Wind Prediction with a Short-range Multi-Model Ensemble System

단시간 다중모델 앙상블 바람 예측

  • Yoon, Ji Won (Forecast Research Laboratory, National Institute of Meteorological Research, KMA) ;
  • Lee, Yong Hee (Forecast Research Laboratory, National Institute of Meteorological Research, KMA) ;
  • Lee, Hee Choon (Forecast Research Laboratory, National Institute of Meteorological Research, KMA) ;
  • Ha, Jong-Chul (Forecast Research Laboratory, National Institute of Meteorological Research, KMA) ;
  • Lee, Hee Sang (Forecast Research Laboratory, National Institute of Meteorological Research, KMA) ;
  • Chang, Dong-Eon (Numerical Prediction Center, KMA)
  • 윤지원 (국립기상연구소 예보연구팀) ;
  • 이용희 (국립기상연구소 예보연구팀) ;
  • 이희춘 (국립기상연구소 예보연구팀) ;
  • 하종철 (국립기상연구소 예보연구팀) ;
  • 이희상 (국립기상연구소 예보연구팀) ;
  • 장동언 (기상청 수치예보센터)
  • Received : 2007.06.30
  • Accepted : 2007.11.01
  • Published : 2007.12.31

Abstract

In this study, we examined the new ensemble training approach to reduce the systematic error and improve prediction skill of wind by using the Short-range Ensemble prediction system (SENSE), which is the mesoscale multi-model ensemble prediction system. The SENSE has 16 ensemble members based on the MM5, WRF ARW, and WRF NMM. We evaluated the skill of surface wind prediction compared with AWS (Automatic Weather Station) observation during the summer season (June - August, 2006). At first stage, the correction of initial state for each member was performed with respect to the observed values, and the corrected members get the training stage to find out an adaptive weight function, which is formulated by Root Mean Square Vector Error (RMSVE). It was found that the optimal training period was 1-day through the experiments of sensitivity to the training interval. We obtained the weighted ensemble average which reveals smaller errors of the spatial and temporal pattern of wind speed than those of the simple ensemble average.

Keywords