Streamflow forecasts from WRF precipitation for flood early warning in mountain tropical areas
Description
Abstract. Numerical weather prediction (NWP) models are fundamental to extend
forecast lead times beyond the concentration time of
a watershed. Particularly for flash flood forecasting in tropical
mountainous watersheds, forecast precipitation is required to provide
timely warnings. This paper aims to assess the potential of NWP for
flood early warning purposes, and the possible improvement that bias
correction can provide, in a tropical mountainous area. The paper
focuses on the comparison of streamflows obtained from the
post-processed precipitation forecasts, particularly the comparison of
ensemble forecasts and their potential in providing skilful flood
forecasts. The Weather Research and Forecasting (WRF) model is used to
produce precipitation forecasts that are post-processed and used to
drive a hydrologic model. Discharge forecasts obtained from the
hydrological model are used to assess the skill of the WRF model. The
results show that post-processed WRF precipitation adds value to the
flood early warning system when compared to zero-precipitation
forecasts, although the precipitation forecast used in this analysis
showed little added value when compared to climatology. However, the
reduction of biases obtained from the post-processed ensembles show the
potential of this method and model to provide usable precipitation
forecasts in tropical mountainous watersheds. The need for more
detailed evaluation of the WRF model in the study area is highlighted,
particularly the identification of the most suitable parameterisation,
due to the inability of the model to adequately represent the
convective precipitation found in the study area.
Open Access
Licence Attribution (CC BY)
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Publication Details
Journal article
Journal:
Hydrology and Earth System Sciences
Publisher:
Copernicus GmbH
ISSN:
16077938
Volume:
22
Pages:
853-870
Persistent Identifiers
MAGID
2662749793
DOI
10.5194/hess-22-853-2018
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References
Alfieri,\u00a0L., Pappenberger,\u00a0F., Wetterhall,\u00a0F., Haiden,\u00a0T., R...
Read more
Kryza,\u00a0M., Werner,\u00a0M., Wa\u0142aszek,\u00a0K., and Dore,\u00a0A.\u00a0...
Read more
Habets,\u00a0F., LeMoigne,\u00a0P., and Noilhan,\u00a0J.: On the utility of oper...
Read more
Haerter, J. O., Hagemann, S., Moseley, C., and Piani, C.: Climate model bias cor...
Read more
Bogner, K., Pappenberger, F., and Cloke, H. L.: Technical Note: The normal quant...
Read more
Showing first 5 of 55 references.