Model to Predict the Impact of a Technology on Construction Productivity
Publication: Journal of Construction Engineering and Management
Volume 137, Issue 9
Abstract
Although some new technologies promise to improve construction productivity, their ability to deliver is not always realized. Building on a great deal of prior research, a four-stage predictive model was developed and validated to estimate the potential for a technology to have a positive impact on construction productivity. The four stages examine the costs, feasibility, usage history, and technical impact of a technology. The predictive model combines results from historical analyses to formalize how selected technologies with improved construction productivity can be used as a predictor of how future technologies might do the same. Each of the stages of a predictive model was subdivided into a series of categories and questions, which were weighted by importance by using the analytic hierarchy process and historical analysis to generate a performance score for the analyzed technology. The predictive model was then validated by using 74 previous and existing construction technologies. Statistical analysis confirmed that average performance scores produced by the model were significantly different across the categories of successful, inconclusive, and unsuccessful in the actual implementation experience of technologies.
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Acknowledgments
The authors thank the CII and Fully Integrated and Automated Technologies (FIATECH) for funding this research (Project number CII RT-240), along with the numerous affiliated companies and individuals who participated in the research.
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© 2011 American Society of Civil Engineers.
History
Received: Nov 27, 2009
Accepted: Nov 22, 2010
Published online: Dec 4, 2010
Published in print: Sep 1, 2011
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