Journal of Information Technology in Construction
ITcon Vol. 16, pg. 713-726, http://www.itcon.org/2011/42
Construction labor production rates modeling using artificial neural network
published: | June 2011 | |
editor(s): | Turk . | |
authors: | Sana Muqeem, Ph.D student
Civil Engineering Dept, Universiti Teknologi PETRONAS, Malaysia sanamuqeem@yahoo.com Arazi Idrus, Associate Professor Civil Engineering Dept, Universiti Teknologi PETRONAS, Malaysia arazi_idrus@petronas.com.my M. Faris Khamidi, Lecturer Civil Engineering Department, Universiti Teknologi PETRONAS, Malaysia mfaris_khamidi@petronas.com.my Jale Bin Ahmad, Lecturer Computer Information Science Dept, Universiti Teknologi PETRONAS, Malaysia jale_ahmad@petronas.com.my Saiful Bin Zakaria, M.Sc. Student Civil Engineering Dept, Universiti Teknologi PETRONAS, Malaysia saifulsshi_sa@yahoo.com.my | |
summary: | Construction productivity is constantly declining over a decade due to the lack of standardproductivity database system and the ignorance of impact of various factors influencing labor productivity.Prediction models developed earlier usually neglect the influencing factors which are subjective in nature suchas weather, site conditions etc. Many modeling techniques have been developed for predicting production ratesfor labor that incorporate the influence of various factors but artificial neural network (ANN) has been found tohave strong pattern recognition and learning capabilities to get reliable results. Therefore the objective of thisresearch is to develop a neural network prediction model for predicting labor production rates that takes intoaccount the factors which are in qualitative form. The objectives of the research have been achieved bycollecting production rates data for formwork of beams from different high rise concrete building structures bydirect observation. Reliable values of production rates have been successfully predicted by ANN. The averagevalue of 1.45xE-04 has been obtained for Mean Square Error (MSE) after testing the network . These resultsindicate that the ANN has predicted production rates values for beam formwork successfully with least range oferrors. | |
keywords: | Production rates, influencing factors, work sampling, artificial neural network (ANN). | |
full text: | (PDF file, 0.604 MB) | |
citation: | Muqeem S, Idrus A, Khamidi M F, Ahmad J B, Zakaria S B (2011). Construction labor production rates modeling using artificial neural network, ITcon Vol. 16, pg. 713-726, https://www.itcon.org/2011/42 |