Understanding the biases in extreme precipitation climatology in CMIP6 models
编号:834 稿件编号:714 访问权限:仅限参会人 更新:2026-04-08 09:34:22 浏览:101次 口头报告

报告开始:2026年04月27日 16:45 (Asia/Shanghai)

报告时间:15min

所在会议:[S1-8] 专题1.8 季风系统的模拟评估与预测预估 » [F35] 专题1.8 季风系统的模拟评估与预测预估

暂无文件

摘要

Extreme precipitation has intensified significantly under global warming, yet CMIP6 models still exhibit substantial biases in simulating its climatology, particularly over global land monsoon (GLM) regions. Understanding the sources of these biases is critical for improving the reliability of future projections. In this study, we evaluate extreme precipitation climatology in 11 CMIP6 models over 1979–2014, using ERA5 as the primary reference dataset. Multiple extreme indices, including Rx1day, P99, P95, and a tail metric (PM), are analyzed. A physical scaling framework is applied to decompose model biases into thermodynamic and dynamic components. Furthermore, the quasi-geostrophic (QG) omega equation is employed to diagnose the sources of dynamical biases, and the baroclinic instability criterion (BIC) is used to quantify the role of atmospheric baroclinicity. Results show that CMIP6 multi-model ensemble exhibits a pronounced wet bias in extreme precipitation globally, with mean biases over GLM regions (~14% for Rx1day) exceeding twice the global mean (~6%). The decomposition analysis reveals that dynamical processes dominate the wet biases across all extreme indices. These dynamical biases are strongly associated with biases in vertical velocity, with pattern correlation coefficients exceeding 0.97. Diagnostic analysis based on the QG omega equation indicates that biases in vertical motion primarily arise from large-scale forcing terms, which are closely linked to biases in atmospheric baroclinicity. Our findings highlight that improving the representation of large-scale dynamics and baroclinic processes is key to reducing extreme precipitation biases in climate models. These results provide a process-based understanding of model deficiencies and offer guidance for future model development and bias correction strategies.

关键字
CMIP6; Global Land Monsoon; Extreme Precipitation; Model Biases
报告人
刘博
教授 成都信息工程大学

稿件作者
刘博 成都信息工程大学
发表评论
验证码 看不清楚,更换一张
全部评论
登录 注册缴费 提交稿件 酒店预订