A Comparative Study of Random Forest and Genetic Engineering Programming for the Prediction of Compressive Strength of High Strength Concrete (HSC)
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- @Article{farooq:2020:AS,
-
author = "Furqan Farooq and Muhammad {Nasir Amin} and
Kaffayatullah Khan and Muhammad {Rehan Sadiq} and
Muhammad {Faisal Javed} and Fahid Aslam and
Rayed Alyousef",
-
title = "A Comparative Study of Random Forest and Genetic
Engineering Programming for the Prediction of
Compressive Strength of High Strength Concrete
{(HSC)}",
-
journal = "Applied Sciences",
-
year = "2020",
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volume = "10",
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number = "20",
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keywords = "genetic algorithms, genetic programming, gene
expression programming",
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ISSN = "2076-3417",
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URL = "https://www.mdpi.com/2076-3417/10/20/7330",
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DOI = "doi:10.3390/app10207330",
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abstract = "Supervised machine learning and its algorithm is an
emerging trend for the prediction of mechanical
properties of concrete. This study uses an ensemble
random forest (RF) and gene expression programming
(GEP) algorithm for the compressive strength prediction
of high strength concrete. The parameters include
cement content, coarse aggregate to fine aggregate
ratio, water, and superplasticizer. Moreover,
statistical analyses like MAE, RSE, and RRMSE are used
to evaluate the performance of models. The RF ensemble
model outbursts in performance as it uses a weak base
learner decision tree and gives an adamant
determination of coefficient R2 = 0.96 with fewer
errors. The GEP algorithm depicts a good response in
between actual values and prediction values with an
empirical relation. An external statistical check is
also applied on RF and GEP models to validate the
variables with data points. Artificial neural networks
(ANNs) and decision tree (DT) are also used on a given
data sample and comparison is made with the
aforementioned models. Permutation features using
python are done on the variables to give an influential
parameter. The machine learning algorithm reveals a
strong correlation between targets and predicts with
less statistical measures showing the accuracy of the
entire model.",
-
notes = "also known as \cite{app10207330}",
- }
Genetic Programming entries for
Furqan Farooq
Muhammad Nasir Amin
Kaffayatullah Khan
Muhammad Rehan Sadiq
Muhammad Faisal Javed
Fahid Aslam
Rayed Alyousef
Citations