Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks

Precise anticipation of the ultimate bearing capacity (Qu)for rock-socketed piles is an important task in civil engineering, construction, and the design of foundations. The approach adopted here is new and solves the problem using KNN combined with two modern nature-inspired optimization frameworks...

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Main Authors: Bianca Damico, Matteo Conti
Format: Article
Language:English
Published: Bilijipub publisher 2024-12-01
Series:Advances in Engineering and Intelligence Systems
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Online Access:https://aeis.bilijipub.com/article_212431_2b56b323441bbd2ba8049e1c555a1598.pdf
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author Bianca Damico
Matteo Conti
author_facet Bianca Damico
Matteo Conti
author_sort Bianca Damico
collection DOAJ
description Precise anticipation of the ultimate bearing capacity (Qu)for rock-socketed piles is an important task in civil engineering, construction, and the design of foundations. The approach adopted here is new and solves the problem using KNN combined with two modern nature-inspired optimization frameworks, namely the Honey Badger Algorithm (HBA) and Equilibrium Slime Mould Algorithm (ESMA). The hybrid model in this paper combines the K-nearest neighbor with HBA and ESMA. The main objective was to improve the prediction performance of Qu for rock-socketed piles. This hybridization technique utilized the KNN model's strengths and two new optimizers to overcome the inherent uncertainty related to all variables that affect bearing capacity. These HBA and ESMA frameworks were proven capable of performing decent tuning of the KNN model, while their outcomes showed significantly improved predictive power. The hybrid model realized high accuracy for Qu estimation by considering various influencing parameters like soil properties, pile dimensions, and load conditions. The output of this study adds to the development in the area of geotechnical engineering by providing a sound methodology for Qu estimation in rock-socketed piles. The hybridization technique is a promising avenue for future exploration and practical applications, especially the KNHB frameworks that have obtained reliable outcomes by their very accurate R2 of 0.9945 and RMSE of 771.0886Outcomes support engineers and designers in formulating educated judgments concerning the foundation in soft soil environments. Ultimately, this exploration promotes safer and more efficient construction practices by minimizing risks associated with foundation failures.
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spelling doaj-art-2f8f698f63ac4af1a48ae2482378adb52025-02-12T08:48:16ZengBilijipub publisherAdvances in Engineering and Intelligence Systems2821-02632024-12-0100304678110.22034/aeis.2024.488597.1252212431Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based FrameworksBianca Damico0Matteo Conti1Department of Civil and Environmental Engineering, Polytechnic University of Milan, Milan, ItalyDepartment of Civil and Environmental Engineering, Polytechnic University of Milan, Milan, ItalyPrecise anticipation of the ultimate bearing capacity (Qu)for rock-socketed piles is an important task in civil engineering, construction, and the design of foundations. The approach adopted here is new and solves the problem using KNN combined with two modern nature-inspired optimization frameworks, namely the Honey Badger Algorithm (HBA) and Equilibrium Slime Mould Algorithm (ESMA). The hybrid model in this paper combines the K-nearest neighbor with HBA and ESMA. The main objective was to improve the prediction performance of Qu for rock-socketed piles. This hybridization technique utilized the KNN model's strengths and two new optimizers to overcome the inherent uncertainty related to all variables that affect bearing capacity. These HBA and ESMA frameworks were proven capable of performing decent tuning of the KNN model, while their outcomes showed significantly improved predictive power. The hybrid model realized high accuracy for Qu estimation by considering various influencing parameters like soil properties, pile dimensions, and load conditions. The output of this study adds to the development in the area of geotechnical engineering by providing a sound methodology for Qu estimation in rock-socketed piles. The hybridization technique is a promising avenue for future exploration and practical applications, especially the KNHB frameworks that have obtained reliable outcomes by their very accurate R2 of 0.9945 and RMSE of 771.0886Outcomes support engineers and designers in formulating educated judgments concerning the foundation in soft soil environments. Ultimately, this exploration promotes safer and more efficient construction practices by minimizing risks associated with foundation failures.https://aeis.bilijipub.com/article_212431_2b56b323441bbd2ba8049e1c555a1598.pdfultimate bearing capacityk-nearest neighborhoney badger algorithmequilibrium slime mold algorithm
spellingShingle Bianca Damico
Matteo Conti
Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks
Advances in Engineering and Intelligence Systems
ultimate bearing capacity
k-nearest neighbor
honey badger algorithm
equilibrium slime mold algorithm
title Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks
title_full Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks
title_fullStr Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks
title_full_unstemmed Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks
title_short Estimation of the Ultimate Bearing Capacity of the Rocks via Utilization of the AI-Based Frameworks
title_sort estimation of the ultimate bearing capacity of the rocks via utilization of the ai based frameworks
topic ultimate bearing capacity
k-nearest neighbor
honey badger algorithm
equilibrium slime mold algorithm
url https://aeis.bilijipub.com/article_212431_2b56b323441bbd2ba8049e1c555a1598.pdf
work_keys_str_mv AT biancadamico estimationoftheultimatebearingcapacityoftherocksviautilizationoftheaibasedframeworks
AT matteoconti estimationoftheultimatebearingcapacityoftherocksviautilizationoftheaibasedframeworks