Machine Learning Approach for Prediction of Lateral Confinement Coefficient of CFRP-Wrapped RC Columns
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- @Article{xue:2023:Symmetry,
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author = "Xingsi Xue and Celestine Makota and
Osamah Ibrahim Khalaf and Jagan Jayabalan and Pijush Samui and
Ghaida Muttashar Abdulsahib",
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title = "Machine Learning Approach for Prediction of Lateral
Confinement Coefficient of {CFRP-Wrapped} {RC}
Columns",
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journal = "Symmetry",
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year = "2023",
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volume = "15",
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number = "2",
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pages = "Article No. 545",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2073-8994",
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URL = "https://www.mdpi.com/2073-8994/15/2/545",
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DOI = "doi:10.3390/sym15020545",
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abstract = "Materials have a significant role in creating
structures that are durable, valuable and possess
symmetry engineering properties. Premium quality
materials establish an exemplary environment for every
situation. Among the composite materials in
constructions, carbon fiber reinforced polymer (CFRP)
is one of best materials which provides symmetric
superior strength and stiffness to reinforced concrete
structures. For the structure to be confining, the
region jeopardizes seismic loads and axial force,
specifically on columns, with limited proportion of
ties or stirrups implemented to loftier ductility and
brittleness. The failure and buckling of columns with
CFRP has been studied by many researchers and is
ongoing to determine ways columns can be retrofitted.
This article symmetrically integrates two disciplines,
specifically materials (CFRP) and computer application
(machine learning). Technically, predicting the lateral
confinement coefficient (Ks) for reinforced concrete
columns in designs plays a vital role. Therefore,
machine learning models like genetic programming (GP),
minimax probability machine regression (MPMR) and deep
neural networks (DNN) were used to determine the Ks
value of CFRP-wrapped RC columns. In order to compute
Ks value, parameters such as column width, length,
corner radius, thickness of CFRP, compressive strength
of the unconfined concrete and elastic modulus of CFRP
act as stimulants. The adopted machine learning models
used 293 datasets of square and rectangular RC columns
for the prediction of Ks. Among the developed models,
GP and MPMR provide encouraging performances with
higher R values of 0.943 and 0.941; however, the
statistical indices proved that the GP model
outperforms other models with better precision (R2 =
0.89) and less errors (RMSE = 0.056 and NMBE = 0.001).
Based on the evaluation of statistical indices, rank
analysis was carried out, in which GP model secured
more points and ranked top.",
-
notes = "also known as \cite{sym15020545}",
- }
Genetic Programming entries for
Xingsi Xue
Celestine Makota
Osamah Ibrahim Khalaf
Jagan Jayabalan
Pijush Samui
Ghaida Muttashar Abdulsahib
Citations