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How good is an ensemble at capturing truth? Using bounding boxes for forecast evaluation

机译:合奏在捕捉真理方面有多好?使用边界框进行预测评估

摘要

Ensemble prediction systems aim to account for uncertainties of initial conditions and model error. Ensemble forecasting is sometimes viewed as a method of obtaining (objective) probabilistic forecasts. How is one to judge the quality of an ensemble at forecasting a system? The probability that the bounding box of an ensemble captures some target (such as 'truth' in a perfect model scenario) provides new statistics for quantifying the quality of an ensemble prediction system: information that can provide insight all the way from ensemble system design to user decision support. These simple measures clarify basic questions, such as the minimum size of an ensemble. To illustrate their utility, bounding boxes are used in the imperfect model context to quantify the differences between ensemble forecasting with a stochastic model ensemble prediction system and a deterministic model prediction system. Examining forecasts via their bounding box statistics provides an illustration of how adding stochastic terms to an imperfect model may improve forecasts even when the underlying system is deterministic. Copyright © 2007 Royal Meteorological Society.
机译:集合预测系统旨在解决初始条件和模型误差的不确定性。集成预测有时被视为获得(客观)概率预测的一种方法。在预测系统时如何判断整体质量?合奏的边界框捕获某些目标的概率(例如,理想模型场景中的“真相”)为量化合奏预测系统的质量提供了新的统计数据:可以提供从合奏系统设计一直到深入了解的信息用户决策支持。这些简单的措施阐明了基本问题,例如合奏的最小大小。为了说明它们的效用,在不完善的模型上下文中使用边界框来量化具有随机模型整体预测系统和确定性模型预测系统的整体预测之间的差异。通过边界框统计信息检查预测可以说明即使在底层系统是确定性的情况下,向不完善的模型添加随机项也可以改善预测的情况。版权所有©2007皇家气象学会。

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