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The 3-Hour-Interval Prediction of Ground-Level Temperature in South Korea Using Dynamic Linear Models 被引量:3

The 3-Hour-Interval Prediction of Ground-Level Temperature in South Korea Using Dynamic Linear Models
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摘要 The 3-hour-interval prediction of ground-level temperature from +00 h out to +45 h in South Korea (38 stations) is performed using the DLM (dynamic linear model) in order to eliminate the systematic error of numerical model forecasts. Numerical model forecasts and observations are used as input values of the DLM. According to the comparison of the DLM forecasts to the KFM (Kalman filter model) forecasts with RMSE and bias, the DLM is useful to improve the accuracy of prediction. The 3-hour-interval prediction of ground-level temperature from +00 h out to +45 h in South Korea (38 stations) is performed using the DLM (dynamic linear model) in order to eliminate the systematic error of numerical model forecasts. Numerical model forecasts and observations are used as input values of the DLM. According to the comparison of the DLM forecasts to the KFM (Kalman filter model) forecasts with RMSE and bias, the DLM is useful to improve the accuracy of prediction.
机构地区 Dept.of Statistics
出处 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2003年第4期575-582,共8页 大气科学进展(英文版)
关键词 temperature forecasting systematic error dynamic linear model temperature forecasting systematic error dynamic linear model
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