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Brief Communication: Earthquake sequencing: analysis of time series constructed from the Markov chain model

机译:简述:地震序列:从马尔可夫链模型构建的时间序列分析

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Directed graph representation of a Markov chain model to study global earthquake sequencing leads to a time series of state-to-state transition probabilities that includes the spatio-temporally linked recurrent events in the record-breaking sense. A state refers to a configuration comprised of zones with either the occurrence or non-occurrence of an earthquake in each zone in a pre-determined time interval. Since the time series is derived from non-linear and non-stationary earthquake sequencing, we use known analysis methods to glean new information. We apply decomposition procedures such as ensemble empirical mode decomposition (EEMD) to study the state-to-state fluctuations in each of the intrinsic mode functions. We subject the intrinsic mode functions, derived from the time series using the EEMD, to a detailed analysis to draw information content of the time series. Also, we investigate the influence of random noise on the data-driven state-to-state transition probabilities. We consider a second aspect of earthquake sequencing that is closely tied to its time-correlative behaviour. Here, we extend the Fano factor and Allan factor analysis to the time series of state-to-state transition frequencies of a Markov chain. Our results support not only the usefulness of the intrinsic mode functions in understanding the time series but also the presence of power-law behaviour exemplified by the Fano factor and the Allan factor.
机译:用于研究全球地震序列的马尔可夫链模型的有向图表示会导致状态到状态转换概率的时间序列,其中包括破纪录意义上的时空关联的复发事件。状态是指由在预定时间间隔内每个区域中地震发生或未发生的区域组成的配置。由于时间序列是从非线性和非平稳地震序列中得出的,因此我们使用已知的分析方法来收集新信息。我们应用诸如集成经验模式分解(EEMD)之类的分解程序来研究每个固有模式函数中的状态间波动。我们对使用EEMD从时间序列派生的固有模式函数进行了详细分析,以绘制时间序列的信息内容。此外,我们研究了随机噪声对数据驱动状态到状态转换概率的影响。我们考虑地震序列的第二个方面,它与时间相关的行为密切相关。在这里,我们将Fano因子和Allan因子分析扩展到马尔可夫链的状态到状态跃迁频率的时间序列。我们的结果不仅支持内在模式函数在理解时间序列方面的有用性,而且还支持以法诺因子和艾伦因子为例的幂律行为。

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