On model- and data-based approaches to structural health monitoring

Structural Heath Monitoring (SHM) is the term applied to the process of periodically monitoring the state of a structural system with the aim of diagnosing damage in the structure. Over the course of the past several decades there has been ongoing interest in approaches to the problem of SHM. This a...

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Main Author: Barthorpe, Robert James
Other Authors: Worden, Keith ; Manson, Graeme
Published: University of Sheffield 2010
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Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.531188
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5311882017-10-04T03:24:17ZOn model- and data-based approaches to structural health monitoringBarthorpe, Robert JamesWorden, Keith ; Manson, Graeme2010Structural Heath Monitoring (SHM) is the term applied to the process of periodically monitoring the state of a structural system with the aim of diagnosing damage in the structure. Over the course of the past several decades there has been ongoing interest in approaches to the problem of SHM. This attention has been sustained by the belief that SHM will allow substantial economic and life-safety benefits to be realised across a wide range of applications. Several numerical and laboratory implementations have been successfully demonstrated. However, despite this research effort, real-world applications of SHM as originally envisaged are somewhat rare. Numerous technical barriers to the broader application of SHM methods have been identified, namely: severe restrictions on the availability of damaged-state data in real-world scenarios; difficulties associated with the numerical modelling of physical systems; and limited understanding of the physical effect of system inputs (including environmental and operational loads). This thesis focuses on the roles of law-based and data-based modelling in current applications of. First, established approaches to model-based SHM are introduced, with the aid of an exemplar ‘wingbox' structure. The study highlights the degree of difficulty associated with applying model-updating-based methods and with producing numerical models capable of accurately predicting changes in structural response due to damage. These difficulties motivate the investigation of non-deterministic, predictive modelling of structural responses taking into account both experimental and modelling uncertainties. Secondly, a data-based approach to multiple-site damage location is introduced, which may allow the quantity of experimental data required for classifier training to be drastically reduced. A conclusion of the above research is the identification of hybrid approaches, in which a forward-mode law-based model informs a data-based damage identification scheme, as an area for future work624.17University of Sheffieldhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.531188http://etheses.whiterose.ac.uk/1175/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 624.17
spellingShingle 624.17
Barthorpe, Robert James
On model- and data-based approaches to structural health monitoring
description Structural Heath Monitoring (SHM) is the term applied to the process of periodically monitoring the state of a structural system with the aim of diagnosing damage in the structure. Over the course of the past several decades there has been ongoing interest in approaches to the problem of SHM. This attention has been sustained by the belief that SHM will allow substantial economic and life-safety benefits to be realised across a wide range of applications. Several numerical and laboratory implementations have been successfully demonstrated. However, despite this research effort, real-world applications of SHM as originally envisaged are somewhat rare. Numerous technical barriers to the broader application of SHM methods have been identified, namely: severe restrictions on the availability of damaged-state data in real-world scenarios; difficulties associated with the numerical modelling of physical systems; and limited understanding of the physical effect of system inputs (including environmental and operational loads). This thesis focuses on the roles of law-based and data-based modelling in current applications of. First, established approaches to model-based SHM are introduced, with the aid of an exemplar ‘wingbox' structure. The study highlights the degree of difficulty associated with applying model-updating-based methods and with producing numerical models capable of accurately predicting changes in structural response due to damage. These difficulties motivate the investigation of non-deterministic, predictive modelling of structural responses taking into account both experimental and modelling uncertainties. Secondly, a data-based approach to multiple-site damage location is introduced, which may allow the quantity of experimental data required for classifier training to be drastically reduced. A conclusion of the above research is the identification of hybrid approaches, in which a forward-mode law-based model informs a data-based damage identification scheme, as an area for future work
author2 Worden, Keith ; Manson, Graeme
author_facet Worden, Keith ; Manson, Graeme
Barthorpe, Robert James
author Barthorpe, Robert James
author_sort Barthorpe, Robert James
title On model- and data-based approaches to structural health monitoring
title_short On model- and data-based approaches to structural health monitoring
title_full On model- and data-based approaches to structural health monitoring
title_fullStr On model- and data-based approaches to structural health monitoring
title_full_unstemmed On model- and data-based approaches to structural health monitoring
title_sort on model- and data-based approaches to structural health monitoring
publisher University of Sheffield
publishDate 2010
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.531188
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