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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Estimates of past and future ozone trends from multimodel simulations using a flexible smoothing spline methodology
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Estimates of past and future ozone trends from multimodel simulations using a flexible smoothing spline methodology

机译:使用灵活的平滑样条方法从多模型模拟中估算过去和将来的臭氧趋势

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摘要

A novel additive model analysis of multimodel trends is presented. The approach is motivated by, and particularly suited to, the analysis of multimodel time series of varying length. This Time series Additive Model (TSAM) approach consists of three distinct steps: estimation of individual model trends, baseline adjustment of the trends, and the weighted combination of the individual model trends to produce a multimodel trend (MMT) estimate. The baseline adjustment step is not an essential ingredient of the TSAM but is included to reduce model spread. The association of the TSAM approach with a probabilistic model allows trend estimates to be used to make formal inference (e.g., calculation of confidence and prediction intervals). The method is applied to the analysis of multimodel ozone time series of varying lengths as were considered for the 2006 Scientific Assessment of Ozone Depletion. The advantages of the TSAM approach are demonstrated to include the production of smooth trend estimates out to the ends of the time series, the ability to model explicitly interannual variability about the trend estimate, and the ability to make rigorous probability statements. Calculated ozone return dates are consistent with previous qualitative estimates, but the more quantitative analysis provided by the MMT is expected to allow such data sets to be better utilized by the community and policy makers.
机译:提出了一种新颖的多模型趋势的加性模型分析。该方法受(特别适合于)可变长度的多模型时间序列分析的推动。此时间序列可加模型(TSAM)方法包括三个不同的步骤:估计单个模型趋势,趋势的基线调整以及单个模型趋势的加权组合以产生多模型趋势(MMT)估计。基准线调整步骤不是TSAM的必要组成部分,但包括在内以减少模型扩散。 TSAM方法与概率模型的关联允许将趋势估计值用于进行形式上的推断(例如,计算置信度和预测间隔)。该方法用于分析不同长度的多模式臭氧时间序列,正如2006年《臭氧消耗科学评估》所考虑的那样。事实证明,TSAM方法的优点包括产生平滑的趋势估计,直到时间序列的末尾;能够对趋势估计的年际可变性进行明确建模的能力,以及做出严格的概率陈述的能力。计算得出的臭氧返还日期与先前的定性估计值一致,但是MMT提供的更加定量的分析有望使社区和决策者更好地利用这些数据集。

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