Abstract

This study utilized a radar echo extrapolation system, a high-resolution numerical model with radar data assimilation, and three blending schemes including a new empirical one, called the extrapolation adjusted by model prediction (ExAMP), to carry out 150 min reflectivity nowcasting experiments for various heavy rainfall events in Taiwan in 2019. ExAMP features full trust in the pattern of the extrapolated reflectivity with intensity adjustable by numerical model prediction. The spatial performance for two contrasting events shows that the ExAMP scheme outperforms the others for the more accurate prediction of both strengthening and weakening processes. The statistical skill for all the sampled events shows that the nowcasts by ExAMP and the extrapolation system obtain the lowest and second lowest root mean square errors at all the lead time, respectively. In terms of threat scores and bias scores above certain reflectivity thresholds, the ExAMP nowcast may have more grid points of misses for high reflectivity in comparison to extrapolation, but serious overestimation among the points of hits and false alarms is the least likely to happen with the new scheme. Moreover, the event type does not change the performance ranking of the five methods, all of which have the highest predictability for a typhoon event and the lowest for local thunderstorm events.

Highlights

  • Meteorological hazards can lead to massive loss of life and property owing to the sustained trends of global population growth and urbanization

  • The corresponding rainfall converted by a reflectivity–rainfall rate (Z–R) relation: rate converted by a reflectivity–rainfall rate (Z–R) relation: 1.65

  • A long history of Doppler weather radarsystems, studies has revealed that radar echo extrapolation and high-resolution numerical model prediction with radar as tornadoes, thunderstorms, and flash floods

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Summary

Introduction

Meteorological hazards can lead to massive loss of life and property owing to the sustained trends of global population growth and urbanization. Worldwide weather service centers make unremitting efforts to develop hazard information and early warning systems, whose core technology lies in accurate weather forecasting. As the temporal and spatial scales of the hazards vary, weather forecasting is classified into seven categories according to the lead time by the. E.g., [2,3], define the lead time of nowcasting as 0–6 h instead. The targets of very short-range weather forecasting and nowcasting are usually severe weather systems at a meso-beta or -gamma scale, such as tornadoes, thunderstorms, and flash floods. Besides forecast accuracy, fast computing, Atmosphere 2020, 11, 1166; doi:10.3390/atmos11111166 www.mdpi.com/journal/atmosphere

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