Machine Learning-based Prediction of Porosity for Concrete Containing Supplementary Cementitious Materials

12/13/2021
by   Chong Cao, et al.
0

Porosity has been identified as the key indicator of the durability properties of concrete exposed to aggressive environments. This paper applies ensemble learning to predict porosity of high-performance concrete containing supplementary cementitious materials. The concrete samples utilized in this study are characterized by eight composition features including w/b ratio, binder content, fly ash, GGBS, superplasticizer, coarse/fine aggregate ratio, curing condition and curing days. The assembled database consists of 240 data records, featuring 74 unique concrete mixture designs. The proposed machine learning algorithms are trained on 180 observations (75 the data set and then tested on the remaining 60 observations (25 numerical experiments suggest that the regression tree ensembles can accurately predict the porosity of concrete from its mixture compositions. Gradient boosting trees generally outperforms random forests in terms of prediction accuracy. For random forests, the out-of-bag error based hyperparameter tuning strategy is found to be much more efficient than k-Fold Cross-Validation.

READ FULL TEXT

page 26

page 27

research
02/26/2020

Machine Learning based prediction of noncentrosymmetric crystal materials

Noncentrosymmetric materials play a critical role in many important appl...
research
04/07/2022

Learning to Sieve: Prediction of Grading Curves from Images of Concrete Aggregate

A large component of the building material concrete consists of aggregat...
research
10/11/2018

Regression Model for Predicting Expansion of Concrete Exposed to Sulfate Attack Based on Performance-based Classification

This paper mainly described development of a new kind of regression mode...
research
02/27/2023

Extrapolated cross-validation for randomized ensembles

Ensemble methods such as bagging and random forests are ubiquitous in fi...
research
11/29/2021

Prediction of Large Magnetic Moment Materials With Graph Neural Networks and Random Forests

Magnetic materials are crucial components of many technologies that coul...
research
10/11/2018

Predicting the Expansion of Concrete Exposed to Sulfate Attack with a Regression Model Based on a Performance Classification

This paper mainly describes the development of a new type of regression ...

Please sign up or login with your details

Forgot password? Click here to reset