바로가기 메뉴
본문 바로가기
푸터 바로가기
TOP

005. Optimal initial perturbations for El Nino ensemble prediction with ensemble Kalman filter

005. Optimal initial perturbations for El Nino ensemble prediction with ensemble Kalman filter

저자

Yoo-Geun Ham, Jong-Seong Kug, In-Sik Kang

저널 정보

Climate dynamics

출간연도

December 2009

Optimal initial perturbations for El Nino ensemble prediction with ensemble Kalman filter
Yoo-Geun Ham, Jong-Seong Kug, In-Sik Kang

Abstract:
A method for selecting optimal initial perturbations is developed within the framework of an ensemble Kalman filter (EnKF). Among the initial conditions generated by EnKF, ensemble members with fast growing perturbations are selected to optimize the ENSO seasonal forecast skills. Seasonal forecast experiments show that the forecast skills with the selected ensemble members are significantly improved compared with other ensemble members for up to 1-year lead forecasts. In addition, it is found that there is a strong relationship between the forecast skill improvements and flow-dependent instability. That is, correlation skills are significantly improved over the region where the predictable signal is relatively small (i.e. an inverse relationship). It is also shown that forecast skills are significantly improved during ENSO onset and decay phases, which are the most unpredictable periods among the ENSO events.

PDF: P2009_1
This site is registered on wpml.org as a development site. Switch to a production site key to remove this banner.