2024
DOI: 10.3390/buildings14020377
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Prediction of the Compressive Strength of Vibrocentrifuged Concrete Using Machine Learning Methods

Alexey N. Beskopylny,
Sergey A. Stel’makh,
Evgenii M. Shcherban’
et al.

Abstract: The determination of mechanical properties for different building materials is a highly relevant and practical field of application for machine learning (ML) techniques within the construction sector. When working with vibrocentrifuged concrete products and structures, it is crucial to consider factors related to the impact of aggressive environments. Artificial intelligence methods can enhance the prediction of vibrocentrifuged concrete properties through the use of specialized machine learning algorithms for… Show more

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Cited by 6 publications
(4 citation statements)
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“…The prediction error plots presented in Figure 10 reflect the distribution of actual strength values for samples from the test set, in comparison with the values obtained as a result of prediction using the implemented machine learning algorithms. The red lines show the boundary ∆ = ±5 MPa [10]. The worst fit into a given "tube" of acceptable values, as well as a low value of the coefficient of determination, is observed in the RD model trained on the original dataset.…”
Section: Results Of the Used Machine Learning Methodsmentioning
confidence: 99%
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“…The prediction error plots presented in Figure 10 reflect the distribution of actual strength values for samples from the test set, in comparison with the values obtained as a result of prediction using the implemented machine learning algorithms. The red lines show the boundary ∆ = ±5 MPa [10]. The worst fit into a given "tube" of acceptable values, as well as a low value of the coefficient of determination, is observed in the RD model trained on the original dataset.…”
Section: Results Of the Used Machine Learning Methodsmentioning
confidence: 99%
“…X 1 -number of freezing-thawing cycles; X 2 -chloride content, mg/dm 3 ; X 3 -sulfate content, mg/dm 3 ; X 4 -number of moistening-drying cycles. All of the above factors directly affect the strength of the building material under study [10,48,49]. From the point of view of construction, these parameters are sufficient to assess strength under the influence of an aggressive environment, since the data obtained have undergone mathematical statistical processing and the number of tests performed corresponds to the methods of regulatory and technical documents and, moreover, exceeds the standard quantity.…”
Section: Description and Analysis Of The Datasetmentioning
confidence: 99%
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“…The YOLOv5 software package is widely used to solve the problem of finding defects in buildings and structures made of concrete products using machine vision technologies and artificial intelligence instead of manual determination [4][5][6][7]. For this purpose, the lightweight model You Only Look Once V5 (YOLOv5) and adaptive spatial fusion of capabilities (Adaptively Spatial Feature Fusion, ASFF) are used.…”
Section: Introductionmentioning
confidence: 99%