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Authordc.contributor.authorRabiei, Elaheh 
Authordc.contributor.authorLópez Droguett, Enrique 
Authordc.contributor.authorModarres, Mohammad 
Admission datedc.date.accessioned2017-11-23T15:04:11Z
Available datedc.date.available2017-11-23T15:04:11Z
Publication datedc.date.issued2016
Cita de ítemdc.identifier.citationAdvances in Mechanical Engineering 2016, Vol. 8(9) 1–19es_ES
Identifierdc.identifier.other10.1177/1687814016666747
Identifierdc.identifier.urihttps://repositorio.uchile.cl/handle/2250/145771
Abstractdc.description.abstractDuring the lifetime of a component, microstructural changes emerge at its material level and evolve through time. Classical empirical degradation models (e.g. Paris Law in fatigue crack growth) are usually established based on monitoring and estimating well-known direct damage indicators such as crack size. However, by the time the usual inspection techniques efficiently identify such damage indicators, most of the life of the component would have been expended, and usually it would be too late to save the component. Therefore, it is important to detect damage at the earliest possible time. This article presents a new structural health monitoring and damage prognostics framework based on evolution of damage precursors representing the indirect damage indicators, when conventional direct damage indicator, such as a crack, is unobservable, inaccessible, or difficult to measure. Dynamic Bayesian network is employed to represent all the related variables as well as their causal or correlation relationships. Since the degradation model based on damage precursor evolution is not fully recognized, the methodology needs to be capable of online-learning the degradation process as well as estimating the damage state. Therefore, the joint particle filtering technique is implemented as an inference method inside the dynamic Bayesian network to assess both model parameters and damage states simultaneously. The proposed framework allows the integration of any related sources of information in order to reduce the inherent uncertainties. Incorporating different types of evidences in dynamic Bayesian network entails advance techniques to identify and formulate the possible interaction between potentially nonhomogenous variables. This article uses the support vector regression in order to define generally unknown nonparametric and nonlinear correlation between the input variables. The methodology is successfully applied to damage estimation and prediction of crack initiation in a metallic alloy under fatigue. The proposed framework is intended to be general and comprehensive so that it can be implemented in different applications.es_ES
Patrocinadordc.description.sponsorshipChilean National Fund for Scientific and Technological Development (Fondecyt) 1160494es_ES
Lenguagedc.language.isoenes_ES
Publisherdc.publisherSAGEes_ES
Type of licensedc.rightsAttribution-NonCommercial-NoDerivs 3.0 Chile*
Link to Licensedc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/cl/*
Sourcedc.sourceAdvances in Mechanical Engineeringes_ES
Keywordsdc.subjectDamage precursores_ES
Keywordsdc.subjectDamage prognosticses_ES
Keywordsdc.subjectStructural health monitoringes_ES
Keywordsdc.subjectDynamic Bayesian networkes_ES
Keywordsdc.subjectJoint particle filteringes_ES
Keywordsdc.subjectSupport vector regressiones_ES
Keywordsdc.subjectCrack initiationes_ES
Títulodc.titleA prognostics approach based on the evolution of damage precursors using dynamic Bayesian networkses_ES
Document typedc.typeArtículo de revista
Catalogueruchile.catalogadorlajes_ES
Indexationuchile.indexArtículo de publicación ISIes_ES


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Attribution-NonCommercial-NoDerivs 3.0 Chile
Except where otherwise noted, this item's license is described as Attribution-NonCommercial-NoDerivs 3.0 Chile