2006
DOI: 10.1016/j.autcon.2005.07.003
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Concrete compressive strength prediction using ultrasonic pulse velocity through artificial neural networks

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Cited by 247 publications
(110 citation statements)
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“…The results also revealed that the UPV values increase as the curing age increases (Mohammed, 2011). Other authors (Kewalramani & Gupta, 2006;Trtnik et al, 2009) compared artificial neural networks and multiple-regression analysis to predict concrete compressive strength based on UPV and weight of concrete. They concluded that the prediction performed using ANN has a better degree of coherency with experimentally evaluated compressive strength than multiple-regression analysis.…”
Section: Upv and Strengthmentioning
confidence: 98%
“…The results also revealed that the UPV values increase as the curing age increases (Mohammed, 2011). Other authors (Kewalramani & Gupta, 2006;Trtnik et al, 2009) compared artificial neural networks and multiple-regression analysis to predict concrete compressive strength based on UPV and weight of concrete. They concluded that the prediction performed using ANN has a better degree of coherency with experimentally evaluated compressive strength than multiple-regression analysis.…”
Section: Upv and Strengthmentioning
confidence: 98%
“…The properties measured are of different kinds and their range from the echogenicity (ability to produce echoes) to form images to determine elastic constants, sometimes by studying of complex propagation modes (Toutanji, 2000). However, to study the mechanical properties of hydraulic concrete by using the nondestructive techniques, it has been tried to employ two or more parameters in order to improve the accuracy of the estimation of concrete strength (Mohammad, 2012), some even suggest the prediction of the concrete strength on base of data of weight and pulse velocity of the specimens using multiple regression and artificial neural networks (Kewalramani & Gupta, 2005).…”
Section: Introductionmentioning
confidence: 99%
“…En este tipo de materiales también se aprecia la similitud entre la curva velocidad de ultrasonido versus edad del hormigón con la curva resistencia compresión versus edad del hormigón, tal y como se puede ver en otros trabajos de investigación (33)(34)(35).…”
Section: Ensayos De Durabilidadunclassified