Most of the currently available streamflow neural network models are either recurrent neural networks or feed-forward multi-layer perceptron (FF-MLP) requiring past flow values for lead time prediction. These models cannot be used for modelling ungauged watersheds because past flow values are not available in such cases. This study proposes a FF-MLP algorithm that relies only on low-cost, readily available meteorological data and careful time series manipulation prior to model building, and thus, is suitable for modelling streamflow in ungauged watersheds. The proposed approach was tested on four watersheds (5 to 130 km2) in the Canadian Boreal forest and was found to provide an efficient modelling alternative for daily streamflow predictions. To assess the possibility of successful model transferability from a gauged watershed to a hydrologically similar ungauged watershed, a new remotely sensed hydrologic similarity measure — SWMIR_SI — was proposed and was found to provide a successful indicator of basin similarity. The square of Pearson’s correlation coefficient, r2, was evaluated to exceed 0.71 when SWMIR_SI was regressed to models’ “goodness-of-fit” statistics reflecting the usefulness of the approach.
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August 2008
Research Article|
November 26 2008
Towards a generic neural network model for the prediction of daily streamflow in ungauged boreal plain watersheds Available to Purchase
Mohamed H. Nour;
aDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, Canada.
Corresponding author (email: mnour@ualberta.ca)
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Daniel W. Smith;
Daniel W. Smith
aDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, Canada.
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Mohamed Gamal El-Din;
Mohamed Gamal El-Din
aDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, Canada.
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Ellie E. Prepas
bFaculty of Forestry and the Forest Environment, Lakehead University, Thunder Bay, ON P7B 5E1, Canada.
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Corresponding author (email: mnour@ualberta.ca)
*
Present address: ISL Engineering and Land Services Ltd., 7909-51 Avenue NW, Edmonton, AB T6E 5L9, Canada;
†
Present address: Department of Biological Sciences, University of Alberta, Edmonton, AB T6G 2E1, Canada.
Publisher: Emerald Publishing
Received:
March 22 2007
Accepted:
September 23 2008
Accepted:
September 23 2008
Online ISSN: 1496-256X
Print ISSN: 1496-2551
2008
Journal of Environmental Engineering and Science (2008) 7 (Supplement 1): 79–93.
Article history
Received:
March 22 2007
Accepted:
September 23 2008
Accepted:
September 23 2008
Citation
Nour MH, Smith DW, Gamal El-Din M, Prepas EE (2008), "Towards a generic neural network model for the prediction of daily streamflow in ungauged boreal plain watersheds". Journal of Environmental Engineering and Science, Vol. 7 No. Supplement 1 pp. 79–93, doi: https://doi.org/10.1139/S08-046
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