Evaluating and Improving Wind Forecasts over South China: The Role of Orographic Parameterization in the GRAPES Model

被引:0
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作者
Shuixin Zhong
Zitong Chen
Daosheng Xu
Yanxia Zhang
机构
[1] China Meteorological Administration,Guangdong Province Key Laboratory of Regional Numerical Weather Prediction, Institute of Tropical and Marine Meteorology
来源
关键词
small-scale orographic drag; GRAPES TMM; PBL parameterization; wind bias; 次网格地形; 风速预报; 拖曳; 预报误差;
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中图分类号
学科分类号
摘要
Unresolved small-scale orographic (SSO) drags are parameterized in a regional model based on the Global/Regional Assimilation and Prediction System for the Tropical Mesoscale Model (GRAPES TMM). The SSO drags are represented by adding a sink term in the momentum equations. The maximum height of the mountain within the grid box is adopted in the SSO parameterization (SSOP) scheme as compensation for the drag. The effects of the unresolved topography are parameterized as the feedbacks to the momentum tendencies on the first model level in planetary boundary layer (PBL) parameterization. The SSOP scheme has been implemented and coupled with the PBL parameterization scheme within the model physics package. A monthly simulation is designed to examine the performance of the SSOP scheme over the complex terrain areas located in the southwest of Guangdong. The verification results show that the surface wind speed bias has been much alleviated by adopting the SSOP scheme, in addition to reduction of the wind bias in the lower troposphere. The target verification over Xinyi shows that the simulations with the SSOP scheme provide improved wind estimation over the complex regions in the southwest of Guangdong.
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页码:713 / 722
页数:9
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