Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs

The accuracy of currently used long-term runoff forecasting techniques, such as used by the Soil Conservation Service, are limited because of their inability to deal with the uncertainty in the amount of precipitation expected to fall after the forecast date. The basis for a simulation-based, long-t...

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Main Author: Hanes, William Toby,1951-
Other Authors: Fogel, Martin M.
Language:en
Published: The University of Arizona. 1975
Online Access:http://hdl.handle.net/10150/191620
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-1916202015-10-23T04:37:27Z Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs Hanes, William Toby,1951- Fogel, Martin M. Thames, John L. Rasmussen, William Davis, Donald Duckstein, Lucien The accuracy of currently used long-term runoff forecasting techniques, such as used by the Soil Conservation Service, are limited because of their inability to deal with the uncertainty in the amount of precipitation expected to fall after the forecast date. The basis for a simulation-based, long-term runoff forecasting technique is developed to overcome this problem by simulating future precipitation events. The technique utilizes a deterministic watershed snowmelt model and a sequence, event-based stochastic precipitation model to provide daily precipitation data inputs for the watershed model. A number of sets of inputs are run through the watershed model to produce an equal number of predictions of total seasonal runoff. A relative frequency distribution of total seasonal runoff is then plotted to which a PDF may be fitted. Various criteria were used to test the precipitation model. The majority showed no significant differences between the observed and simulated data. The lack of data prevented reasonable watershed model optimization and testing. Taking into consideration the poor watershed model response the forecasting technique responded well to the uncertainty in future precipitation and to abnormal monthly precipitation. 1975 Thesis-Reproduction (electronic) text http://hdl.handle.net/10150/191620 212886557 en Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en
sources NDLTD
description The accuracy of currently used long-term runoff forecasting techniques, such as used by the Soil Conservation Service, are limited because of their inability to deal with the uncertainty in the amount of precipitation expected to fall after the forecast date. The basis for a simulation-based, long-term runoff forecasting technique is developed to overcome this problem by simulating future precipitation events. The technique utilizes a deterministic watershed snowmelt model and a sequence, event-based stochastic precipitation model to provide daily precipitation data inputs for the watershed model. A number of sets of inputs are run through the watershed model to produce an equal number of predictions of total seasonal runoff. A relative frequency distribution of total seasonal runoff is then plotted to which a PDF may be fitted. Various criteria were used to test the precipitation model. The majority showed no significant differences between the observed and simulated data. The lack of data prevented reasonable watershed model optimization and testing. Taking into consideration the poor watershed model response the forecasting technique responded well to the uncertainty in future precipitation and to abnormal monthly precipitation.
author2 Fogel, Martin M.
author_facet Fogel, Martin M.
Hanes, William Toby,1951-
author Hanes, William Toby,1951-
spellingShingle Hanes, William Toby,1951-
Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
author_sort Hanes, William Toby,1951-
title Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
title_short Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
title_full Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
title_fullStr Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
title_full_unstemmed Predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
title_sort predicting snowmelt runoff using a deterministic watershed model with stochastic precipitation inputs
publisher The University of Arizona.
publishDate 1975
url http://hdl.handle.net/10150/191620
work_keys_str_mv AT haneswilliamtoby1951 predictingsnowmeltrunoffusingadeterministicwatershedmodelwithstochasticprecipitationinputs
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