Predictive modelling of concrete compressive strength incorporating GGBS and alkali using a machine-learning approach

被引:2
|
作者
Gogineni A. [1 ]
Panday I.K. [1 ]
Kumar P. [1 ]
Paswan R. [2 ]
机构
[1] Department of Civil Engineering, National Institute of Technology, Jharkhand, Jamshedpur
[2] Department of Civil Engineering, RVS College of Engg. and Technology, Jamshedpur
关键词
AdaBoost Regressor (ABR); Alkali; Gradient Boost Regressor (GBR); Ground-Granulated Blast Furnace Slag (GGBS); Random Forest (RF);
D O I
10.1007/s42107-023-00805-z
中图分类号
学科分类号
摘要
This study presents a comparative analysis of three machine-learning models, namely Random Forest, Gradient Boost Regressor, and AdaBoost Regressor, for predicting the compressive strength of concrete. The Ground-Granulated Blast Furnace Slag (GGBS) fraction and alkali concentration are used as input characteristics in the dataset that is used to train and test the models. The result shows that the Random Forest model trained to the highest coefficient of determination (R-squared) of 0.9636, closely followed by the Gradient Boost Regressor at 0.9631, while the AdaBoost Regressor's R-squared score was slightly lower at 0.9029. The Random Forest and Gradient Boost Regressor models maintained their strong predictive performance for the testing phase, with R-squared values of 0.9411 and 0.9405, respectively. The AdaBoost Regressor showed a comparatively lower R-squared value of 0.86. Additionally, the mean square values for the models for Random Forest, Gradient Boost Regressor, and AdaBoost Regressor, respectively, were 2.9610, 2.9176, and 7.6290. As an indicator of how precisely the predictions have been determined, lower mean square values reflect stronger model performance. The results of the Sobol method's sensitivity study showed that the GGBS percentage had a significant degree of sensitivity in predicting compressive strength. This result highlights the major impact of GGBS on the overall strength properties of concrete. This work demonstrates that machine-learning algorithms can accurately estimate compressive strength using GGBS and alkali concentration as inputs, contributing in the formulation of durable concrete and optimum mixture proportions. © 2023, The Author(s), under exclusive licence to Springer Nature Switzerland AG.
引用
收藏
页码:699 / 709
页数:10
相关论文
共 50 条
  • [31] Prediction of compressive strength of geopolymer concrete using machine learning techniques
    Gupta, Tanuja
    Rao, Meesala Chakradhara
    STRUCTURAL CONCRETE, 2022, 23 (05) : 3073 - 3090
  • [32] Predicting compressive strength of geopolymer concrete using machine learning models
    Kurhade, Swapnil Deepak
    Patankar, Subhash
    INNOVATIVE INFRASTRUCTURE SOLUTIONS, 2025, 10 (01)
  • [33] Prediction of compressive strength of sustainable concrete using machine learning tools
    Choudhary, Lokesh
    Sahu, Vaishali
    Dongre, Archanaa
    Garg, Aman
    COMPUTERS AND CONCRETE, 2024, 33 (02): : 137 - 145
  • [34] Prediction of the Compressive Strength of Vibrocentrifuged Concrete Using Machine Learning Methods
    Beskopylny, Alexey N.
    Stel'makh, Sergey A.
    Shcherban', Evgenii M.
    Mailyan, Levon R.
    Meskhi, Besarion
    Razveeva, Irina
    Kozhakin, Alexey
    Pembek, Anton
    Elshaeva, Diana
    Chernil'nik, Andrei
    Beskopylny, Nikita
    BUILDINGS, 2024, 14 (02)
  • [35] Ensemble machine learning models for predicting concrete compressive strength incorporating various sand types
    Tipu, Rupesh Kumar
    Bansal, Shweta
    Batra, Vandna
    Patel, Gaurang A.
    MULTISCALE AND MULTIDISCIPLINARY MODELING EXPERIMENTS AND DESIGN, 2025, 8 (04)
  • [36] Predicting the Compressive Strength of Concrete Containing Binary Supplementary Cementitious Material Using Machine Learning Approach
    Moradi, Nozar
    Tavana, Mohammad Hadi
    Habibi, Mohammad Reza
    Amiri, Moslem
    Moradi, Mohammad Javad
    Farhangi, Visar
    MATERIALS, 2022, 15 (15)
  • [37] Machine learning techniques to predict the compressive strength of concrete
    Silva, Priscila F. S.
    Moita, Gray Farias
    Arruda, Vanderci Fernandes
    REVISTA INTERNACIONAL DE METODOS NUMERICOS PARA CALCULO Y DISENO EN INGENIERIA, 2020, 36 (04): : 1 - 14
  • [38] Machine learning approaches for estimation of compressive strength of concrete
    Marijana Hadzima-Nyarko
    Emmanuel Karlo Nyarko
    Hongfang Lu
    Senlin Zhu
    The European Physical Journal Plus, 135
  • [39] Machine learning approaches for estimation of compressive strength of concrete
    Hadzima-Nyarko, Marijana
    Nyarko, Emmanuel Karlo
    Lu, Hongfang
    Zhu, Senlin
    EUROPEAN PHYSICAL JOURNAL PLUS, 2020, 135 (08):
  • [40] Predictive Modelling of Alkali-Slag Cemented Tailings Backfill Using a Novel Machine Learning Approach
    Pang, Haotian
    Qi, Wenyue
    Song, Hongqi
    Pang, Haowei
    Liu, Xiaotian
    Chen, Junzhi
    Chen, Zhiwei
    MATERIALS, 2025, 18 (06)