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Model-Inspired Predictors for Model Output Statistics (MOS)

机译:用于模型输出统计(MOS)的模型启发式预测器

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This article addresses the problem of the choice of the predictors for the multiple linear regression in model output statistics. Rather than devising a selection procedure directly aimed at the minimization of the final scores, it is examined whether taking the model equations as a guidance may render the process more rational. To this end a notion of constant fractional errors is introduced. Experimental evidence is provided that they are approximately present in the model and that their impact is sufficiently linear to be corrected by a linear regression. Of particular interest are the forcing terms in the coupling of the physics parameterization to the dynamics of the model. Because such parameterizations are estimates of subgrid processes, they are expected to represent degrees of freedom that are independent of the resolved-scale model variables. To illustrate the value of this approach, it is shown that the temporal accumulation of sensible and latent heat fluxes and net solar and thermal radiation utilized as predictors add a statistically significant improvement to the 2-m temperature scores.
机译:本文解决了模型输出统计中用于多元线性回归的预测变量的选择问题。与其设计一种直接针对最终分数最小化的选择程序,不如以模型方程式为指导是否使过程更合理。为此,引入了恒定分数误差的概念。提供了实验证据,它们近似存在于模型中,并且其影响足够线性,可以通过线性回归进行校正。特别有趣的是将物理参数化与模型动力学耦合的强迫项。由于此类参数化是对子网格过程的估计,因此它们有望代表独立于解析尺度模型变量的自由度。为了说明此方法的价值,已表明,用作预测变量的显热和潜热通量的时间累积以及净太阳辐射和热辐射会在统计上显着改善2-m温度得分。

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