Title of article
Genetic Programming Based Formulation to Predict Compressive Strength of High Strength Concrete
Author/Authors
Abdollahzadeh ، Gholamreza - Babol University of Technology , Jahani ، Ehsan - University of Mazandaran , Kashir ، Zahra - Tabari University of Babol
Pages
13
From page
207
To page
219
Abstract
This study introduces, two models based on Gene Expression Programming (GEP) to predict compressive strength of high strength concrete (HSC). Composition of HSC was assumed simplified, as a mixture of six components (cement, silica fume, super-plastisizer, water, fine aggregate and coarse aggregate). The 28-day compressive strength value was considered the target of the prediction. Data on 159 mixes were taken from various publications. The system was trained based on 80% training pairs chosen randomly from the data set and then tested using remaining 20% samples. Therefore it can be proven and illustrated that the GEP is a strong technique for the prediction of compressive strength amounts of HSC concerning to the outcomes of the training and testing phases compared with experimental outcomes illustrate that the.
Keywords
Compressive Strength , Gene Expression Programming , HSC , Silica Fume
Journal title
Civil Engineering Infrastructures Journal
Serial Year
2017
Journal title
Civil Engineering Infrastructures Journal
Record number
2453009
Link To Document