Cargando…

Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation

The addition of rubber to concrete improves resistance to chloride ion attacks. Therefore, rapidly determining the chloride permeability coefficient (D(CI)) of rubber concrete (RC) can contribute to promotion in coastal areas. Most current methods for determining D(CI) of RC are traditional, which c...

Descripción completa

Detalles Bibliográficos
Autores principales: Huang, Xiaoyu, Wang, Shuai, Lu, Tong, Li, Houmin, Wu, Keyang, Deng, Weichao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9867258/
https://www.ncbi.nlm.nih.gov/pubmed/36679189
http://dx.doi.org/10.3390/polym15020308
_version_ 1784876297518841856
author Huang, Xiaoyu
Wang, Shuai
Lu, Tong
Li, Houmin
Wu, Keyang
Deng, Weichao
author_facet Huang, Xiaoyu
Wang, Shuai
Lu, Tong
Li, Houmin
Wu, Keyang
Deng, Weichao
author_sort Huang, Xiaoyu
collection PubMed
description The addition of rubber to concrete improves resistance to chloride ion attacks. Therefore, rapidly determining the chloride permeability coefficient (D(CI)) of rubber concrete (RC) can contribute to promotion in coastal areas. Most current methods for determining D(CI) of RC are traditional, which cannot account for multi-factorial effects and suffer from low prediction accuracy. Machine learning (ML) techniques have good non-linear learning capabilities and can consider the effects of multiple factors compared with traditional methods. However, ML models easily fall into the local optimum due to their parameters’ influence. Therefore, a mixed whale optimization algorithm (MWOA) was developed in this paper to optimize ML models. The main strategies are to introduce Tent mapping to expand the search range of the algorithm, to use an adaptive t-distribution dimension-by-dimensional variation strategy to perturb the optimal fitness individual to thereby improve the algorithm’s ability to jump out of the local optimum, and to introduce adaptive weights and adaptive probability threshold values to enhance the adaptive capacity of the algorithm. For this purpose, data were collected from the published literature. Three machine learning models, Extreme Learning Machine (ELM), Random Forest (RF), and Elman Neural Network (ELMAN), were built to predict the D(CI) of RC, and the three models were optimized using MWOA. The calculations show that the MWOA is effective with the optimized ELM, RF, and ELMAN models improving the prediction accuracy by 54.4%, 62.9%, and 36.4% compared with the initial model. The MWOA-ELM model was found to be the optimal model after a comparative analysis. The accuracy of the multiple linear regression model (MRL) and the traditional mathematical model is calculated to be 87.15% and 85.03%, which is lower than that of the MWOA-ELM model. This indicates that the ML model that is optimized using the improved whale optimization algorithm has better predictive ability than traditional models, providing a new option for predicting the D(CI) of RC.
format Online
Article
Text
id pubmed-9867258
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-98672582023-01-22 Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation Huang, Xiaoyu Wang, Shuai Lu, Tong Li, Houmin Wu, Keyang Deng, Weichao Polymers (Basel) Article The addition of rubber to concrete improves resistance to chloride ion attacks. Therefore, rapidly determining the chloride permeability coefficient (D(CI)) of rubber concrete (RC) can contribute to promotion in coastal areas. Most current methods for determining D(CI) of RC are traditional, which cannot account for multi-factorial effects and suffer from low prediction accuracy. Machine learning (ML) techniques have good non-linear learning capabilities and can consider the effects of multiple factors compared with traditional methods. However, ML models easily fall into the local optimum due to their parameters’ influence. Therefore, a mixed whale optimization algorithm (MWOA) was developed in this paper to optimize ML models. The main strategies are to introduce Tent mapping to expand the search range of the algorithm, to use an adaptive t-distribution dimension-by-dimensional variation strategy to perturb the optimal fitness individual to thereby improve the algorithm’s ability to jump out of the local optimum, and to introduce adaptive weights and adaptive probability threshold values to enhance the adaptive capacity of the algorithm. For this purpose, data were collected from the published literature. Three machine learning models, Extreme Learning Machine (ELM), Random Forest (RF), and Elman Neural Network (ELMAN), were built to predict the D(CI) of RC, and the three models were optimized using MWOA. The calculations show that the MWOA is effective with the optimized ELM, RF, and ELMAN models improving the prediction accuracy by 54.4%, 62.9%, and 36.4% compared with the initial model. The MWOA-ELM model was found to be the optimal model after a comparative analysis. The accuracy of the multiple linear regression model (MRL) and the traditional mathematical model is calculated to be 87.15% and 85.03%, which is lower than that of the MWOA-ELM model. This indicates that the ML model that is optimized using the improved whale optimization algorithm has better predictive ability than traditional models, providing a new option for predicting the D(CI) of RC. MDPI 2023-01-07 /pmc/articles/PMC9867258/ /pubmed/36679189 http://dx.doi.org/10.3390/polym15020308 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Huang, Xiaoyu
Wang, Shuai
Lu, Tong
Li, Houmin
Wu, Keyang
Deng, Weichao
Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation
title Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation
title_full Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation
title_fullStr Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation
title_full_unstemmed Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation
title_short Chloride Permeability Coefficient Prediction of Rubber Concrete Based on the Improved Machine Learning Technical: Modelling and Performance Evaluation
title_sort chloride permeability coefficient prediction of rubber concrete based on the improved machine learning technical: modelling and performance evaluation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9867258/
https://www.ncbi.nlm.nih.gov/pubmed/36679189
http://dx.doi.org/10.3390/polym15020308
work_keys_str_mv AT huangxiaoyu chloridepermeabilitycoefficientpredictionofrubberconcretebasedontheimprovedmachinelearningtechnicalmodellingandperformanceevaluation
AT wangshuai chloridepermeabilitycoefficientpredictionofrubberconcretebasedontheimprovedmachinelearningtechnicalmodellingandperformanceevaluation
AT lutong chloridepermeabilitycoefficientpredictionofrubberconcretebasedontheimprovedmachinelearningtechnicalmodellingandperformanceevaluation
AT lihoumin chloridepermeabilitycoefficientpredictionofrubberconcretebasedontheimprovedmachinelearningtechnicalmodellingandperformanceevaluation
AT wukeyang chloridepermeabilitycoefficientpredictionofrubberconcretebasedontheimprovedmachinelearningtechnicalmodellingandperformanceevaluation
AT dengweichao chloridepermeabilitycoefficientpredictionofrubberconcretebasedontheimprovedmachinelearningtechnicalmodellingandperformanceevaluation