Extreme metrics from large ensembles: investigating the effects of ensemble size on their estimates

C. Tebaldi, K. Dorheim, M. Wehner, R. Leung
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引用次数: 8

Abstract

Abstract. We consider the problem of estimating the ensemble sizes required to characterize the forced component and the internal variability of a number of extreme metrics. While we exploit existing large ensembles, our perspective is that of a modeling center wanting to estimate a priori such sizes on the basis of an existing small ensemble (we assume the availability of only five members here). We therefore ask if such a small-size ensemble is sufficient to estimate accurately the population variance (i.e., the ensemble internal variability) and then apply a well-established formula that quantifies the expected error in the estimation of the population mean (i.e., the forced component) as a function of the sample size n, here taken to mean the ensemble size. We find that indeed we can anticipate errors in the estimation of the forced component for temperature and precipitation extremes as a function of n by plugging into the formula an estimate of the population variance derived on the basis of five members. For a range of spatial and temporal scales, forcing levels (we use simulations under Representative Concentration Pathway 8.5) and two models considered here as our proof of concept, it appears that an ensemble size of 20 or 25 members can provide estimates of the forced component for the extreme metrics considered that remain within small absolute and percentage errors. Additional members beyond 20 or 25 add only marginal precision to the estimate, and this remains true when statistical inference through extreme value analysis is used. We then ask about the ensemble size required to estimate the ensemble variance (a measure of internal variability) along the length of the simulation and – importantly – about the ensemble size required to detect significant changes in such variance along the simulation with increased external forcings. Using the F test, we find that estimates on the basis of only 5 or 10 ensemble members accurately represent the full ensemble variance even when the analysis is conducted at the grid-point scale. The detection of changes in the variance when comparing different times along the simulation, especially for the precipitation-based metrics, requires larger sizes but not larger than 15 or 20 members. While we recognize that there will always exist applications and metric definitions requiring larger statistical power and therefore ensemble sizes, our results suggest that for a wide range of analysis targets and scales an effective estimate of both forced component and internal variability can be achieved with sizes below 30 members. This invites consideration of the possibility of exploring additional sources of uncertainty, such as physics parameter settings, when designing ensemble simulations.
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来自大型集合的极端度量:调查集合大小对其估计的影响
摘要我们考虑的问题估计所需的集合大小,以表征强迫成分和内部变异性的一些极端指标。当我们利用现有的大型集合时,我们的观点是一个建模中心想要在现有的小型集合的基础上先验地估计这样的大小(我们假设这里只有五个成员的可用性)。因此,我们要问这样一个小规模的集合是否足以准确地估计总体方差(即,集合内部变异性),然后应用一个完善的公式,将总体均值估计中的预期误差(即,强制分量)量化为样本量n的函数,这里指的是集合大小。我们发现,通过将基于5个成员的总体方差估计代入公式,我们确实可以预测温度和降水极值的强迫分量作为n的函数的估计误差。对于一系列空间和时间尺度、强迫水平(我们使用代表性浓度路径8.5下的模拟)和这里考虑的两个模型作为我们的概念证明,似乎20或25个成员的集合规模可以为所考虑的极端指标提供强迫分量的估计,这些指标仍然在很小的绝对误差和百分比误差范围内。超过20或25的其他成员只增加了估计的边际精度,当使用极值分析的统计推断时仍然如此。然后,我们询问沿模拟长度估计集合方差(内部可变性的度量)所需的集合大小,以及-重要的是-在外部强迫增加的模拟过程中检测这种方差的显着变化所需的集合大小。使用F检验,我们发现即使在网格点尺度上进行分析,基于仅5或10个集合成员的估计也能准确地表示完整的集合方差。在沿着模拟比较不同时间时检测方差的变化,特别是对于基于降水的度量,需要更大的尺寸,但不超过15或20个成员。虽然我们认识到总有一些应用和度量定义需要更大的统计能力和因此的集合大小,但我们的结果表明,对于广泛的分析目标和尺度,可以在小于30个成员的规模下实现对强制分量和内部变异性的有效估计。这就要求在设计集成模拟时考虑探索其他不确定性来源的可能性,例如物理参数设置。
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