环境科学
降水
高原(数学)
蒸散量
短波辐射
大气科学
气候学
云分数
辐射传输
短波
气候模式
季风
云计算
气象学
气候变化
云量
辐射
地质学
数学
地理
计算机科学
数学分析
生态学
海洋学
物理
量子力学
生物
操作系统
作者
Jiarui Liu,Kun Yang,Dingchi Zhao,Peili Wu,Jiamin Wang,Xu Zhou,Yanluan Lin,Hui Lü,Yaozhi Jiang,Jiancheng Shi
摘要
Abstract Over‐estimation of summer precipitation over the Tibetan Plateau (TP) is a well‐known and persistent problem in most climate models. This study demonstrates the impact of a Gaussian Probability Density Function cloud fraction scheme on rainfall simulations using the Weather Research and Forecasting model. It is found that this scheme in both 0.1° and 0.05° resolutions significantly reduces the wet bias through both local feedbacks and large‐scale dynamic process. Specifically, increased cloud water/ice content with this scheme reduces surface shortwave radiation, and consequently surface heat fluxes and evapotranspiration. This, in turn, dampens the large‐scale thermal effect of the TP and weakens the exaggerated monsoon circulation and low‐level moisture convergence. It is this large‐scale dynamic process that contributes the most (∼70%) to the wet bias reduction. Although this paper presents a modeling study, it highlights the cloud radiative feedback to the large‐scale dynamics and precipitation over the TP.
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