Prediction of the Bearing Capacity of Composite Grounds Made of Geogrid-Reinforced Sand over Encased Stone Columns Floating in Soft Soil Using a White-Box Machine Learning Model

Author:

Zeini Husein Ali1,Lwti Nabeel Katfan2,Imran Hamza3ORCID,Henedy Sadiq N.4,Bernardo Luís Filipe Almeida5ORCID,Al-Khafaji Zainab6

Affiliation:

1. Department of Civil Engineering, Najaf Technical Institute, Al-Furat Al-Awsat Technical University, Najaf 54003, Iraq

2. Department of Quality Assurance and University Performance, Al-Furat Al-Awsat Technical University, Najaf 54003, Iraq

3. Department of Environmental Science, College of Energy and Environmental Science, Alkarkh University of Science, Baghdad 10081, Iraq

4. Department of Civil Engineering, Mazaya University College, Nasiriya City 64001, Iraq

5. Department of Civil Engineering and Architecture, University of Beira Interior, 6201-001 Covilha, Portugal

6. Building and Construction Techniques Engineering Department, Al-Mustaqbal University College, Hillah 51001, Iraq

Abstract

Stone columns have been extensively advocated as a traditional approach to increase the undrained bearing capacity and reduce the settlement of footings sitting on cohesive ground. However, due to the complex interaction between the soil and the stone columns, there currently needs to be a commonly acknowledged approach that can be used to precisely predict the undrained bearing capacity of the system. For this reason, the bearing capacity of a sandy bed reinforced with geogrid and sitting above a collection of geogrid-encased stone columns floating in soft clay was studied in this research. Using a white-box machine learning (ML) technique called Multivariate Polynomial Regression (MPR), this work aims to develop a model for predicting the bearing capacity of the referred foundation system. For this purpose, two hundred and forty-five experimental results were collected from the literature. In addition, the model was compared to two other ML models, namely, a black-box model known as Random Forest (RF) and a white-box ML model called Linear Regression (LR). In terms of R2 (coefficient of determination) and RMSE (Root Mean Absolute Error) values, the newly proposed model outperforms the two other referred models and demonstrates robust estimation capabilities. In addition, a parametric analysis was carried out to determine the contribution of each input variable and its relative significance on the output.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference45 articles.

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2. Raithel, M., Kempfert, H., and Kirchner, A. (2002, January 22–27). Geotextile-encased columns (GEC) for foundation of a dike on very soft soils. Proceedings of the 7th International Conference on Geosynthetics, Paris, France.

3. Model tests on geosynthetic-encased stone columns;Murugesan;Geosynth. Int.,2007

4. Geosynthetic-encased stone columns: Numerical evaluation;Murugesan;Geotext. Geomembr.,2006

5. Laboratory analysis of encased stone columns;Miranda;Geotext. Geomembr.,2016

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