Pullout behaviour of geogrids is critical to understand for the design of mechanically stabilized earth walls. The pullout coefficients are determined through laboratory testing on geogrids embedded in structural fill. Random forest (RF) is a data-driven ensemble learning method that uses decision trees for classification and regression tasks. In the present study, the use of the RF regression technique for estimation of pullout coefficient of geogrid embedded in different structural fills and at variable normal stress based on 198 test results has been investigated using five-fold cross-validation. 80% of the data has been trained on the model algorithm and the accuracy of the model is then tested on 20% of the remaining dataset. The performance of the model has been checked using statistical indices, namely R2, mean square error, as well as external validation methods. The validity of the model has also been checked against laboratory tests conducted on geogrid embedded in four different fills. The results of the RF model have been compared to results obtained with three other regression models, namely, Multivariate Adaptive Regression Splines, Multilayer Perceptron, and Decision Tree Regressor. The results demonstrate the superiority of the RF-based regression model in predicting pullout coefficient values of geogrid.
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August 2022
Research Article|
March 09 2022
Novel application of machine learning for estimation of pullout coefficient of geogrid Available to Purchase
A. Pant;
A. Pant
1Research Associate, Department of Civil Engineering, Indian Institute of Technology Delhi, India, E-mail: aali.pant@gmail.com (corresponding author)
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G.V. Ramana
G.V. Ramana
2Professor, Department of Civil Engineering, Indian Institute of Technology Delhi, India, E-mail: ramana@civil.iitd.ac.in
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Publisher: Emerald Publishing
Received:
June 02 2021
Accepted:
September 15 2021
Online ISSN: 1751-7613
Print ISSN: 1072-6349
© 2021 Thomas Telford Ltd
2021
Geosynthetics International (2022) 29 (4): 342–355.
Article history
Received:
June 02 2021
Accepted:
September 15 2021
Citation
Pant A, Ramana G (2022), "Novel application of machine learning for estimation of pullout coefficient of geogrid". Geosynthetics International, Vol. 29 No. 4 pp. 342–355, doi: https://doi.org/10.1680/jgein.21.00021a
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