Compressive Strength Prediction of Fly Ash-Based Concrete Using Single and Hybrid Machine Learning Models

被引:0
作者
Li, Haiyu [1 ]
Chung, Heungjin [1 ]
Li, Zhenting [2 ]
Li, Weiping [3 ]
机构
[1] Jeonju Univ, Artificial Intelligence Civil & Environm Engn, Jeonju 55069, South Korea
[2] Northwest Normal Univ, Coll Math & Stat, Machine Learning & Big Data Min, Lanzhou 730070, Peoples R China
[3] Taizhou Dongsheng Construct Investment Corp, Civil & Environm Engn, Taizhou 318000, Peoples R China
关键词
artificial intelligence; machine learning; fly ash; concrete; compressive strength; FCNN; CNN; TF; hybrid models; TRANSFORMER NETWORKS; ANN;
D O I
10.3390/buildings14103299
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The compressive strength of concrete is a crucial parameter in structural design, yet its determination in a laboratory setting is both time-consuming and expensive. The prediction of compressive strength in fly ash-based concrete can be accelerated through the use of machine learning algorithms with artificial intelligence, which can effectively address the problems associated with this process. This paper presents the most innovative model algorithms established based on artificial intelligence technology. These include three single models-a fully connected neural network model (FCNN), a convolutional neural network model (CNN), and a transformer model (TF)-and three hybrid models-FCNN + CNN, TF + FCNN, and TF + CNN. A total of 471 datasets were employed in the experiments, comprising 7 input features: cement (C), fly ash (FA), water (W), superplasticizer (SP), coarse aggregate (CA), fine aggregate (S), and age (D). Six models were subsequently applied to predict the compressive strength (CS) of fly ash-based concrete. Furthermore, the loss function curves, assessment indexes, linear correlation coefficient, and the related literature indexes of each model were employed for comparison. This analysis revealed that the FCNN + CNN model exhibited the highest prediction accuracy, with the following metrics: R2 = 0.95, MSE = 14.18, MAE = 2.32, SMAPE = 0.1, and R = 0.973. Additionally, SHAP was utilized to elucidate the significance of the model parameter features. The findings revealed that C and D exerted the most substantial influence on the model prediction outcomes, followed by W and FA. Nevertheless, CA, S, and SP demonstrated comparatively minimal influence. Finally, a GUI interface for predicting compressive strength was developed based on six models and nonlinear functional relationships, and a criterion for minimum strength was derived by comparison and used to optimize a reasonable mixing ratio, thus achieving a fast data-driven interaction that was concise and reliable.
引用
收藏
页数:30
相关论文
共 103 条
[21]   A Sensitivity and Robustness Analysis of GPR and ANN for High-Performance Concrete Compressive Strength Prediction Using a Monte Carlo Simulation [J].
Dong Van Dao ;
Adeli, Hojjat ;
Hai-Bang Ly ;
Lu Minh Le ;
Vuong Minh Le ;
Tien-Thinh Le ;
Binh Thai Pham .
SUSTAINABILITY, 2020, 12 (03)
[22]   Machine learning and interactive GUI for concrete compressive strength prediction [J].
Elshaarawy, Mohamed Kamel ;
Alsaadawi, Mostafa M. ;
Hamed, Abdelrahman Kamal .
SCIENTIFIC REPORTS, 2024, 14 (01)
[23]   A Comparative Study for the Prediction of the Compressive Strength of Self-Compacting Concrete Modified with Fly Ash [J].
Farooq, Furqan ;
Czarnecki, Slawomir ;
Niewiadomski, Pawel ;
Aslam, Fahid ;
Alabduljabbar, Hisham ;
Ostrowski, Krzysztof Adam ;
Sliwa-Wieczorek, Klaudia ;
Nowobilski, Tomasz ;
Malazdrewicz, Seweryn .
MATERIALS, 2021, 14 (17)
[24]   Transformer Networks for Trajectory Forecasting [J].
Giuliari, Francesco ;
Hasan, Irtiza ;
Cristani, Marco ;
Galasso, Fabio .
2020 25TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2021, :10335-10342
[25]   The strength and durability of fly ash and quarry dust light weight foam concrete [J].
Gopalakrishnan, R. ;
Sounthararajan, V. M. ;
Mohan, A. ;
Tholkapiyan, M. .
MATERIALS TODAY-PROCEEDINGS, 2020, 22 :1117-1124
[26]   SAR image classification based on multi-feature fusion decision convolutional neural network [J].
Guo, Liang .
IET IMAGE PROCESSING, 2022, 16 (01) :1-10
[27]  
He XH, 2023, AAAI CONF ARTIF INTE, P817
[28]   How to Represent Part-Whole Hierarchies in a Neural Network [J].
Hinton, Geoffrey .
NEURAL COMPUTATION, 2023, 35 (03) :413-452
[29]   Prediction of mechanical properties of recycled aggregate fly ash concrete employing machine learning algorithms [J].
Hosseinzadeh, Maedeh ;
Dehestani, Mehdi ;
Hosseinzadeh, Alireza .
JOURNAL OF BUILDING ENGINEERING, 2023, 76
[30]  
Hrycej T, 2022, Arxiv, DOI arXiv:2209.07221