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Support Vector Machine Based Hybrid Model for Prediction of Road Structures Construction Costs (CROSBI ID 673742)

Prilog sa skupa u zborniku | izvorni znanstveni rad | međunarodna recenzija

Petruševa, Silvana ; Car-Pušić, Diana ; Zileska- Pancovska, Valentina Support Vector Machine Based Hybrid Model for Prediction of Road Structures Construction Costs // IOP conference series. Earth and environmental science. 2019. doi: 10.1088/1755-1315/222/1/012010

Podaci o odgovornosti

Petruševa, Silvana ; Car-Pušić, Diana ; Zileska- Pancovska, Valentina

engleski

Support Vector Machine Based Hybrid Model for Prediction of Road Structures Construction Costs

Cost prediction in early stages of construction projects is one of the crucial problems of project sustainability. Previous research has been aimed at process based and data driven model development by using various techniques, e.g. regression analysis, support vector machine (SVM), neural networks etc. According to the research results, neither of the techniques can be considered the best for all circumstances. Therefore, the research has been redirected towards hybrid modelling, i.e. combination of different techniques. In this research, for prediction of the target variable - real construction cost of road structures, available variables: contracted construction cost, contracted construction time and real construction time and cost, hybrid model - combination of SVM technique (data-driven model) and Bromilow time-cost model (TCM) (process-based model) have been used. Five hybrid models have been built for comparison purposes: SVM-Bromilow TCM, LR-Bromilow TCM, RBFNN-Bromilow TCM, MLP-Bromilow TCM and GRNN- Bromilow TCM, combining Bromilow TCM with SVM, LR (linear regression), RBFNN (radial basis function neural network), MLP (Multilayer perceptron) and GRNN (general regression neural network), respectively. The highest accuracy has been obtained with SVM-Bromilow TCM with mean absolute percentage error (MAPE) 1.01% and coefficient of determination (R2) 97.61%.

cost prediction ; support vectore machine ; hybrid modelling, process based model, data driven model

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Podaci o prilogu

012010

2019.

objavljeno

10.1088/1755-1315/222/1/012010

Podaci o matičnoj publikaciji

IOP Conference Series: Earth and Environmental Science

IOP Publishing

1755-1307

1755-1315

Podaci o skupu

Nepoznat skup

predavanje

29.02.1904-29.02.2096

Povezanost rada

Građevinarstvo

Poveznice
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