平稳过程中的事件间时间统计:风速时间序列的非线性ARMA建模

IF 0.3 Q4 PHYSICS, MULTIDISCIPLINARY
C. Cammarota
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引用次数: 0

摘要

平交道口事件间时间的随机序列是一种统计工具,可用于研究复杂现象的时间序列。使用应用于高斯ARMA过程的非线性变换对观测序列的典型特征(如偏斜分布和长距离相关性)进行建模。我们研究了ARMA过程中水平交叉事件的事件间时间的分布,该分布是与水平相对应的概率的函数。对于高斯ARMA过程,我们建立了该指标的表示,证明了它的对称性,并证明了它对于非线性单调变换的应用是不变的。使用模拟序列,我们提供了证据,证明如果将非单调变换应用于ARMA过程,对称性就会消失。我们在从三个不同数据库获得的风速时间序列中估计了这一指标。数据分析提供了该指标是非对称的证据,表明只有ARMA过程的高度非线性变换才能用于建模。我们讨论了事件间时间在预测任务中的可能使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inter-event Times Statistic in Stationary Processes: Nonlinear ARMA Modeling of Wind Speed Time Series
The random sequence of inter-event times of a level-crossing is a statistical tool that can be used to investigate time series from complex phenomena. Typical features of observed series as the skewed distribution and long range correlations are modeled using non linear transformations applied to Gaussian ARMA processes. We investigate the distribution of the inter-event times of the level-crossing events in ARMA processes in function of the probability corresponding to the level. For Gaussian ARMA processes we establish a representation of this indicator, prove its symmetry and that it is invariant with respect to the application of a non linear monotonic transformation. Using simulated series we provide evidence that the symmetry disappears if a non monotonic transformation is applied to an ARMA process. We estimate this indicator in wind speed time series obtained from three different databases. Data analysis provides evidence that the indicator is non symmetric, suggesting that only highly non linear transformations of ARMA processes can be used in modeling. We discuss the possible use of the inter-event times in the prediction task.
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来源期刊
Nonlinear Phenomena in Complex Systems
Nonlinear Phenomena in Complex Systems PHYSICS, MULTIDISCIPLINARY-
CiteScore
0.90
自引率
25.00%
发文量
32
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