Prediction of elastic settlement of rectangular footing using machine learning techniques

IF 1.827 Q2 Earth and Planetary Sciences
Rashid Mustafa, Ankit Anshuman
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引用次数: 0

Abstract

Ensuring the structural integrity and safety of foundations depends on the accurate prediction of elastic settlement. In this study, machine learning (ML) techniques are used to predict the elastic or immediate settlement of a rectangular footing in cohesionless soil. Elastic settlement occurs when an imposed load compresses the soil initially beneath a footing, causing a drop in volume and subsequent settling of the soil as the particles reorganize and compress under pressure. The aim of this study is to propose a high-performance machine learning model to predict settlement. This study uses a dataset of 200 foundation settlements to compare the K-nearest neighbor (KNN), multi-layer perceptron (MLP), and support vector regression (SVR) techniques. Five input parameters are considered, namely foundation width (B), foundation length (L), foundation depth (D), load intensity (q), and average SPT blow count (N), which are used to predict the output. The predictive power of the models is assessed using various performance parameters, such as the coefficient of determination (R2), Willmott’s index (WI), A-20 index, variance account factor (VAF), scatter index (SI), root mean square error (RMSE), mean absolute error (MAE), and median absolute deviation (MAD). Additionally, other analyses are performed, including rank analysis, radar diagram, regression plot, reliability index, William’s plot, and error matrix, to assess the best predicting model. From this study, it is observed that the performance of SVR model is better due to its higher value of R2 (tr = 0.879, ts = 0.784, and overall = 0.861) and the least value of RMSE (tr = 0.79, ts = 0.068, and overall = 0.101) while predicting the elastic settlement of the footing. To examine the influence of different input parameters on the output, sensitivity analysis is performed, revealing that q is the most influential parameter among all the inputs followed by B, L, D, and N-value.

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来源期刊
Arabian Journal of Geosciences
Arabian Journal of Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
自引率
0.00%
发文量
1587
审稿时长
6.7 months
期刊介绍: The Arabian Journal of Geosciences is the official journal of the Saudi Society for Geosciences and publishes peer-reviewed original and review articles on the entire range of Earth Science themes, focused on, but not limited to, those that have regional significance to the Middle East and the Euro-Mediterranean Zone. Key topics therefore include; geology, hydrogeology, earth system science, petroleum sciences, geophysics, seismology and crustal structures, tectonics, sedimentology, palaeontology, metamorphic and igneous petrology, natural hazards, environmental sciences and sustainable development, geoarchaeology, geomorphology, paleo-environment studies, oceanography, atmospheric sciences, GIS and remote sensing, geodesy, mineralogy, volcanology, geochemistry and metallogenesis.
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