A novel ant colony-optimized extreme gradient boosting machine for estimating compressive strength of recycled aggregate concrete

被引:0
作者
Nhat-Duc Hoang
机构
[1] Duy Tan University,Institute of Research and Development
[2] Duy Tan University,Faculty of Civil Engineering
来源
Multiscale and Multidisciplinary Modeling, Experiments and Design | 2024年 / 7卷
关键词
Recycled aggregates; Concrete; Compressive strength; Machine learning; Metaheuristic;
D O I
暂无
中图分类号
学科分类号
摘要
Utilization of recycled aggregates generated from demolition waste for concrete production is a viable option for reducing the environmental impact of the construction industry on the environment. Compressive strength (CS) is a crucial parameter of recycled aggregate concrete (RAC), which is required in the design and construction phases of concrete structures. This study proposes and verifies a novel integration of ant colony optimization (ACO) and extreme gradient boosting machine (XGBoost) as an integrated data-driven approach for estimating the CS of RAC. A large-scale dataset, including 1100 samples, is collected from previous experimental works to construct the integrated approach, named ACO-XGBoost. Contents of cement, silica fume, fly ash, water, natural aggregates, recycled aggregates, and curing age are employed as influencing factors. Experimental results, consisting of 20 independent runs, point out that ACO-XGBoost achieves outstanding prediction accuracy with a root mean square error of 4.98, a mean absolute percentage error of 8.95%, and a coefficient of determination of 0.93. The newly proposed method has gained a roughly 32% improvement in terms of prediction accuracy compared to benchmark approaches. In addition, an asymmetric loss function is employed in the training phase of XGBoost to decrease the number of overestimated cases by roughly 11%. Hence, ACO-XGBoost is a promising decision support tool for designing RAC mixes.
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页码:375 / 394
页数:19
相关论文
共 318 条
[1]  
Abdel-Hay AS(2017)Properties of recycled concrete aggregate under different curing conditions HBRC J 13 271-276
[2]  
Andreu G(2014)Experimental analysis of properties of high performance recycled aggregate concrete Constr Build Mater 52 227-235
[3]  
Miren E(2014)Effect of cement addition on the properties of recycled concretes to reach control concretes strengths J Clean Prod 79 124-133
[4]  
Beltrán MG(2013)Effect of recycled concrete coarse aggregate from multiple sources on the hardened properties of concrete with equivalent compressive strength Constr Build Mater 47 1292-1301
[5]  
Barbudo A(2015)Influence of silica fume on mechanical and physical properties of recycled aggregate concrete HBRC J 11 157-166
[6]  
Agrela F(2014)Compressive stress–strain behavior of steel fiber reinforced-recycled aggregate concrete Cement Concr Compos 46 65-72
[7]  
Galvín AP(2008)Failure mechanism of recycled aggregate concrete Constr Build Mater 22 1500-1506
[8]  
Jiménez JR(2022)Forensic-based investigation-optimized extreme gradient boosting system for predicting compressive strength of ready-mixed concrete J Comput Des Eng 10 425-445
[9]  
Butler L(2023)Towards an eco-efficient ready mix-concrete industry: advances and opportunities. A study of the Metropolitan Region of Buenos Aires J Build Eng 63 1616-1620
[10]  
West JS(2010)Mechanical and elastic behaviour of concretes made of recycled-concrete coarse aggregates Constr Build Mater 24 717-722