Please use this identifier to cite or link to this item: http://hdl.handle.net/11452/30403
Title: Estimation of compressive strength of BFS and WTRP blended cement mortars with machine learning models
Authors: Koçak, Yılmaz
Gülbandılar, Eyyüp
Uludağ Üniversitesi/Mühendislik Fakültesi/Bilgisayar Mühendisliği Bölümü.
0000-0002-1166-5919
Özcan, Giyasettin
15770103700
Keywords: Computer science
Construction & building technology
Engineering
Materials science
Ada boost
Bayes classifier models
Blast furnace slag
Compressive strength
Random forest
SVM
Waste tire rubber powder
Blast-furnace slag
Artificial neural-network
Waste tire rubber
Mechanical-properties
Fly-ash
Portland-cement
Marble dust
Concrete
Prediction
Fuzzy
Ada (programming language)
Artificial intelligence
Blast furnaces
Cements
Decision trees
Learning algorithms
Learning systems
Mortar
Portland cement
Powders
Rubber
Slags
Strength of materials
Compressive strength
Bayes classifier
Input parameter
Machine learning methods
Machine learning models
Output parameters
Random forests
Training and testing
Waste tire rubber powders
Issue Date: 26-Dec-2016
Publisher: Techno-Press
Citation: Özcan, G. vd. (2017). ''Estimation of compressive strength of BFS and WTRP blended cement mortars with machine learning models''. Computers and Concrete, 19(3), 275-282.
Abstract: The aim of this study is to build Machine Learning models to evaluate the effect of blast furnace slag (BFS) and waste tire rubber powder (WTRP) on the compressive strength of cement mortars. In order to develop these models, 12 different mixes with 288 specimens of the 2, 7, 28, and 90 days compressive strength experimental results of cement mortars containing BFS, WTRP and BFS+WTRP were used in training and testing by Random Forest, Ada Boost, SVM and Bayes classifier machine learning models, which implement standard cement tests. The machine learning models were trained with 288 data that acquired from experimental results. The models had four input parameters that cover the amount of Portland cement, BFS, WTRP and sample ages. Furthermore, it had one output parameter which is compressive strength of cement mortars. Experimental observations from compressive strength tests were compared with predictions of machine learning methods. In order to do predictive experimentation, we exploit R programming language and corresponding packages. During experimentation on the dataset, Random Forest, Ada Boost and SVM models have produced notable good outputs with higher coefficients of determination of R2, RMS and MAPE. Among the machine learning algorithms, Ada Boost presented the best R2, RMS and MAPE values, which are 0.9831, 5.2425 and 0.1105, respectively. As a result, in the model, the testing results indicated that experimental data can be estimated to a notable close extent by the model.
URI: https://doi.org/10.12989/cac.2017.19.3.275
http://koreascience.or.kr/article/JAKO201713842132849.page
1598-818X
http://hdl.handle.net/11452/30403
ISSN: 1598-8198
Appears in Collections:Scopus
Web of Science

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