Steel and Composite Structures
Volume 53, Number 4, 2024, pages 377-399
DOI: 10.12989/scs.2024.53.4.377
Hybrid predictive machine learning models to evaluate the bearing capacity of concrete and steel piles
Mesut Gör
Abstract
Accurately predicting the bearing capacity of steel and concrete piles is a critical factor in the design and safety of
deep foundations. This study presents a novel application of hybrid machine learning models, specifically Invasive Weed
Optimization with Multilayer Perceptron (IWOMLP) and Harris Hawks Optimization with Multilayer Perceptron (HHOMLP),
for enhancing the prediction of pile bearing capacity. These hybrid models integrate evolutionary optimization algorithms with
neural networks, aiming to improve prediction accuracy by addressing the nonlinearities and complexities in pile-soil
interaction. The study compares the performance of IWOMLP and HHOMLP against conventional machine learning methods
such as Simple Linear Regression, Gaussian Processes, Random Forest, and others. The training and testing phases evaluate the
models based on various error metrics, including R2, RMSE, MAE, and additional advanced metrics. The key innovation in this
research lies in combining optimization techniques with neural networks, which significantly enhances the model's ability to
predict complex geotechnical properties. The primary goal of this work is to develop a reliable, data-driven approach for
accurate pile capacity prediction, providing a more precise tool for geotechnical engineers to improve decision-making in
foundation design. Results indicate that the hybrid models, particularly IWOMLP, outperform traditional approaches, achieving
higher R2 and lower RMSE values. This research demonstrates the potential of hybrid models to advance geotechnical
engineering practices by delivering more accurate and reliable predictions.
Key Words
artificial neural network; driven piles; metaheuristic; ultimate bearing capacity
Address
Mesut Gör:Department of Civil Engineering, Engineering Faculty, Firat University, 23100 Elazig, Türkiye