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Controlling factors of errors in the predicted annual and monthly evaporation from the Budyko framework

机译:Budyko框架预测的年蒸发量和月蒸发量中的错误的控制因素

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The Budyko framework (BF) has been used to predict evaporation (E) at annual or monthly time scales, but few studies have analyzed the errors in the predicted E in a systematic manner. This study develops an error-decomposition framework which expresses the errors in the BF-predicted annual and monthly E as a function of (1) the anomalies (i.e. deviations from the long-term mean) of precipitation (P), potential evapotranspiration (PET), runoff(R) and catchment water storage change (Delta S), (2) the (long-term) mean water storage change, and (3) the mean difference between the predicted and actual E. The error variance of BF-predicted E can be decomposed into the variance and covariance terms of P, PET, R and Delta S. The relative contribution of each of these controlling factors to the total error variance of E are evaluated at 14 major river basins in China with the mean annual aridity index ranging between 0.55 and 11.78. It is found that climatic factors (P and PET) and catchment responses (R and Delta S) play different roles in the errors of predicted E among diverse climates of 14 basins. Under the humid (energy-limited) condition, the variance and covariance terms of P, PET, R and Delta S are comparably important in the contribution to the prediction error variance of E. In contrast, under the arid (water-limited) condition the error variance of predicted E is dominated by the magnitude of Delta S anomalies. Results of this study suggest that the incorporation of Delta S into BF can improve the predictability of annual and monthly E more under the arid climates than humid climates.
机译:Budyko框架(BF)已用于预测年度或每月时间尺度的蒸发量(E),但很少有研究以系统的方式分析预测的E中的误差。这项研究建立了一个误差分解框架,该框架将BF预测的年和月度E中的误差表示为(1)降水(P),潜在蒸散(PET)的异常(即与长期平均值的偏差)的函数。 ),径流(R)和流域蓄水量变化(Delta S),(2)(长期)平均蓄水量变化,以及(3)预测E与实际E之间的平均差.BF-的误差方差可以将预测的E分解为P,PET,R和Delta S的方差和协方差项。在中国的14个主要流域,评估了这些控制因素对E的总误差方差的相对贡献。干旱指数介于0.55和11.78之间。研究发现,在14个盆地的不同气候中,气候因子(P和PET)和集水区响应(R和Delta S)在预测E的误差中起着不同的作用。在潮湿(能量受限)条件下,P,PET,R和Delta S的方差和协方差项对E的预测误差方差的贡献同等重要。相反,在干旱(水分受限)条件下预测E的误差方差由Delta S异常的大小决定。这项研究的结果表明,在干旱气候下,将Delta S掺入高炉中比在潮湿气候下,可以提高年和月E的可预测性。

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