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An Analysis of the Difference between the Multiple Linear Regression Approach and the Multimodel Ensemble Mean 被引量:5

An Analysis of the Difference between the Multiple Linear Regression Approach and the Multimodel Ensemble Mean
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摘要 An investigation of the difference in seasonal precipitation forecast skills between the multiple linear regression (MLR) ensemble and the simple multimodel ensemble mean (EM) was based on the forecast quality of individual models. The possible causes of difference in previous studies were analyzed. In order to make the simulation capability of studied regions relatively uniform, three regions with different temporal correlation coefficients were chosen for this study. Results show the causes resulting in the incapability of the MLR approach vary among different regions. In the Nifio3.4 region, strong co-linearity within individual models is generally the main reason. However, in the high latitude region, no significant co-linearity can be found in individual models, but the abilities of single models are so poor that it makes the MLR approach inappropriate for superensemble forecasts in this region. In addition, it is important to note that the use of various score measurements could result in some discrepancies when we compare the results derived from different multimodel ensemble approaches. An investigation of the difference in seasonal precipitation forecast skills between the multiple linear regression (MLR) ensemble and the simple multimodel ensemble mean (EM) was based on the forecast quality of individual models. The possible causes of difference in previous studies were analyzed. In order to make the simulation capability of studied regions relatively uniform, three regions with different temporal correlation coefficients were chosen for this study. Results show the causes resulting in the incapability of the MLR approach vary among different regions. In the Nifio3.4 region, strong co-linearity within individual models is generally the main reason. However, in the high latitude region, no significant co-linearity can be found in individual models, but the abilities of single models are so poor that it makes the MLR approach inappropriate for superensemble forecasts in this region. In addition, it is important to note that the use of various score measurements could result in some discrepancies when we compare the results derived from different multimodel ensemble approaches.
出处 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2009年第6期1157-1168,共12页 大气科学进展(英文版)
基金 supported by the National Key Technology Research and Development Program(Grant No.2006BAC02B04) the Major State Basic Research Development Program of China(Grant No.2006CB400503)
关键词 PRECIPITATION multimodel ensemble seasonal prediction difference analysis co-linearity diagnosis precipitation, multimodel ensemble, seasonal prediction, difference analysis, co-linearity diagnosis
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