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Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete

Developing accurate and interpretable models to forecast concrete’s self-healing behavior is of interest to material engineers, scientists, and civil engineering contractors. Machine learning (ML) and artificial intelligence are powerful tools that allow constructing high-precision predictions, yet...

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Autores principales: Rajczakowska, Magdalena, Szeląg, Maciej, Habermehl-Cwirzen, Karin, Hedlund, Hans, Cwirzen, Andrzej
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9919821/
https://www.ncbi.nlm.nih.gov/pubmed/36770279
http://dx.doi.org/10.3390/ma16031273
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author Rajczakowska, Magdalena
Szeląg, Maciej
Habermehl-Cwirzen, Karin
Hedlund, Hans
Cwirzen, Andrzej
author_facet Rajczakowska, Magdalena
Szeląg, Maciej
Habermehl-Cwirzen, Karin
Hedlund, Hans
Cwirzen, Andrzej
author_sort Rajczakowska, Magdalena
collection PubMed
description Developing accurate and interpretable models to forecast concrete’s self-healing behavior is of interest to material engineers, scientists, and civil engineering contractors. Machine learning (ML) and artificial intelligence are powerful tools that allow constructing high-precision predictions, yet often considered “black box” methods due to their complexity. Those approaches are commonly used for the modeling of mechanical properties of concrete with exceptional accuracy; however, there are few studies dealing with the application of ML for the self-healing of cementitious materials. This paper proposes a pioneering study on the utilization of ML for predicting post-fire self-healing of concrete. A large database is constructed based on the literature studies. Twelve input variables are analyzed: w/c, age of concrete, amount of cement, fine aggregate, coarse aggregate, peak loading temperature, duration of peak loading temperature, cooling regime, duration of cooling, curing regime, duration of curing, and specimen volume. The output of the model is the compressive strength recovery, being one of the self-healing efficiency indicators. Four ML methods are optimized and compared based on their performance error: Support Vector Machines (SVM), Regression Trees (RT), Artificial Neural Networks (ANN), and Ensemble of Regression Trees (ET). Monte Carlo analysis is conducted to verify the stability of the selected model. All ML approaches demonstrate satisfying precision, twice as good as linear regression. The ET model is found to be the most optimal with the highest prediction accuracy and sufficient robustness. Model interpretation is performed using Partial Dependence Plots and Individual Conditional Expectation Plots. Temperature, curing regime, and amounts of aggregates are identified as the most significant predictors.
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spelling pubmed-99198212023-02-12 Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete Rajczakowska, Magdalena Szeląg, Maciej Habermehl-Cwirzen, Karin Hedlund, Hans Cwirzen, Andrzej Materials (Basel) Article Developing accurate and interpretable models to forecast concrete’s self-healing behavior is of interest to material engineers, scientists, and civil engineering contractors. Machine learning (ML) and artificial intelligence are powerful tools that allow constructing high-precision predictions, yet often considered “black box” methods due to their complexity. Those approaches are commonly used for the modeling of mechanical properties of concrete with exceptional accuracy; however, there are few studies dealing with the application of ML for the self-healing of cementitious materials. This paper proposes a pioneering study on the utilization of ML for predicting post-fire self-healing of concrete. A large database is constructed based on the literature studies. Twelve input variables are analyzed: w/c, age of concrete, amount of cement, fine aggregate, coarse aggregate, peak loading temperature, duration of peak loading temperature, cooling regime, duration of cooling, curing regime, duration of curing, and specimen volume. The output of the model is the compressive strength recovery, being one of the self-healing efficiency indicators. Four ML methods are optimized and compared based on their performance error: Support Vector Machines (SVM), Regression Trees (RT), Artificial Neural Networks (ANN), and Ensemble of Regression Trees (ET). Monte Carlo analysis is conducted to verify the stability of the selected model. All ML approaches demonstrate satisfying precision, twice as good as linear regression. The ET model is found to be the most optimal with the highest prediction accuracy and sufficient robustness. Model interpretation is performed using Partial Dependence Plots and Individual Conditional Expectation Plots. Temperature, curing regime, and amounts of aggregates are identified as the most significant predictors. MDPI 2023-02-02 /pmc/articles/PMC9919821/ /pubmed/36770279 http://dx.doi.org/10.3390/ma16031273 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
Rajczakowska, Magdalena
Szeląg, Maciej
Habermehl-Cwirzen, Karin
Hedlund, Hans
Cwirzen, Andrzej
Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete
title Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete
title_full Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete
title_fullStr Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete
title_full_unstemmed Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete
title_short Interpretable Machine Learning for Prediction of Post-Fire Self-Healing of Concrete
title_sort interpretable machine learning for prediction of post-fire self-healing of concrete
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9919821/
https://www.ncbi.nlm.nih.gov/pubmed/36770279
http://dx.doi.org/10.3390/ma16031273
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