Machine Learning-Based Estimation of the Compressive Strength of Self-Compacting Concrete: A Multi-Dataset Study
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- @Article{hoang:2022:Mathematics,
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author = "Nhat-Duc Hoang",
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title = "Machine Learning-Based Estimation of the Compressive
Strength of Self-Compacting Concrete: A Multi-Dataset
Study",
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journal = "Mathematics",
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year = "2022",
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volume = "10",
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number = "20",
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pages = "Article No. 3771",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2227-7390",
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URL = "https://www.mdpi.com/2227-7390/10/20/3771",
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DOI = "doi:10.3390/math10203771",
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abstract = "This paper aims at performing a comparative study to
investigate the predictive capability of machine
learning (ML) models used for estimating the
compressive strength of self-compacting concrete (SCC).
Seven prominent ML models, including deep neural
network regression (DNNR), extreme gradient boosting
machine (XGBoost), gradient boosting machine (GBM),
adaptive boosting machine (AdaBoost), support vector
regression (SVR), Levenberg–Marquardt artificial
neural network (LM-ANN), and genetic programming (GP),
are employed. Four experimental datasets, compiled in
previous studies, are used to construct the ML-based
methods. The models’ generalisation capabilities
are reliably evaluated by 20 independent runs.
Experimental results point out the superiority of the
DNNR, which has excelled other models in three out of
four datasets. The XGBoost is the second-best model,
which has gained the first rank in one dataset. The
outcomes point out the great potential of the used ML
approaches in modelling the compressive strength of
SCC. In more details, the coefficient of determination
(R2) surpasses 0.8 and the mean absolute percentage
error (MAPE) is always below 15percent for all
datasets. The best results of R2 and MAPE are 0.93 and
7.2percent, respectively.",
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notes = "also known as \cite{math10203771}",
- }
Genetic Programming entries for
Nhat-Duc Hoang
Citations