Contemporaneous Time Series and Forecasting Methodologies for Predicting Short-Term Productivity
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VIEW THE REPLYPublication: Journal of Construction Engineering and Management
Volume 136, Issue 9
Abstract
Productivity has a profound impact on projects that depend on time and cost of construction operations. In addition, time and cost estimates are derived from productivity. Thus, accurate prediction of productivity is essential to effectively plan and control construction operations. Predicting productivity of ongoing operations, however, is challenging. Due to dynamic and stochastic changes in productivity over time during construction, frequent and regular forecasting of short-term productivity is critical in managing ongoing operations. The present research investigated the characteristics of series of periodic productivity that should be taken into consideration to effectively predict short-term productivity continually and proactively. Given the identified characteristics, this study reviewed a few potential statistical methodologies that can make full use of contemporaneous time series data related to production for the purpose of predicting short-term productivity by using trend analysis. The methodologies were demonstrated in this paper using an example case, through which data processing and modeling procedure for modeling contemporaneous series data were explained.
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© 2010 ASCE.
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Received: Apr 17, 2008
Accepted: Dec 15, 2009
Published online: Dec 17, 2009
Published in print: Sep 2010
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