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 Ni\~no years.
翻译:在研究大气环流制度及其动态时,标准的方法是使用硬性制度分配,将每个大气状态指定给最接近于距离的管理制度,但这可能并不总是最适当的办法,因为由于噪音,制度分配可能因与制度距离的微小偏差而受到影响;为减轻这一影响,我们利用Bayes Theorem, 利用Bayes Theorem, 开发一个连续的概率制度分配办法,该办法可适用于先前界定的制度,并在获得新数据时实时实施。Bayes Theorem告诉我们,如果将气候可能性与先前的信息结合起来,就可以确定在某一制度中存在数据的可能性。 时间的周期概率可能用美元作为时间来告知先前的概率,然后用美元+1美元来按顺序更新制度概率。我们采用这一办法,对数据进行重新分析,并随着了解各制度之间的过渡概率,在实时实施季节性交错组合。此外,利用该概念内的信号,更好地向先前的概率和先前的概率提供信息,从而得以确定在时间上的准确性变化性,在大西洋的冬季期间,使用最强烈的年间周期间测得的信号。</s>