Abstract

Abstract. Mesoscale numerical weather prediction (NWP) models are gaining more attention in providing high-resolution rainfall forecasts at the catchment scale for real-time flood forecasting. The model accuracy is however negatively affected by the "spin-up" effect and errors in the initial and lateral boundary conditions. Synoptic studies in the meteorological area have shown that the assimilation of operational observations, especially the weather radar data, can improve the reliability of the rainfall forecasts from the NWP models. This study aims at investigating the potential of radar data assimilation in improving the NWP rainfall forecasts that have direct benefits for hydrological applications. The Weather Research and Forecasting (WRF) model is adopted to generate 10 km rainfall forecasts for a 24 h storm event in the Brue catchment (135.2 km2) located in southwest England. Radar reflectivity from the lowest scan elevation of a C-band weather radar is assimilated by using the three-dimensional variational (3D-Var) data-assimilation technique. Considering the unsatisfactory quality of radar data compared to the rain gauge observations, the radar data are assimilated in both the original form and an improved form based on a real-time correction ratio developed according to the rain gauge observations. Traditional meteorological observations including the surface and upper-air measurements of pressure, temperature, humidity and wind speed are also assimilated as a bench mark to better evaluate and test the potential of radar data assimilation. Four modes of data assimilation are thus carried out on different types/combinations of observations: (1) traditional meteorological data; (2) radar reflectivity; (3) corrected radar reflectivity; (4) a combination of the original reflectivity and meteorological data; and (5) a combination of the corrected reflectivity and meteorological data. The WRF rainfall forecasts before and after different modes of data assimilation are evaluated by examining the rainfall temporal variations and total amounts which have direct impacts on rainfall–runoff transformation in hydrological applications. It is found that by solely assimilating radar data, the improvement of rainfall forecasts are not as obvious as assimilating meteorological data; whereas the positive effect of radar data can be seen when combined with the traditional meteorological data, which leads to the best rainfall forecasts among the five modes. To further improve the effect of radar data assimilation, limitations of the radar correction ratio developed in this study are discussed and suggestions are made on more efficient utilisation of radar data in NWP data assimilation.

Highlights

  • Accurate rainfall forecasts are required in constructing a reliable flood forecasting system

  • This study investigates the potential of assimilating radar reflectivity data in improving the numerical weather prediction (NWP) rainfall forecasts with respect to the cumulative quantities and temporal variations, which have direct impact on rainfall–runoff transformation in hydrological applications

  • The latest-generation mesoscale NWP model, Weather Research and Forecasting (WRF), is used in tandem with the 3D-Var dataassimilation technique to carry out the rainfall forecasting experiments for a 24 h storm event in a catchment with a drainage area of 135.2 km2

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Summary

Introduction

Accurate rainfall forecasts are required in constructing a reliable flood forecasting system. This is true in the flash flooding area where the forecast accuracy is highly dependent on the rapid availability of the rainfall distribution in advance (Ferraris et al, 2002). Nowcasting methods are used in operational applications for short lead-time rainfall forecasts. Most of these methods are based on an extrapolation of the radar echoes J. Liu et al.: A study on WRF radar data assimilation for hydrological rainfall prediction

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