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具有高度持久相关性的瞬态反常扩散解析模型。

Analytic model for transient anomalous diffusion with highly persistent correlations.

作者信息

Carnaffan Sean, Kawai Reiichiro

机构信息

School of Mathematics and Statistics, University of Sydney, NSW 2006, Australia.

出版信息

Phys Rev E. 2019 Jun;99(6-1):062120. doi: 10.1103/PhysRevE.99.062120.

Abstract

In recent decades, many stochastic processes have been proposed as models for real world time series data with anomalous spreading, highly persistent correlations, and transient distributional characteristics. We introduce the higher order fractional tempered stable motion as the stochastic integral of the tempered stable motion with respect to a generalized higher order moving average kernel, which provides an analytic model for stochastic processes possessing these characteristics. This stochastic process provides a mathematical model for anomalous diffusion with a transient distribution resembling higher order fractional stable motion on short timescales and higher order fractional Brownian motion in the long run. The specifics of the crossover dynamics from the Lévy stable anomalous diffusion to the Gaussian anomalous diffusion are controlled by explicit parameter values that correspond to physical attributes of the process. It is well suited to modeling anomalous diffusion of any "type" (sub-, super-, regular, or hyperdiffusion) under appropriate parametrizations due to its power-law scaling of variance with respect to time. It is also a useful model for position-velocity-acceleration triples due to its convenient path differentiability and integrability properties. To highlight the potential physical relevance of this model for real world data, we outline its key statistical properties including its covariance structure, memory, and second order self-similarity. We also give an easy to implement elementary method for sample path generation which may be used as a basis for simulation and Monte Carlo studies.

摘要

近几十年来,人们提出了许多随机过程作为具有异常扩散、高度持久相关性和瞬态分布特征的现实世界时间序列数据的模型。我们引入高阶分数 tempered 稳定运动,它是 tempered 稳定运动关于广义高阶移动平均核的随机积分,为具有这些特征的随机过程提供了一个解析模型。这个随机过程为异常扩散提供了一个数学模型,其瞬态分布在短时间尺度上类似于高阶分数稳定运动,从长远来看类似于高阶分数布朗运动。从 Lévy 稳定异常扩散到高斯异常扩散的交叉动力学细节由与过程物理属性相对应的明确参数值控制。由于其方差相对于时间的幂律缩放,在适当的参数化下,它非常适合对任何“类型”(亚扩散、超扩散、正常扩散或超扩散)的异常扩散进行建模。由于其方便的路径可微性和可积性属性,它也是位置 - 速度 - 加速度三元组的有用模型。为了突出该模型对现实世界数据的潜在物理相关性,我们概述了其关键统计特性,包括其协方差结构、记忆和二阶自相似性。我们还给出了一种易于实现的样本路径生成基本方法,可作为模拟和蒙特卡罗研究的基础。

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