Abstract

We investigated the characteristics of surface wind speeds and temperatures predicted by the local data assimilation and prediction system (LDAPS) operated by the Korean Meteorological Administration. First, we classified automated weather stations (AWSs) into four categories (urban flat (Uf), rural flat (Rf), rural mountainous (Rm), and rural coastal (Rc) terrains) based on the surrounding land cover and topography, and selected 25 AWSs representing each category. Then we calculated the mean bias error of wind speed (WE) and temperature (TE) using AWS observations and LDAPS predictions for the 25 AWSs in each category for a period of 1 year (January–December 2015). We found that LDAPS overestimated wind speed (average WE = 1.26 m s−1) and underestimated temperature (average TE = −0.63 °C) at Uf AWSs located on flat terrain in urban areas because it failed to reflect the drag and local heating caused by buildings. At Rf, located on flat terrain in rural areas, LDAPS showed the best performance in predicting surface wind speed and temperature (average WE = 0.42 m s−1, average TE = 0.12 °C). In mountainous rural terrain (Rm), WE and TE were strongly correlated with differences between LDAPS and actual altitude. LDAPS underestimated (overestimated) wind speed (temperature) for LDAPS altitudes that were lower than actual altitude, and vice versa. In rural coastal terrain (Rc), LDAPS temperature predictions depended on whether the grid was on land or sea, whereas wind speed did not depend on grid location. LDAPS underestimated temperature at grid points on the sea, with smaller TE obtained for grid points on sea than on land.

Highlights

  • Weather directly and indirectly influences daily life and economic activity

  • We investigated the characteristics of surface wind speeds and temperatures predicted by local data assimilation and prediction system (LDAPS)

  • We analyzed the characteristics of surface wind speeds and temperatures predicted by LDAPS for

Read more

Summary

Introduction

Severe weather can cause disasters that lead to loss of human life and property [1,2,3,4]. Accurate and precise weather prediction can help mitigate such disasters and provide useful information for socioeconomic and cultural fields including agriculture, industry, transportation, tourism, and leisure [5,6,7]. Previous studies in Korea have improved the accuracy of numerical weather prediction models. Jeong and Lee [10] contributed to enhancing the medium-range prediction of the weather research and forecasting (WRF) model by correcting bias errors. Kwun et al [12] analyzed the difference in the planetary boundary layer (PBL) scheme between the weather research and forecasting (WRF) model and the fifth-generation Pennsylvania State

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call