《结构与土木工程前沿(英文)》
>> 2018年
第12卷
第4期
doi:
10.1007/s11709-017-0445-3
RESEARCH ARTICLE
Predicting the strength properties of slurry infiltrated fibrous concrete using artificial neural network
Civil Engineering, G.P.R. Engineering College, Kurnool 518002, Andhra Pradesh, India |
录用日期:
2017-12-26
发布日期:
2018-11-20
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摘要
This paper is aimed at adapting Artificial Neural Networks (ANN) to predict the strength properties of SIFCON containing different minerals admixture. The investigations were done on 84 SIFCON mixes, and specimens were cast and tested after 28 days curing. The obtained experimental data are trained using ANN which consists of 4 input parameters like Percentage of fiber (PF), Aspect Ratio (AR), Type of admixture (TA) and Percentage of admixture (PA). The corresponding output parameters are compressive strength, tensile strength and flexural strength. The predicted values obtained using ANN show a good correlation between the experimental data. The performance of the 4-14-3 architecture was better than other architectures. It is concluded that ANN is a highly powerful tool suitable for assessing the strength characteristics of SIFCON.