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Developing random forest hybridization models for estimating the axial bearing capacity of pile
by
Tran, Van Quan
, Pham, Tuan Anh
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Axial loads
/ Biology and Life Sciences
/ Computer and Information Sciences
/ Concrete
/ Datasets
/ Engineering
/ Engineering and Technology
/ Evaluation
/ Forest management
/ Genetic algorithms
/ Geotechnical engineering
/ Geotechnology
/ Hybridization
/ Hybridization, Genetic
/ Learning algorithms
/ Load tests
/ Machine Learning
/ Mathematical optimization
/ Modelling
/ Optimization
/ Optimization algorithms
/ Performance evaluation
/ Physical Sciences
/ Pile bearing capacities
/ Pile foundations
/ Pile load tests
/ Research and Analysis Methods
/ Root-mean-square errors
/ Training
/ Vietnam
2022
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Developing random forest hybridization models for estimating the axial bearing capacity of pile
by
Tran, Van Quan
, Pham, Tuan Anh
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Axial loads
/ Biology and Life Sciences
/ Computer and Information Sciences
/ Concrete
/ Datasets
/ Engineering
/ Engineering and Technology
/ Evaluation
/ Forest management
/ Genetic algorithms
/ Geotechnical engineering
/ Geotechnology
/ Hybridization
/ Hybridization, Genetic
/ Learning algorithms
/ Load tests
/ Machine Learning
/ Mathematical optimization
/ Modelling
/ Optimization
/ Optimization algorithms
/ Performance evaluation
/ Physical Sciences
/ Pile bearing capacities
/ Pile foundations
/ Pile load tests
/ Research and Analysis Methods
/ Root-mean-square errors
/ Training
/ Vietnam
2022
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Developing random forest hybridization models for estimating the axial bearing capacity of pile
by
Tran, Van Quan
, Pham, Tuan Anh
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Axial loads
/ Biology and Life Sciences
/ Computer and Information Sciences
/ Concrete
/ Datasets
/ Engineering
/ Engineering and Technology
/ Evaluation
/ Forest management
/ Genetic algorithms
/ Geotechnical engineering
/ Geotechnology
/ Hybridization
/ Hybridization, Genetic
/ Learning algorithms
/ Load tests
/ Machine Learning
/ Mathematical optimization
/ Modelling
/ Optimization
/ Optimization algorithms
/ Performance evaluation
/ Physical Sciences
/ Pile bearing capacities
/ Pile foundations
/ Pile load tests
/ Research and Analysis Methods
/ Root-mean-square errors
/ Training
/ Vietnam
2022
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Developing random forest hybridization models for estimating the axial bearing capacity of pile
Journal Article
Developing random forest hybridization models for estimating the axial bearing capacity of pile
2022
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Overview
Accurate determination of the axial load capacity of the pile is of utmost importance when designing the pile foundation. However, the methods of determining the axial load capacity of the pile in the field are often costly and time-consuming. Therefore, the purpose of this study is to develop a hybrid machine-learning to predict the axial load capacity of the pile. In particular, two powerful optimization algorithms named Herd Optimization (PSO) and Genetic Algorithm (GA) were used to evolve the Random Forest (RF) model architecture. For the research, the data set including 472 results of pile load tests in Ha Nam province—Vietnam was used to build and test the machine-learning models. The data set was divided into training and testing parts with ratio of 80% and 20%, respectively. Various performance indicators, namely absolute mean error (MAE), mean square root error (RMSE), and coefficient of determination (R
2
) are used to evaluate the performance of RF models. The results showed that, between the two optimization algorithms, GA gave superior performance compared to PSO in finding the best RF model architecture. In addition, the RF-GA model is also compared with the default RF model, the results show that the RF-GA model gives the best performance, with the balance on training and testing set, meaning avoiding the phenomenon of overfitting. The results of the study suggest a potential direction in the development of machine learning models in engineering in general and geotechnical engineering in particular.
Publisher
Public Library of Science,Public Library of Science (PLoS)
Subject
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