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Learned Prediction of Compressive Strength of GGBFS Concrete Using Hybrid Artificial Neural Network Models

Authors
Han, In-JiYuan, Tian-FengLee, Jin-YoungYoon, Young-SooKim, Joong-Hoon
Issue Date
2-Nov-2019
Publisher
MDPI
Keywords
ground granulated blast furnace slag concrete; artificial neural network; particle swarm optimization; back-propagation; hybrid PSO-BP
Citation
MATERIALS, v.12, no.22
Indexed
SCIE
SCOPUS
Journal Title
MATERIALS
Volume
12
Number
22
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/61935
DOI
10.3390/ma12223708
ISSN
1996-1944
Abstract
A new hybrid intelligent model was developed for estimating the compressive strength (CS) of ground granulated blast furnace slag (GGBFS) concrete, and the synergistic benefits of the hybrid algorithm as compared with a single algorithm were verified. While using the collected 269 data from previous experimental studies, artificial neural network (ANN) models with three different learning algorithms namely back-propagation (BP), particle swarm optimization (PSO), and new hybrid PSO-BP algorithms, were constructed and the performance of the models was evaluated with regard to the prediction accuracy, efficiency, and stability through a threefold procedure. It was found that the PSO-BP neural network model was superior to the simple ANNs that were trained by a single algorithm and it is suitable for predicting the CS of GGBFS concrete.
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