d1f7d
Ntotsios, E.
877c3350-0497-4471-aa97-c101df72e05e
Casciati, Fabio
Giordano, Michele

Papadimitriou, C., Papadioti, D. C. and Ntotsios, E. (2010) Structural damage identification using a Bayesian model selection framework. Casciati, Fabio and Giordano, Michele (eds.) In Structural Health Monitoring 2010 : Proceedings of the Fifth European Workshop on Structural Health Monitoring Held at Sorrento, Naples, Italy, June 28-July 4, 2010. DEStech Publications Inc. pp. 1073-1080 .

Record type: Conference or Workshop Item (Paper)

Abstract

A Bayesian model class selection and updating framework is used for identifying the location and size of damage in a structure utilizing measured dynamic data. The framework consists of a two-level approach. At the first level the model classes chosen from a set of competing model classes are ranked and the best model class is selected. At the second level the free parameters of a model class are estimated given the measured data. The structural damage detection is accomplished by associating each model class to a damage location pattern in the structure, indicative of the location of damage. The probable damage locations are ranked according to the posterior probabilities of the corresponding model classes. The severity of damage is then inferred from the posterior probability of the model parameters corresponding to the most probable model class. The proposed damage identification methodology is illustrated by applying it to the identification of the location and severity of damage of a real bridge using simulated damage scenarios and from a laboratory singe-span bridge-like model using measured dynamic data.

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More information

Published date: 1 December 2010
Venue - Dates: 5th European Workshop on Structural Health Monitoring 2010, , Naples, Italy, 2010-06-28 - 2010-07-04

Identifiers

Local EPrints ID: 430694
URI: http://eprints.soton.ac.uk/id/eprint/430694
PURE UUID: 2dd9d7e7-2a88-433b-b2f7-4ada081f1450
ORCID for E. Ntotsios: ORCID iD orcid.org/0000-0001-7382-0948

Catalogue record

Date deposited: 08 May 2019 16:30
Last modified: 20 Dec 2023 02:45

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Contributors

Author: C. Papadimitriou
Author: D. C. Papadioti
Author: E. Ntotsios ORCID iD
Editor: Fabio Casciati
Editor: Michele Giordano

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