Estimation of the Uplift Resistance for an Under-Reamed Pile in Dry Sand Using Machine Learning

Author:

Dadhich Sharad1,Sharma Jitendra Kumar2,Madhira Madhav3

Affiliation:

1. MTech student, Department of Civil Engineering , Rajasthan Technical University , Kota

2. Professor, Department of Civil Engineering , Rajasthan Technical University , Kota

3. AICTE-INAE Distinguished Visiting Professor, Professor Emeritus, JNT University ; Visiting Professor IIT , Hyderabad

Abstract

Abstract Under-reamed piles are extensively used to resist uplift forces and settlements. The objective of the present study is to develop various machine learning models (linear and non-linear) and determine the best model to estimate the ultimate uplift resistance of under-reamed piles embedded in cohesionless soil. The machine learning models were developed considering the following input parameters: the density index, dry density, base diameter, angle of an enlarged base with a vertical axis, shaft diameter, and embedment ratio. A linear equation is proposed to estimate the ultimate uplift resistance based on Multivariate Linear Regression analysis with a mean absolute error equaling 0.25kN and 0.50kN for loose and dense sands respectively. The Decision Tree Regression model provides an excellent degree of accuracy with a mean absolute error of 0.02kN and 0.02kN in cases of loose and dense sands respectively.

Publisher

Walter de Gruyter GmbH

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