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Application of Tree-Structured Regression for Regional Precipitation Prediction Using General Circulation Model Output

机译:基于通用循环模型输出的树状结构回归在区域降水预测中的应用

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摘要

This study presents a tree-structured regression (TSR) method to relate daily precipitation with a variety of free-atmosphere variables. Historical data were used to identify distinct weather patterns associated with differing types of precipitation events. Models were developed using 67% of the data for training and the remaining data for model validation. Seasonal models were built for each of 2 US sites: San Francisco, California, and San Antonio, Texas. The average correlation between observed and simulated daily precipitation data series is 0.75 for the training set and 0.68 for the validation set. Relative humidity was found to be the dominant variable in these TSR models. Output from an NCAR CSM (climate system model) transient simulation of climate change were then used to drive the TSR models in the prediction of precipitation characteristics under climate change. A preliminary screening of the GCM output variables for current climate, however, revealed significant problems for the San Antonio site. Specifically, the CSM missed the annual trends in humidity for the grid cell containing this site. CSM output for the San Francisco site was found to be much more reliable. Therefore, we present future precipitation estimates only for the San Francisco site.
机译:这项研究提出了一种树状结构回归(TSR)方法,将每日降水量与各种自由大气变量联系起来。历史数据用于识别与不同类型降水事件相关的不同天气模式。使用67%的数据用于训练,其余数据用于模型验证来开发模型。为美国两个站点中的每个站点建立了季节性模型:加利福尼亚州旧金山和德克萨斯州圣安东尼奥。训练集的观测值和模拟的每日降水量数据系列之间的平均相关性为0.75,而验证集为0.68。在这些TSR模型中,相对湿度是主要变量。然后,使用NCAR CSM(气候系统模型)对气候变化的瞬态模拟的输出来驱动TSR模型,以预测气候变化下的降水特征。但是,对当前气候的GCM输出变量进行了初步筛选,发现圣安东尼奥工厂存在严重问题。具体来说,CSM错过了包含该站点的网格单元的年度湿度趋势。发现旧金山站点的CSM输出更加可靠。因此,我们仅提供旧金山站点的未来降水量估算值。

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