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Steel and Composite Structures Volume 45, Number 2, October25 2022 , pages 205-218 DOI: https://doi.org/10.12989/scs.2022.45.2.205 |
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Ensembles of neural network with stochastic optimization algorithms in predicting concrete tensile strength |
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Juan Hu, Fenghui Dong, Yiqi Qiu, Lei Xi, Ali Majdi and H. Elhosiny Ali
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Abstract | ||
Proper calculation of splitting tensile strength (STS) of concrete has been a crucial task, due to the wide use of concrete in the construction sector. Following many recent studies that have proposed various predictive models for this aim, this study suggests and tests the functionality of three hybrid models in predicting the STS from the characteristics of the mixture components including cement compressive strength, cement tensile strength, curing age, the maximum size of the crushed stone, stone powder content, sand fine modulus, water to binder ratio, and the ratio of sand. A multi-layer perceptron (MLP) neural network incorporates invasive weed optimization (IWO), cuttlefish optimization algorithm (CFOA), and electrostatic discharge algorithm (ESDA) which are among the newest optimization techniques. A dataset from the earlier literature is used for exploring and extrapolating the STS behavior. The results acquired from several accuracy criteria demonstrated a nice learning capability for all three hybrid models viz. IWO-MLP, CFOA-MLP, and ESDA-MLP. Also in the prediction phase, the prediction products were in a promising agreement (above 88%) with experimental results. However, a comparative look revealed the ESDA-MLP as the most accurate predictor. Considering mean absolute percentage error (MAPE) index, the error of ESDAMLP was 9.05%, while the corresponding value for IWO-MLP and CFOA-MLP was 9.17 and 13.97%, respectively. Since the combination of MLP and ESDA can be an effective tool for optimizing the concrete mixture toward a desirable STS, the last part of this study is dedicated to extracting a predictive formula from this model. | ||
Key Words | ||
geotechnical engineering; metaheuristic optimizers; neural network; slope stability; soft computing | ||
Address | ||
Juan Hu:School of urban construction, Zhejiang Shuren University, Hangzhou 310015, Zhejiang, China Fenghui Dong:College of Civil Engineering, Nanjing Forestry University, Nanjing 210037, Jiangsu, China Yiqi Qiu:Poly Changda Engineering Co., Ltd., Guangzhou 510620, Guangdong, China Lei Xi: CCCC First Highway Survey, Design and Research Institute Co., Ltd., Xi'an 710075, Shaanxi, China Ali Majdi: Department of Building and Construction Technologies Engineering, Al- Mustaqbal University College, 51001 Babylon, Iraq H. Elhosiny Ali:1)Advanced Functional Materials & Optoelectronic Laboratory (AFMOL), Department of Physics, Faculty of Science, King Khalid University, P.O. Box 9004, Abha 61413, Saudi Arabia 2)Research Center for Advanced Materials Science (RCAMS), King Khalid University, P.O. Box 9004, Abha 61413, Saudi Arabia 3)Physics Department, Faculty of Science, Zagazig University, Zagazig 44519, Egypt | ||