Application of metaheuristic algorithms for compressive strength prediction of steel fiber reinforced concrete exposed to high temperatures

被引:12
作者
Javed, Muhammad Faisal [1 ]
Khan, Majid [2 ]
Nehdi, Moncef L. [3 ]
Abuhussain, Maher [4 ]
机构
[1] GIK Inst Engn Sci & Technol, Dept Civil Engn, Swabi 23640, Pakistan
[2] COMSATS Univ Islamabad, Dept Civil Engn, Abbottabad Campus, Abbottabad 22060, Pakistan
[3] McMaster Univ, Dept Civil Engn, Hamilton, ON L8S 4M6, Canada
[4] Umm Al Qura Univ, Coll Engn & Comp Al Qunfudah, Dept Civil & Environm Engn, Mecca, Saudi Arabia
关键词
Steel fiber reinforced concrete; Metaheuristic algorithms; Machine learning; High temperatures; Compressive strength; RECYCLED AGGREGATE CONCRETE; REACTIVE POWDER CONCRETE; MECHANICAL-PROPERTIES; ELEVATED-TEMPERATURES; DECISION TREES; BEHAVIOR; REGRESSION; MODELS; HPC;
D O I
10.1016/j.mtcomm.2024.108832
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The demand for steel fiber -reinforced concrete (SFRC) in construction has surged, particularly due to its enhanced fire resistance, leading to extensive research on its residual properties after elevated temperature exposure. However, conducting experimental tests can be a time-consuming process, demanding significant resources in terms of time, cost, and human resources. In contrast, machine learning (ML) models can rapidly simulate outcomes, enabling researchers to explore a wide range of scenarios efficiently. The previous literature studies used either ensemble or individual models; however, this study made a unique approach to utilize hybrid models, which are more precise compared to the other types of ML models. Accordingly, a data -rich framework containing 304 data samples was utilized in this study to develop an efficient and robust predictive model for the compressive strength (CS) of SFRC at higher temperatures. Support vector regression (SVR) in combination with three distinct optimization algorithms, specifically, particle swarm optimization (PSO), the firefly algorithm (FFA), and grey wolf optimization (GWO) were utilized to develop the hybrid models. In addition, typical ML techniques such as random forest (RF) and decision tree (DT) were used for comparative analysis. Among the five models, the SVR-FFA hybrid model showcased superior predictive accuracy, with the SVR-GWO model following closely. The correlation coefficients (R) for both models exceeded 0.99. The SVR-FFA model demonstrated relative root mean square error (RMSE) and mean absolute error (MAE) values of 0.0375 and 0.0248, respectively, while the SVR-GWO model exhibited corresponding values of 6.0560 and 5.1326. The SHapley Additive exPlanation (SHAP) technique revealed that the influence of temperature is more significant compared to the heating rate. Moreover, a considerable enhancement was observed in CS as the steel fiber volume fraction (Vf) reached 1.5%; on the other hand, no further improvement was noticed when Vf exceeded the 1.5% threshold. The proposed hybrid models are robust and accurate methods to estimate the CS of SFRC in field applications.
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页数:23
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共 133 条
[1]   Assessment of compressive strength of Ultra-high Performance Concrete using deep machine learning techniques [J].
Abuodeh, Omar R. ;
Abdalla, Jamal A. ;
Hawileh, Rami A. .
APPLIED SOFT COMPUTING, 2020, 95
[2]   Predicting ultra-high-performance concrete compressive strength using gene expression programming method [J].
Alabduljabbar, Hisham ;
Khan, Majid ;
Awan, Hamad Hassan ;
Eldin, Sayed M. ;
Alyousef, Rayed ;
Mohamed, Abdeliazim Mustafa .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2023, 18
[3]   Prediction of rapid chloride penetration resistance of metakaolin based high strength concrete using light GBM and XGBoost models by incorporating SHAP analysis [J].
Alabdullah, Anas Abdulalim ;
Iqbal, Mudassir ;
Zahid, Muhammad ;
Khan, Kaffayatullah ;
Amin, Muhammad Nasir ;
Jalal, Fazal E. .
CONSTRUCTION AND BUILDING MATERIALS, 2022, 345
[4]   Evaluation of water quality indexes with novel machine learning and SHapley Additive ExPlanation (SHAP) approaches [J].
Aldrees, Ali ;
Khan, Majid ;
Taha, Abubakr Taha Bakheit ;
Ali, Mujahid .
JOURNAL OF WATER PROCESS ENGINEERING, 2024, 58
[5]   Machine learning prediction of structural response of steel fiber-reinforced concrete beams subjected to far-field blast loading [J].
Almustafa, Monjee K. ;
Nehdi, Moncef L. .
CEMENT & CONCRETE COMPOSITES, 2022, 126
[6]   Machine learning based computational approach for crack width detection of self-healing concrete [J].
Althoey, Fadi ;
Amin, Muhammad Nasir ;
Khan, Kaffayatullah ;
Usman, Mian Muhammad ;
Khan, Mohsin Ali ;
Javed, Muhammad Faisal ;
Sabri, Mohanad Muayad Sabri ;
Alrowais, Raid ;
Maglad, Ahmed M. .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2022, 17
[7]   Estimating compressive strength of concrete containing rice husk ash using interpretable machine learning-based models [J].
Alyami, Mana ;
Nassar, Roz-Ud-Din ;
Khan, Majid ;
Hammad, Ahmed W. A. ;
Alabduljabbar, Hisham ;
Nawaz, R. ;
Fawad, Muhammad ;
Gamil, Yaser .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2024, 20
[8]   Predictive modeling for compressive strength of 3D printed fiber-reinforced concrete using machine learning algorithms [J].
Alyami, Mana ;
Khan, Majid ;
Fawad, Muhammad ;
Nawaz, R. ;
Hammad, Ahmed W. A. ;
Najeh, Taoufik ;
Gamil, Yaser .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2024, 20
[9]   Forecasting the strength characteristics of concrete incorporating waste foundry sand using advance machine algorithms including deep learning [J].
Alyousef, Rayed ;
Nassar, Roz-Ud-Din ;
Khan, Majid ;
Arif, Kiran ;
Fawad, Muhammad ;
Hassan, Ahmed M. ;
Ghamry, Nivin A. .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2023, 19
[10]   Machine learning-driven predictive models for compressive strength of steel fiber reinforced concrete subjected to high temperatures [J].
Alyousef, Rayed ;
Rehman, Muhammad Faisal ;
Khan, Majid ;
Fawad, Muhammad ;
Khan, Asad Ullah ;
Hassan, Ahmed M. ;
Ghamry, Nivin A. .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2023, 19