2021
DOI: 10.1016/j.compstruc.2021.106640
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Neural network-aided prediction of post-cracking tensile strength of fibre-reinforced concrete

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Cited by 32 publications
(10 citation statements)
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“…strength of the FRC, resulting from a cross-sectional analysis, for instance; (2) defining the design-oriented constitutive equation of the FRC [53][54][55] for dealing with cross-sectional and/or finite element analyses; (3) deriving models for reliability analyses and partial safety factor calibration [56][57][58] ; and (4) establish correlations between characterization tests (i.e., 3PBTs in notched beams, double punching, DEWS, Montevideo tests 59,60 ) for FRC. 33,[61][62][63] As an example of the utility of the database, in Figure 5a,b the relationship between volume of fibers (per volume of concrete, V f ) and residual flexural strength of the FRC for a crack mouth opening displacement (CMOD) of 0.5 mm (f R1 ) as well as the relationship between f R3 (CMOD = 2.5 mm) and f R1 , respectively, are presented for steel and synthetic macrofibres. These relationships can be used for pre-design and/or economic-technical suitability of the use of fibers for a certain structural application.…”
Section: A Materials Application Of the Fib Repository: Residual Flex...mentioning
confidence: 99%
“…strength of the FRC, resulting from a cross-sectional analysis, for instance; (2) defining the design-oriented constitutive equation of the FRC [53][54][55] for dealing with cross-sectional and/or finite element analyses; (3) deriving models for reliability analyses and partial safety factor calibration [56][57][58] ; and (4) establish correlations between characterization tests (i.e., 3PBTs in notched beams, double punching, DEWS, Montevideo tests 59,60 ) for FRC. 33,[61][62][63] As an example of the utility of the database, in Figure 5a,b the relationship between volume of fibers (per volume of concrete, V f ) and residual flexural strength of the FRC for a crack mouth opening displacement (CMOD) of 0.5 mm (f R1 ) as well as the relationship between f R3 (CMOD = 2.5 mm) and f R1 , respectively, are presented for steel and synthetic macrofibres. These relationships can be used for pre-design and/or economic-technical suitability of the use of fibers for a certain structural application.…”
Section: A Materials Application Of the Fib Repository: Residual Flex...mentioning
confidence: 99%
“…[23][24][25][26][27] ML performs a high accuracy and efficiency in modeling the nonlinear relationship between predictors and outcome variables, and thus it is believed to provide an obvious advantage over the traditional regression approach. 23 Despite a large number of studies using ML to estimate mechanical properties, such as tensile strength, compressive strength, and flexural strength of SHFRCCs, 28,29 very limited research has focused on predicting fracture energy of SHFRCCs in tension.…”
Section: Introductionmentioning
confidence: 99%
“…They obtained that the coefficient of correlation values of the slump flow, L‐box ratio, V‐funnel, and compressive strength obtained from exponential RBF based SVR model were higher than those of the RBF based SVR model with 0.965, 0.954, 0.979 and 0.9773, respectively. Ikumi et al 26 devised a multilayer perceptron neural network model and predicted the post‐cracking tensile strength of fiber reinforced concrete by using a database including large variety of concrete mixes such as compressive strength, specimen dimension and geometry as well as the fiber content, shape, aspect ratio, tensile strength, and material. Their derived model yielded predictive accuracies of 0.87, 0.86, and 0.83 for the post‐cracking tensile strengths obtained for a vertical displacement of 2, 3 and 4 mm, respectively.…”
Section: Introductionmentioning
confidence: 99%
“…Recently, many researchers [24][25][26][27][28][29][30][31][32] have focused on applying the machine learning (ML) model and deep learning (DL) model to estimate the mechanical properties of concrete. Al-Shamiri et al 24 devised ELM and ANN model to predict the compressive strength of high-strength concrete by using the input variables of cement, aggregates, water, and superplasticizer.…”
Section: Introductionmentioning
confidence: 99%
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