ASME 2019 Conference on Smart Materials, Adaptive Structures and Intelligent Systems 2019
DOI: 10.1115/smasis2019-5517
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Development of a Structural Health Monitoring Methodology in Reinforced Concrete Structures Using FBGs and Pattern Recognition Techniques

Abstract: Structural health monitoring (SHM) is a branch of structural engineering which seeks for the development of monitoring systems that provide relevant information of any alteration that may occur in an engineering structure. This work presents the implementation of an SHM methodology in a prototype structure made of reinforced concrete by using fiber Bragg gratings (FBGs), a type of fiber optic sensor capable of measuring strain and temperature changes due to external stimuli. The SHM system includes an interrog… Show more

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“…Previous work has examined rudimentary elements of a structure such as plates and beams 6164 to trusses, buildings, and bridges. 6569 Prognosis and predictive modeling with ML was investigated to determine when manufacturing machinery begins to lose productivity and needs replacement as a means of reducing downtime. 70 Additional investigations have applied supervised and unsupervised ML algorithms for evaluating the state of civil systems.…”
Section: Structural Health Monitoringmentioning
confidence: 99%
“…Previous work has examined rudimentary elements of a structure such as plates and beams 6164 to trusses, buildings, and bridges. 6569 Prognosis and predictive modeling with ML was investigated to determine when manufacturing machinery begins to lose productivity and needs replacement as a means of reducing downtime. 70 Additional investigations have applied supervised and unsupervised ML algorithms for evaluating the state of civil systems.…”
Section: Structural Health Monitoringmentioning
confidence: 99%