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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Distribution functions of a spurious trend in a finite length data set with natural variability: Statistical considerations and a numerical experiment with a global circulation model
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Distribution functions of a spurious trend in a finite length data set with natural variability: Statistical considerations and a numerical experiment with a global circulation model

机译:分布函数的一个假的趋势与自然变化有限长度的数据集:统计方面的考虑和一个数值全球环流模型进行实验

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摘要

A linear trend estimated from a finite-length data set with random internal variability has a spurious component which is a difference from the true trend caused by changes in external conditions or parameters. Some moments and distribution functions of the spurious trend depending on the length of data are derived theoretically under general statistical assumptions. When the internal variability has a normal distribution, the spurious trend also has a normal distribution. In general cases of nonnormal distributions, we derive the distribution function of the spurious trend by the Edgeworth expansion. A few low-order moments of the internal variability are necessary to obtain the approximate distribution function from the expansion. Population moments of the internal variability of a simple global circulation model are calculated using a 15,200-year data set generated by a numerical experiment with a purely periodic annual forcing. Dependence of the estimation error of sample moments on the length of data is computed to evaluate an appropriate sample size for each moment. An ensemble experiment with the same model is used to estimate the detectability of a cooling trend in the stratosphere from a finite length data set with internal variability. Hypothesis tests for the statistical significance of the estimated trend are made: Student's t test, bootstrap test, and the more accurate test using the distribution function derived by the Edgeworth expansion. In the regions and seasons in which kurtosis of the internal variability is large the assumption that the spurious trend has a normal distribution is not appropriate, and the significance derived by the t test is different from that by the test using the Edgeworth expansion.
机译:从一个有限长数据线性趋势估计集与随机的内部变化虚假成分的差异真正的趋势由外部的变化引起的条件或参数。分布函数的虚假的趋势根据数据的长度理论上一般统计下假设。正态分布,虚假的趋势也有一个正态分布。非正态的分布,我们推导出分布函数的虚假的趋势埃奇沃思扩张。内部的变化是必要的获得的近似分布函数的扩张。一个简单的全球环流模型的变化计算用15200年的数据集吗由一个纯粹的数值实验定期的年度强迫。估计误差采样时刻的长度计算的数据来评估一个合适的样本大小为每个时刻。使用相同的模型用于实验估计的降温趋势检测能力平流层的有限长度的数据集与内部的变化。估计的统计显著性趋势是:学生的t测试,引导测试,使用分布和更精确的测试埃奇沃思函数派生的扩张。峰度的地区和季节内部变化很大的假设虚假的趋势有一个正态分布不合适,派生的意义t测试不同的测试使用埃奇沃思扩张。

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