论文标题

贝叶斯的大气循环制度分配方法

A Bayesian Approach to Atmospheric Circulation Regime Assignment

论文作者

Falkena, Swinda K. J., de Wiljes, Jana, Weisheimer, Antje, Shepherd, Theodore G.

论文摘要

研究大气环流方案及其动态时的标准方法是使用硬度分配,在这种情况下,每个大气状态都被分配给其最接近距离的机制。但是,这可能并不总是最合适的方法,因为政权分配可能会受到噪声距离距离距离的小偏差的影响。为了减轻这种情况,我们使用贝叶斯定理开发了一个顺序的概率制度分配,该概率分配可以应用于先前定义的制度,并在新数据可用时实时实施。贝叶斯定理告诉我们,鉴于数据可以通过将气候可能性与先前信息相结合来确定数据的可能性。时间$ t $的制度概率可用于通知时间$ t+1 $的先前概率,然后将其用于依次更新政权概率。我们将这种方法应用于重新分析数据和一个季节性后广播合奏,结合了对政权之间的过渡概率的了解。此外,利用集合中存在的信号来更好地告知先前的概率,可以识别更明显的年际变化。使用分类和回归方法评估了冬季北大西洋循环方案的年际变化范围内的信号,其信号在非常强的厄尔尼诺时代发现。

The standard approach when studying atmospheric circulation regimes and their dynamics is to use a hard regime assignment, where each atmospheric state is assigned to the regime it is closest to in distance. However, this may not always be the most appropriate approach as the regime assignment may be affected by small deviations in the distance to the regimes due to noise. To mitigate this we develop a sequential probabilistic regime assignment using Bayes Theorem, which can be applied to previously defined regimes and implemented in real time as new data become available. Bayes Theorem tells us that the probability of being in a regime given the data can be determined by combining climatological likelihood with prior information. The regime probabilities at time $t$ can be used to inform the prior probabilities at time $t+1$, which are then used to sequentially update the regime probabilities. We apply this approach to both reanalysis data and a seasonal hindcast ensemble incorporating knowledge of the transition probabilities between regimes. Furthermore, making use of the signal present within the ensemble to better inform the prior probabilities allows for identifying more pronounced interannual variability. The signal within the interannual variability of wintertime North Atlantic circulation regimes is assessed using both a categorical and regression approach, with the strongest signals found during very strong El Niño years.

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