Predicting the Compressive Strength and the Effective Porosity of Pervious Concrete Using Machine Learning Methods

被引:0
作者
Ba-Anh Le
Viet-Hung Vu
Soo-Yeon Seo
Bao-Viet Tran
Tuan Nguyen-Sy
Minh-Cuong Le
Thai-Son Vu
机构
[1] University of Transport and Communications,Campus in Ho Chi Minh City
[2] University of Transport and Communications,School of Architecture
[3] Korea National University of Transportation,undefined
[4] Modis,undefined
[5] Hanoi University of Civil Engineering,undefined
来源
KSCE Journal of Civil Engineering | 2022年 / 26卷
关键词
Pervious concrete; Compressive strength; Effective porosity; Machine learning; XGB;
D O I
暂无
中图分类号
学科分类号
摘要
This paper aims to develop a novel prediction tool based on the machine learning framework to evaluate the compressive strength and effective porosity of pervious concrete material from its compositions. To address this difficult task, 14 data sources were collected from the literature to build a dataset of 164 samples. The dataset included seven mixture design features (e.g., aggregate-to-cement ratio, water-to-cement ratio, minimum coarse aggregate size, the presence of sand or silica fume, effective porosity, and the compressive strength). This dataset was trained and tested by the most relevant machine learning methods: the extreme gradient boosting method (XGB), the random forest regression method, and the support vector machine method. The Particle Swarm Optimization method was applied to tune the models’ hyperparameters. It was observed that the extreme gradient boosting method significantly outperformed the accuracy of the other methods. Relatively high R-squared values of 0.92 and 0.88 were obtained for the compressive strength and effective porosity predictions. Furthermore, to account for the role of compaction, the original database was refined to obtain a 36 samples subset that considered compaction energy. Based on our assessment of this subset, results yielded superior R-squared values up to 0.99 for compressive strength, and 0.97 for effective porosity, revealing the effectiveness and accuracy of this research.
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页码:4664 / 4679
页数:15
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  • [11] Chandrappa AK(2014)Modeling compressive strength of recycled aggregate concrete by Artificial Neural Network, Model Tree and Non-linear Regression International Journal of Susstainable Built Environment 3 187-99
  • [12] Biligiri KP(2013)Macroscopic effective mechanical properties of porous dry concrete Cement and Concrete Research 44 87-153
  • [13] Chen X(2017)Fal-G Binder pervious concrete Construction and Building Materials 140 91-145
  • [14] Ishwaran H(2021)Predictive modeling for sustainable high-performance concrete from industrial wastes: A comparison and optimization of models using ensemble learners Journal of Cleaner Production 292 126032-529
  • [15] Crouch LK(2021)A comparative study for the prediction of the compressive strength of self-compacting concrete modified with fly ash Materials (Basel, Switzerland) 14 4934-12
  • [16] Pitt J(2020)A comparative study of random forest and genetic engineering programming for the prediction of compressive strength of high strength concrete (HSC) Applied Sciences 10 7330-233
  • [17] Hewitt R(1991)Knowledge-based modeling of material behavior with Neural Networks Journal of Engineering Mechanics 117 132-1084
  • [18] Dean SW(2017)New formulations for mechanical properties of recycled aggregate concrete using gene expression programming Construction and Building Materials 130 122-526
  • [19] Kevern JT(2020)Predicting the compressive strength of normal and High-Performance Concretes using ANN and ANFIS hybridized with Grey Wolf Optimizer Construction and Building Materials 232 117266-4298
  • [20] Schaefer VR(2020)An ensemble machine learning approach for prediction and optimization of modulus of elasticity of recycled aggregate concrete Construction and Building Materials 244 118271-124