Prediction of Swelling Index Using Advanced Machine Learning Techniques for Cohesive Soils
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- @Article{benbouras:2021:AS,
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author = "Mohammed {Amin Benbouras} and
Alexandru-Ionut Petrisor",
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title = "Prediction of Swelling Index Using Advanced Machine
Learning Techniques for Cohesive Soils",
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journal = "Applied Sciences",
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year = "2021",
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volume = "11",
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number = "2",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2076-3417",
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URL = "https://www.mdpi.com/2076-3417/11/2/536",
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DOI = "doi:10.3390/app11020536",
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abstract = "Several attempts have been made for estimating the
vital swelling index parameter conducted by the
expensive and time-consuming Oedometer test. However,
they have only focused on the neuron network neglecting
other advanced methods that could have increased the
predictive capability of models. In order to overcome
this limitation, the current study aims to elaborate an
alternative model for estimating the swelling index
from geotechnical physical parameters. The reliability
of the approach is tested through several advanced
machine learning methods like Extreme Learning Machine,
Deep Neural Network, Support Vector Regression, Random
Forest, LASSO regression, Partial Least Square
Regression, Ridge Regression, Kernel Ridge, Stepwise
Regression, Least Square Regression, and genetic
Programing. These methods have been applied for
modelling samples consisting of 875 Oedometer tests.
Firstly, principal component analysis, Gamma test, and
forward selection are used to reduce the input variable
numbers. Afterward, the advanced techniques have been
applied for modelling the proposed optimal inputs, and
their accuracy models were evaluated through six
statistical indicators and using K-fold cross
validation approach. The comparative study shows the
efficiency of FS-RF model. This elaborated model
provided the most appropriate prediction, closest to
the experimental values compared with other models and
formulae proposed by the previous studies.",
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notes = "also known as \cite{app11020536}",
- }
Genetic Programming entries for
Mohammed Amin Benbouras
Alexandru-Ionut Petrisor
Citations