Streamflow Reconstruction in the Upper Missouri River Basin Using a Novel Bayesian Network Model
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Ravindranath_et_al-2019-Water_ ...
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Final Published Version
Author
Ravindranath, ArunDevineni, Naresh
Lall, Upmanu
Cook, Edward R.
Pederson, Greg
Martin, Justin
Woodhouse, Connie
Affiliation
Univ Arizona, Dept Geosci, Sch Geog & Dev, Lab Tree Ring ResIssue Date
2019-09-09Keywords
spatial Markov modelpaleo-reconstructions
streamflow reconstructions
Bayesian statistics
water management
stochastic hydrology
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AMER GEOPHYSICAL UNIONCitation
Ravindranath, A., Devineni, N., Lall, U., Cook, E. R., Pederson, G., Martin, J., & Woodhouse, C. ( 2019). Streamflow reconstruction in the upper Missouri River basin using a novel Bayesian network model. Water Resources Research, 55, 7694– 7716. https://doi.org/10.1029/2019WR024901Journal
WATER RESOURCES RESEARCHRights
© 2019. American Geophysical Union. All Rights Reserved.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
A Bayesian model that uses the spatial dependence induced by the river network topology, and the leading principal components of regional tree ring chronologies for paleo-streamflow reconstruction is presented. In any river basin, a convergent, dendritic network of tributaries come together to form the main stem of a river. Consequently, it is natural to think of a spatial Markov process that recognizes this topological structure to develop a spatially consistent basin-scale streamflow reconstruction model that uses the information in streamflow and tree ring chronology data to inform the reconstructed flows, while maintaining the space-time correlation structure of flows that is critical for water resource assessments and management. Given historical data from multiple streamflow gauges along a river, their tributaries in a watershed, and regional tree ring chronologies, the model is fit and used to simultaneously reconstruct the full network of paleo-streamflow at all gauges in the basin progressing upstream to downstream along the river. Our application to 18 streamflow gauges in the Upper Missouri River Basin shows that the mean adjusted R-2 for the basin is approximately 0.5 with good overall cross-validated skill as measured by five different skill metrics. The spatial network structure produced a substantial reduction in the uncertainty associated with paleo-streamflow as one proceeds downstream in the network aggregating information from upstream gauges and tree ring chronologies. Uncertainty was reduced by more than 50% at six gauges, between 6% and 50% at one gauge, and by less than 5% at the remaining 11 gauges when compared with the traditional principal component regression reconstruction model.Note
6 month embargo; published online: 8 August 2019ISSN
0043-1397Version
Final published versionSponsors
National Science FoundationNational Science Foundation (NSF); Paleo Perspective on Climate Change (P2C2) [1401698, 1404188]; National Science Foundation, Water Sustainability and Climate (WSC)National Science Foundation (NSF) [1360446]; U.S. Department of EnergyUnited States Department of Energy (DOE) [DE-SC0018124]; U.S. Bureau of Reclamation WaterSMART Program (Sustain and Manage America's Resources for Tomorrow); state of Montana Department of Natural Resources and Conservation; U.S. Geological Survey Land Resources Mission Area; North Central Climate Adaptation Science Center; Lamont-Doherty Earth Observatory [8349]ae974a485f413a2113503eed53cd6c53
10.1029/2019wr024901
