The interaction between soils and geosynthetics plays an important role in the applications of these materials for reinforcement in geotechnical engineering. The complexities of soil-geosynthetic interactions vary depending on the type and properties of both the geosynthetic and the soil. This paper introduces a machine learning approach, specifically a random forest algorithm, for predicting interface friction angles. The dataset comprises 495 interfaces involving geomembranes and sand, with 14 influencing parameters recorded for each interface, influencing the shear strength outcome. In the analysis, Pearson's correlation coefficient is employed to measure the linear interdependence between each pair of input-input and input-output variables. Following the linear regression analysis, an optimized random forest is utilized to project the interface friction angle. The random forest algorithm divides the selected data into training and testing sets, and only 3% of the training set and 6% of the testing set exceed ±5° from the actual records. The coefficient of determination (R2) indicates strong agreement between the predicted and laboratory study friction angles, with R2 = 0.93 for the training set and R2 = 0.92 for the testing set. Consequently, the random forest algorithm demonstrates effectiveness in predicting interface friction angles.
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April 2025
Research Article|
May 10 2024
A comparison between geomembrane-sand tests and machine learning predictions Available to Purchase
A. T. Tanga;
A. T. Tanga
1 PhD student, Department of Civil and Environmental Engineering, FT, University of Brasilia, Brasilia, DF, Brazil, E-mail: abenitefera@gmail.com (corresponding author)
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G. L. S. Araújo;
G. L. S. Araújo
2 Associate Professor, Department of Civil and Environmental Engineering, FT, University of Brasilia, Brasilia, DF, Brazil, E-mail: gregorio@unb.br
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F. Evangelista Junior
F. Evangelista Junior
3 Associate Professor, Department of Civil and Environmental Engineering, FT, University of Brasilia, Brasilia, DF, Brazil, E-mail: fejr@unb.br
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Publisher: Emerald Publishing
Received:
January 26 2023
Accepted:
March 11 2024
Online ISSN: 1751-7613
Print ISSN: 1072-6349
© 2025 Emerald Publishing Limited
2025
Geosynthetics International (2025) 32 (2): 180–193.
Article history
Received:
January 26 2023
Accepted:
March 11 2024
Citation
Tanga AT, S. Araújo GL, Evangelista Junior F (2025), "A comparison between geomembrane-sand tests and machine learning predictions". Geosynthetics International, Vol. 32 No. 2 pp. 180–193, doi: https://doi.org/10.1680/jgein.23.00016
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