A construction productivity study on precast concrete installation
This report is part of an ongoing study under a research team which consists of one Ph.D student (Ali Najafi) and two final year students (Ting Weiwen Darren and the author). The aim of the study is to examine the factors affecting the installation of precast concrete components in a variety o...
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Format: | Final Year Project |
Language: | English |
Published: |
2012
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Online Access: | http://hdl.handle.net/10356/50275 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | This report is part of an ongoing study under a research team which consists of one Ph.D student (Ali
Najafi) and two final year students (Ting Weiwen Darren and the author). The aim of the study is to
examine the factors affecting the installation of precast concrete components in a variety of projects
and thereafter create a statistical model which can predict the installation time of the precast concrete
panel.
It is noted that contractors have a rough estimate for installation time of precast components which is
about 30-45 minutes per panel. From the data analysis, it shows that some panels can take up to 80
minutes to install and some can be done less than 20 minutes. Therefore, there is a big difference in
time prediction which might have a huge impact on the onsite planning and management. The model
is trying to reduce this tolerance by being able to predict the cycle time more accurately with the input
of factors that affect the cycle time.
Firstly, the basic fundamentals of precast concrete installation method and the factors that might affect
the installation procedure were carefully studied. Questionnaire with 17 desired parameters were
prepared and contractors were contacted for data collection. Then, the research team made a number
of site visits to collect the required data and analysis was done afterwards.
A total of 71 data were collected and only fifty five cycle time data were used in the analysis. The
main platform used to carry out the statistical analysis is SPSS software. The regression model was
developed with relevant independent variables that have a significant impact on cycle time of
installation. The result shows that only 9 out of 17 parameters have a significant impact on the cycle
time and 71.9% of the variation in the total time can be explained by those independent variables.
From this research, the practitioners will be able to plan precast concrete installation process more
accurately and effectively. The model can be used to calculate the more precise installation time
which will help the daily planning process. They will also have a better understanding of the factors
that affect the cycle time and take necessary precautions to achieve higher productivity. |
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