Investigation of Uncertainties in Surface Water Resource Assessment of Georgia’s State Water Plan
Publication: Journal of Water Resources Planning and Management
Volume 140, Issue 2
Abstract
As one of the three key components of state of Georgia’s state water plan, a surface water availability resource assessment (SWRA) involves three sequential steps, as follows: (1) synthesizing unimpaired flow (UIF) data by removing anthropogenic effects from streamflow observations, (2) developing instream flow protection thresholds based on the UIF data, and (3) assessing possible resource gaps based on UIF data, flow protection thresholds, and water demands. Uncertainties are embedded in the observed input data and development processes, and could be propagated through these steps. A legitimate question pertains to the reliability of the SWRA results since they may affect regional water development plans. In this study, the uncertainties in all input data and development processes of SWRA were identified and quantified through Monte Carlo simulations. Results at two typical nodes indicate that uncertainties associated with the derived UIF data, flow thresholds, and SWRA results are very limited. The largest uncertainty came from the flow data-filling process. The most efficient way to reduce the uncertainty in future resource assessments is to maintain relatively complete flow and water use records.
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Acknowledgments
The authors thank George McMahon, Owen McKeon, Anwer Ahmed, and Brian Bandy of Arcadis for their assistance and support relating to the data collection of this study. The authors also thank Jason Ward, Stan Simpson, and Steve Wynn of the USACE; and Brian McCallum and Tony Gotvald of the USGS for their important discussions and valuable suggestions regarding the uncertainty in reservoir data and streamflow field measurements. The authors acknowledge permission for using TSTool software that was developed by Riverside Technology for the state of Colorado. The authors thank the anonymous reviewers for their helpful comments.
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© 2014 American Society of Civil Engineers.
History
Received: Nov 4, 2011
Accepted: Jul 30, 2012
Published online: Aug 17, 2012
Discussion open until: Jan 17, 2013
Published in print: Feb 1, 2014
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