Bibliographische Detailangaben
| Titel: |
Investigation of mechanical properties of high-performance concrete via optimized neural network approaches. |
| Autoren: |
Wang, Xuyang, Cong, Rijie |
| Quelle: |
Journal of Engineering & Applied Science; 3/15/2024, Vol. 71 Issue 1, p1-16, 16p |
| Schlagwörter: |
OPTIMIZATION algorithms, STANDARD deviations, RADIAL basis functions, FLY ash, CONCRETE |
| Abstract: |
In this paper, an artificial intelligence approach has been employed to analyze the slump and compressive strength (CS) of high-performance concrete (HPC), focusing on its mechanical properties. The importance of assessing these critical concrete characteristics has been widely acknowledged by experts in the field, leading to the development of innovative methods for estimating parameters that typically require laboratory testing. These intelligent techniques improve the accuracy of mechanical property predictions and reduce the resource-intensive and costly nature of experimental work. The radial basis function neural network (RBFNN) is the foundational model for predicting the mechanical attributes of various HPC mixtures. To fine-tune the RBFNN's performance in replicating the mechanical properties of HPC samples, two optimization algorithms, namely the Golden Eagle Optimizer (GEO) and Dynamic Arithmetic Optimization Algorithm (DAOA), have been employed. In this manner, both RBGE and RBDA models were trained using a dataset comprising 181 HPC samples that included superplasticizers and fly ash. The results show that DAOA has significantly improved the base model's predictive capability, achieving a higher correlation with a value R2 of 0.936 when estimating slump. Furthermore, RBDA exhibited a more favorable root mean square error (RMSE) in predicting compressive strength compared to RBGE, with a notable 16% difference. Ultimately, both integrated models demonstrated their effectiveness in accurately modeling the mechanical properties of HPC. [ABSTRACT FROM AUTHOR] |
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| Datenbank: |
Complementary Index |