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Non-exponential return time distributions for vorticity extremes explained by fractional Poisson processes

机译:用分数泊松过程解释的极端涡旋的非指数返回时间分布

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Serial correlation of extreme midlatitude cyclones observed at the storm track exits is explained by deviations from a Poisson process. To model these deviations, we apply fractional Poisson processes (FPPs) to extreme midlatitude cyclones, which are defined by the 850 hPa relative vorticity of the ERA interim reanalysis during boreal winter (DJF) and summer (JJA) seasons. Extremes are defined by a 99% quantile threshold in the grid-point time series. In general, FPPs are based on long-term memory and lead to non-exponential return time distributions. The return times are described by a Weibull distribution to approximate the Mittag-Leffler function in the FPPs. The Weibull shape parameter yields a dispersion parameter that agrees with results found for midlatitude cyclones. The memory of the FPP, which is determined by detrended fluctuation analysis, provides an independent estimate for the shape parameter. Thus, the analysis exhibits a concise framework of the deviation from Poisson statistics (by a dispersion parameter), non-exponential return times and memory (correlation) on the basis of a single parameter. The results have potential implications for the predictability of extreme cyclones.
机译:在风暴轨道出口处观测到的极端中纬气旋的序列相关性是通过与泊松过程的偏差来解释的。为了对这些偏差进行建模,我们将分数泊松过程(FPPs)应用于极端中纬度气旋,这是由ERA在冬季(DJF)和夏季(JJA)季节进行的再分析的850 hPa相对涡度定义的。极点由网格点时间序列中99%的分位数阈值定义。通常,FPP基于长期记忆,并导致非指数返回时间分布。返回时间由Weibull分布描述,以近似FPP中的Mittag-Leffler函数。威布尔形状参数产生的色散参数与中纬度气旋的结果一致。 FPP的内存由去趋势波动分析确定,可为形状参数提供独立的估计。因此,该分析展示了基于单个参数的泊松统计偏差(通过分散参数),非指数返回时间和存储(相关)的简洁框架。结果对极端气旋的可预测性具有潜在的影响。

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