Probabilistic Design of Retaining Wall Using Machine Learning Methods

Retaining walls are geostructures providing permanent lateral support to vertical slopes of soil, and it is essential to analyze the failure probability of such a structure. To keep the importance of geotechnics on par with the advancement in technology, the implementation of artificial intelligence...

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Published in:Applied Sciences
Main Authors: Pratishtha Mishra, Pijush Samui, Elham Mahmoudi
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/12/5411
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author Pratishtha Mishra
Pijush Samui
Elham Mahmoudi
author_facet Pratishtha Mishra
Pijush Samui
Elham Mahmoudi
author_sort Pratishtha Mishra
collection DOAJ
container_title Applied Sciences
description Retaining walls are geostructures providing permanent lateral support to vertical slopes of soil, and it is essential to analyze the failure probability of such a structure. To keep the importance of geotechnics on par with the advancement in technology, the implementation of artificial intelligence techniques is done for the reliability analysis of the structure. Designing the structure based on the probability of failure leads to an economical design. Machine learning models used for predicting the factor of safety of the wall are Emotional Neural Network, Multivariate Adaptive Regression Spline, and SOS–LSSVM. The First-Order Second Moment Method is used for calculating the reliability index of the wall. In addition, these models are assessed based on the results they produce, and the best model among these is concluded for extensive field study in the future. The overall performance evaluation through various accuracy quantification determined SOS–LSSVM as the best model. The obtained results show that the reliability index calculated by the AI methods differs from the reference values by less than 2%. These methodologies have made the problems facile by increasing the precision of the result. Artificial intelligence has removed the cumbersome calculations in almost all the acquainted fields and disciplines. The techniques used in this study are evolved versions of some older algorithms. This work aims to clarify the probabilistic approach toward designing the structures, using the artificial intelligence to simplify the practical evaluations.
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spelling doaj-art-b83e95bb4f4d43398dec3cc2ea9d4ac62025-08-19T23:09:43ZengMDPI AGApplied Sciences2076-34172021-06-011112541110.3390/app11125411Probabilistic Design of Retaining Wall Using Machine Learning MethodsPratishtha Mishra0Pijush Samui1Elham Mahmoudi2Department of Civil Engineering, National Institute of Technology, Patna, Bihar 800005, IndiaDepartment of Civil Engineering, National Institute of Technology, Patna, Bihar 800005, IndiaDepartment of Civil and Environmental Engineering, Ruhr-Universität Bochum, 44801 Bochum, GermanyRetaining walls are geostructures providing permanent lateral support to vertical slopes of soil, and it is essential to analyze the failure probability of such a structure. To keep the importance of geotechnics on par with the advancement in technology, the implementation of artificial intelligence techniques is done for the reliability analysis of the structure. Designing the structure based on the probability of failure leads to an economical design. Machine learning models used for predicting the factor of safety of the wall are Emotional Neural Network, Multivariate Adaptive Regression Spline, and SOS–LSSVM. The First-Order Second Moment Method is used for calculating the reliability index of the wall. In addition, these models are assessed based on the results they produce, and the best model among these is concluded for extensive field study in the future. The overall performance evaluation through various accuracy quantification determined SOS–LSSVM as the best model. The obtained results show that the reliability index calculated by the AI methods differs from the reference values by less than 2%. These methodologies have made the problems facile by increasing the precision of the result. Artificial intelligence has removed the cumbersome calculations in almost all the acquainted fields and disciplines. The techniques used in this study are evolved versions of some older algorithms. This work aims to clarify the probabilistic approach toward designing the structures, using the artificial intelligence to simplify the practical evaluations.https://www.mdpi.com/2076-3417/11/12/5411retaining wallneural networkreliability analysis
spellingShingle Pratishtha Mishra
Pijush Samui
Elham Mahmoudi
Probabilistic Design of Retaining Wall Using Machine Learning Methods
retaining wall
neural network
reliability analysis
title Probabilistic Design of Retaining Wall Using Machine Learning Methods
title_full Probabilistic Design of Retaining Wall Using Machine Learning Methods
title_fullStr Probabilistic Design of Retaining Wall Using Machine Learning Methods
title_full_unstemmed Probabilistic Design of Retaining Wall Using Machine Learning Methods
title_short Probabilistic Design of Retaining Wall Using Machine Learning Methods
title_sort probabilistic design of retaining wall using machine learning methods
topic retaining wall
neural network
reliability analysis
url https://www.mdpi.com/2076-3417/11/12/5411
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AT pijushsamui probabilisticdesignofretainingwallusingmachinelearningmethods
AT elhammahmoudi probabilisticdesignofretainingwallusingmachinelearningmethods