4.7 Article

Coupling SWAT and ANN models for enhanced daily streamflow prediction

期刊

JOURNAL OF HYDROLOGY
卷 533, 期 -, 页码 141-151

出版社

ELSEVIER SCIENCE BV
DOI: 10.1016/j.jhydrol.2015.11.050

关键词

Streamflow; Forecast; Unmonitored watershed; ANN; SWAT

资金

  1. USDA Forest Service
  2. National Urban & Community Forestry Council, United States
  3. Center for Environmental Studies at the Urban-Rural Interface, School of Forestry and Wildlife Sciences, Auburn University, United States

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To improve daily flow prediction in unmonitored watersheds a hybrid model was developed by combining a quasi-distributed watershed model and artificial neural network (ANN). Daily streamflow data from 29 nearby watersheds in and around the city of Atlanta, Southeastern United States, with leave-one site -out jackknifing technique were used to build the flow predictive models during warm and cool seasons. Daily streamflow was first simulated with the Soil and Water Assessment Tool (SWAT) and then the SWAT simulated baseflow and stormflow were used as inputs to ANN. Out of the total 29 test watersheds, 62% and 83% of them had Nash-Sutcliffe values above 0.50 during the cool and warm seasons, respectively (considered good or better). As the percent forest cover or the size of test watershed increased, the performances of the models gradually decreased during both warm and cool seasons. This indicates that the developed models work better in urbanized watersheds. In addition, SWAT and SWAT Calibration Uncertainty Procedure (SWAT-CUP) program were run separately for each station to compare the flow prediction accuracy of the hybrid approach to SWAT. Only 31% of the sites during the calibration and 34% of validation runs had ENAsH values >= 0.50. This study showed that coupling ANN with semi distributed models can lead to improved daily streamflow predictions in ungauged watersheds. (C) 2015 Elsevier B.V. All rights reserved.

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