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Statistical Downscaling of AGCM60km Precipitation based on Spatial Correlation of AGCM20km Output

机译:基于AGCM20km产量空间相关性的AGCM60km降水统计降尺度

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A statistical downscaling method based on regressing precipitation data is introduced and applied to 60-km resolution Atmospheric General Circulation Model (AGCM60km) output for daily precipitation. The method utilizes a regression domain with a 3×3 60-km grid, and the downscaling target is 3×3 20-km grids in the center of the regression domain. By shifting the regression domain one grid by one grid in 60-km resolution, the same form of regression model, but different regression coefficients for each 20-km grid, can be applied to all the downscaling target areas. Based on application tests for the Asian Monsoon region, the statistical downscaling algorithm shows extremely effective results with a certain pattern of regression error. The monthly based downscaled results from AGCM60km output shows a rather good match to the monthly mean precipitation amount of AGCM20km. The downscaled results also show a plausible mimic to the AGCM20km output in the frequency of daily precipitation amounts; however, the results showed noticeable limitations in simulating low rainfall amounts (e.g., less than 5 mm d–1), especially on land.
机译:介绍了一种基于降水量回归数据的统计降尺度方法,并将其应用于60 km分辨率的大气总环流模型(AGCM60km)每天的降水量输出。该方法利用具有3×3 60 km网格的回归域,而降级目标是位于回归域中心的3×3 20 km网格。通过以60 km的分辨率将回归域一个网格移动一个网格,可以将相同形式的回归模型,但每个20 km网格的回归系数不同,可以应用于所有缩小目标区域。基于对亚洲季风地区的应用测试,统计缩减算法显示出非常有效的结果,并具有一定的回归误差模式。 AGCM60km输出的月度缩减结果显示与AGCM20km的月平均降水量相当匹配。缩减后的结果还表明,在每日降水量的频率上,AGCM20km的输出可能是合理的。但是,结果显示出在模拟低降雨量(例如,小于5 mm d –1 )时存在明显的局限性,尤其是在陆地上。

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