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Exploring the Potential of Machine Learning in Stochastic Reliability Modelling for Reinforced Soil Foundations
by
Abdoun, Tarek
, Raja, Muhammad Nouman Amjad
, El-Sekelly, Waleed
in
Analysis
/ Artificial intelligence
/ Case studies
/ Civil engineering
/ Coefficient of variation
/ Engineering
/ Finite element method
/ finite-element-based modelling
/ Foundations
/ Gene expression
/ GEP
/ Green development
/ Investigations
/ Load
/ Machine learning
/ Mathematical analysis
/ Mathematical models
/ Neural networks
/ Numerical models
/ Parameter sensitivity
/ probability of failure
/ Random variables
/ reinforced soil foundations
/ Reinforced soils
/ Reliability analysis
/ Risk analysis
/ Sensitivity analysis
/ settlement analysis
/ Shear strength
/ Statistical analysis
2024
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Exploring the Potential of Machine Learning in Stochastic Reliability Modelling for Reinforced Soil Foundations
by
Abdoun, Tarek
, Raja, Muhammad Nouman Amjad
, El-Sekelly, Waleed
in
Analysis
/ Artificial intelligence
/ Case studies
/ Civil engineering
/ Coefficient of variation
/ Engineering
/ Finite element method
/ finite-element-based modelling
/ Foundations
/ Gene expression
/ GEP
/ Green development
/ Investigations
/ Load
/ Machine learning
/ Mathematical analysis
/ Mathematical models
/ Neural networks
/ Numerical models
/ Parameter sensitivity
/ probability of failure
/ Random variables
/ reinforced soil foundations
/ Reinforced soils
/ Reliability analysis
/ Risk analysis
/ Sensitivity analysis
/ settlement analysis
/ Shear strength
/ Statistical analysis
2024
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Exploring the Potential of Machine Learning in Stochastic Reliability Modelling for Reinforced Soil Foundations
by
Abdoun, Tarek
, Raja, Muhammad Nouman Amjad
, El-Sekelly, Waleed
in
Analysis
/ Artificial intelligence
/ Case studies
/ Civil engineering
/ Coefficient of variation
/ Engineering
/ Finite element method
/ finite-element-based modelling
/ Foundations
/ Gene expression
/ GEP
/ Green development
/ Investigations
/ Load
/ Machine learning
/ Mathematical analysis
/ Mathematical models
/ Neural networks
/ Numerical models
/ Parameter sensitivity
/ probability of failure
/ Random variables
/ reinforced soil foundations
/ Reinforced soils
/ Reliability analysis
/ Risk analysis
/ Sensitivity analysis
/ settlement analysis
/ Shear strength
/ Statistical analysis
2024
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Exploring the Potential of Machine Learning in Stochastic Reliability Modelling for Reinforced Soil Foundations
Journal Article
Exploring the Potential of Machine Learning in Stochastic Reliability Modelling for Reinforced Soil Foundations
2024
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Overview
This study introduces a novel application of gene expression programming (GEP) for the reliability analysis (RA) of reinforced soil foundations (RSFs) based on settlement criteria, addressing a critical gap in sustainable construction practices. Based on the principles of probability and statistics, the soil uncertainties were mapped using the first-order second-moment (FOSM) approach. The historical data generated via a parametric study on a validated finite element numerical model were used to train and validate the GEP models. Among the ten developed GEP frameworks, the best-performing model, abbreviated as GEP-M9 (R2 = 0.961 and RMSE = 0.049), in the testing phase was used to perform the RA of an RSF. This model’s effectiveness in RA was affirmed through a comprehensive evaluation, including parametric sensitivity analysis and validation against two independent case studies. The reliability index (β) and probability of failure (Pf) were determined across various coefficient of variation (COV) configurations, underscoring the model’s potential in civil engineering risk analysis. The newly developed GEP model has shown considerable potential for analyzing civil engineering construction risk, as shown by the experimental results of varying settlement values.
Publisher
MDPI AG
Subject
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