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Use of cloud radar observations for model evaluation: A probabilistic approach - art. no. D03202

机译:使用云雷达观测数据进行模型评估:一种概率方法-艺术。没有。 D03202

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1] The use of narrow-beam, ground-based active remote sensors ( such as cloud radars and lidars) for long-term observations provides valuable new measurements of the vertical structure of cloud fields. These observations might be quite valuable as tests for numerical simulations, but the vastly different spatial and temporal scales of the observations and simulation must first be reconciled. Typically, the observations are averaged over time and those averages are claimed to be representative of a given model spatial scale, though the equivalence of temporal and spatial averages is known to be quite tenuous. This paper explores an alternative method of model evaluation based on the interpretation of model cloud predictions as probabilistic forecasts at the observation point. This approach requires no assumptions about statistical stationarity and allows the use of an existing, well-developed suite of analytic tools. Time-averaging and probabilistic evaluation techniques are contrasted, and their performance is explored using a set of "perfect'' forecasts and observations extracted from a long cloud system model simulation of continental convection. This idealized example demonstrates that simple time averaging always obscures forecast skill regardless of model domain size. Reliability diagrams are more robust, though scalar scores derived from the diagrams are sensitive to the forecast probability distribution. Forecasts by cloud system and weather forecasting models then provide examples as to how probabilistic techniques might be used in a variety of contexts. [References: 28
机译:1]长期观测使用窄光束地面有源遥感器(例如云雷达和激光雷达)可为云场的垂直结构提供有价值的新测量方法。这些观测值可能作为数值模拟的测试非常有价值,但是必须首先调和观测和模拟的巨大时空尺度。通常,将观察值随时间取平均值,并声称这些平均值代表给定的模型空间比例,尽管时间和空间平均值的等效度相当小。本文探索了一种基于模型云预测的解释的替代方法,该模型将云预测作为观察点的概率预测。这种方法无需假设统计平稳性,并允许使用现有的,完善的分析工具套件。对时间平均和概率评估技术进行了对比,并使用从对流的长云系统模型模拟中提取的一组“完美”的预测和观察结果来探索其性能,该理想化示例表明简单的时间平均总是会掩盖预测技巧不管模型域的大小如何,可靠性图都更加健壮,尽管从图中得出的标量得分对预测概率分布很敏感,然后,由云系统和天气预报模型进行的预测提供了有关如何在各种情况下使用概率技术的示例。 [参考文献:28

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