Pregled bibliografske jedinice broj: 847065
Model for Predicting Construction Time by Using General Regression Neural Network
Model for Predicting Construction Time by Using General Regression Neural Network // Conference Proceedings of People, Buildings and Environment 2016, an international scientific conference, vol. 4, Luhačovice, Czech Republic, pp. 33-46, ISSN: 1805-6784. / Korytarova, Jana ; Serrat Carles ; Hanak, Tomaš ; Vankova, Lucie (ur.).
Brno: Brno: Brno University of Technology ; Faculty of Civil Engineering, 2016. str. 33-46 (predavanje, međunarodna recenzija, cjeloviti rad (in extenso), znanstveni)
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Naslov
Model for Predicting Construction Time by Using General Regression Neural Network
Autori
Petruševa, Silvana ; Car-Pušić, Diana ; Žileska- Pancovska, Valentina
Vrsta, podvrsta i kategorija rada
Radovi u zbornicima skupova, cjeloviti rad (in extenso), znanstveni
Izvornik
Conference Proceedings of People, Buildings and Environment 2016, an international scientific conference, vol. 4, Luhačovice, Czech Republic, pp. 33-46, ISSN: 1805-6784.
/ Korytarova, Jana ; Serrat Carles ; Hanak, Tomaš ; Vankova, Lucie - Brno : Brno: Brno University of Technology ; Faculty of Civil Engineering, 2016, 33-46
Skup
International Scientific Conference People, Buildings and Environment 2016 (PBE2016) Luhacovice, Czech Republic, www.fce.vutbr.cz/ekr/PBE
Mjesto i datum
Luhačovice, Češka Republika, 29.09.2016. - 01.10.2016
Vrsta sudjelovanja
Predavanje
Vrsta recenzije
Međunarodna recenzija
Ključne riječi
construction time; DTREG software; general regression neural network; predicting
Sažetak
Construction time is an element of every construction contract. Thus, its prediction is of particular interest. This paper presents a construction time prediction model by using General Regression Neural Network. Key data on a total of 70 constructed buildings have been collected through field studies. Chief engineers of construction companies have been interviewed on contractual and actually incurred construction times, contractual and actual construction costs, type of facilities and construction year. General Regression Neural Network (GRNN) from predictive modelling software named DTREG, as new approach in forecasting, was used for building the predictive model to predict the real construction time. Prediction was very accurate with mean absolute percentage error, MAPE, around 2.19 which means that the error of the model is around 2.19%, the coefficient of correlation between the actual and the predicted values is very high, r = 0.99 (rounded) and the coefficient of determination which measures the global fit of the model R2 is 0.97875 (or 97.88%). This paper contributes to and can be useful for the decision process on planning the construction time in construction companies and in the construction industry in general.
Izvorni jezik
Engleski
Znanstvena područja
Građevinarstvo