WRF Dynamical Downscaling and Bias Correction Schemes for NCEP Estimated Hydro-Meteorological Variables

被引:0
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作者
Prashant K. Srivastava
Tanvir Islam
Manika Gupta
George Petropoulos
Qiang Dai
机构
[1] NASA Goddard Space Flight Center,Hydrological Sciences
[2] University of Maryland,Earth System Science Interdisciplinary Center
[3] NOAA/NESDIS Center for Satellite Applications and Research,Cooperative Institute for Research in the Atmosphere
[4] Colorado State University,Department of Geography and Earth Sciences
[5] University of Aberystwyth,Department of Civil Engineering
[6] University of Bristol,undefined
[7] Universities Space Research Association,undefined
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关键词
Hydro-meteorological variables; Weather research and forecasting model; WRF downscaling; RVM, GLM, Bias correction;
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摘要
Rainfall and Reference Evapotranspiration (ETo) are the most fundamental and significant variables in hydrological modelling. However, these variables are generally not available over ungauged catchments. ETo estimation usually needs measurements of weather variables such as wind speed, air temperature, solar radiation and dew point. After the development of reanalysis global datasets such as the National Centre for Environmental Prediction (NCEP) and high performance modelling framework Weather Research and Forecasting (WRF) model, it is now possible to estimate the rainfall and ETo for any coordinates. In this study, the WRF modelling system was employed to downscale the global NCEP reanalysis datasets over the Brue catchment, England, U.K. After downscaling, two statistical bias correction schemes were used, the first was based on sophisticated computing algorithms i.e., Relevance Vector Machine (RVM), while the second was based on the more simple Generalized Linear Model (GLM). The statistical performance indices for bias correction such as %Bias, index of agreement (d), Root Mean Square Error (RMSE), and Correlation (r) indicated that the RVM model, on the whole, displayed a more accomplished bias correction of the variability of rainfall and ETo in comparison to the GLM. The study provides important information on the performance of WRF derived hydro-meteorological variables using NCEP global reanalysis datasets and statistical bias correction schemes which can be used in numerous hydro-meteorological applications.
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页码:2267 / 2284
页数:17
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