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首页> 外文期刊>The Cryosphere >Systematic bias of Tibetan Plateau snow cover in subseasonal-to-seasonal models
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Systematic bias of Tibetan Plateau snow cover in subseasonal-to-seasonal models

机译:藏高高原雪盖的系统偏差在季期期为季节性模型中

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摘要

Accurate subseasonal-to-seasonal (S2S) atmospheric forecasts and hydrological forecasts have considerable socioeconomic value. This study conducts a multimodel comparison of the Tibetan Plateau snow cover (TPSC) prediction skill using three models (ECMWF, NCEP and CMA) selected from the S2S project database to understand their performance in capturing TPSC variability during wintertime. S2S models can skillfully forecast TPSC within a lead time of 2?weeks but show limited skill beyond 3 weeks. Compared with the observational snow cover analysis, all three models tend to overestimate the area of TPSC. Another remarkable issue regarding the TPSC forecast is the increasing TPSC with forecast lead time, which further increases the systematic positive biases of TPSC in the S2S models at longer forecast lead times. All three S2S models consistently exaggerate the precipitation over the Tibetan Plateau. The exaggeration of precipitation is prominent and always exists throughout the model integration. Systematic bias of TPSC therefore occurs and accumulates with the model integration time. Such systematic biases of TPSC influence the forecasted surface air temperature in the S2S models. The surface air temperature over the Tibetan Plateau becomes colder with increasing forecast lead time in the S2S models. Numerical experiments further confirm the causality.
机译:准确的季节性到季节性(S2S)大气预测和水文预报具有相当大的社会经济价值。本研究采用选自S2S项目数据库中选择的三种模型(ECMWF,NCEP和CMA)来进行藏高高原雪覆盖(TPSC)预测技能的多模型比较,以了解它们在冬季捕获TPSC变异时的性能。 S2S模型可以巧妙地在2个周内预测TPSC,但在3周内显示有限的技能。与观察性雪覆盖分析相比,所有三种模型往往估计TPSC面积。关于TPSC预测的另一个显着的问题是增加了TPSC与预测的提前期,这进一步增加了S2S模型中TPSC的系统正偏差,在更长的预测转速时间。所有三个S2S模型一致地夸大藏高高原的降水。覆盖降水突出,并且在整个模型集成过程中始终存在。因此,TPSC的系统偏差发生并累积模型集成时间。 TPSC的这种系统偏差影响S2S模型中的预测表面空气温度。在S2S模型中增加预测延长时间,藏高平台上的表面空气温度变冷。数值实验进一步证实了因果关系。

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