基于物理信息诊断和大成员集合方法的亚非季风降水人工智能季节概率预测模型
编号:81 稿件编号:192 访问权限:仅限参会人 更新:2025-03-26 14:24:55 浏览:100次 口头报告

报告开始:2025年04月18日 14:50 (Asia/Shanghai)

报告时间:10min

所在会议:[S1-5] 专题1.5 东亚季风短期气候预测及机理 » [S1-5] 专题1.5 东亚季风短期气候预测及机理

暂无文件

摘要

Afro-Asian summer monsoon precipitation (AfroASMP) is the life blood of billions of people living in many developing countries covering West Africa and Asia. Its complex variabilities are always accompanied by natural disasters like floods, landslides and droughts. Reliable AfroASMP prediction several months in advance is valuable for not only decision-makers but also regional socioeconomic sustainability. To address the current predicament of the AfroASMP seasonal prediction, this study provides an effective machine-learning model (Y-model). Y-model uses the monsoon related big climate data for searching the potential predictors, encompassing atmospheric internal factors and external forcings. Only the predictors associated with significant anomalies in summer horizonal winds at 850 hPa over the monsoon domain are retained. These selected predictors are then reorganized into a large ensemble based upon different thresholds of four fundamental principles. These principles include the focused sample sizes, the relationships between predictors and predictand, the independence among predictors, and the extremities of predictors in the forecast year. Real-time predictions can be generated based on the ensemble mean of skillful members during an independent hindcast period. Y-model skillfully predicts four monsoon precipitation indices of AfroASMP during 2011–2022 at lead 4–12 months, correlation skills range from 0.58 to 0.90 and root mean square error skills are reduced by 11–53% compared to CFS v2 model at lead 1 month. This study offers an effective method for preprocessing predictors in seasonal climate prediction.

关键字
亚非季风降水,季节预测,人工智能,大成员集合方法,物理信息诊断
报告人
黄艳艳
副教授 南京信息工程大学

稿件作者
黄艳艳 南京信息工程大学
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