Faculty of Pure and Applied Mathematics, Hugo Steinhaus Center, Wroclaw University of Science and Technology, Wyspianskiego 27, 50-370 Wroclaw, Poland.
School of Mechanical Engineering, Tel Aviv University, Tel Aviv 6997801, Israel.
Chaos. 2022 Sep;32(9):093114. doi: 10.1063/5.0101913.
Fractional Brownian motion, a Gaussian non-Markovian self-similar process with stationary long-correlated increments, has been identified to give rise to the anomalous diffusion behavior in a great variety of physical systems. The correlation and diffusion properties of this random motion are fully characterized by its index of self-similarity or the Hurst exponent. However, recent single-particle tracking experiments in biological cells revealed highly complicated anomalous diffusion phenomena that cannot be attributed to a class of self-similar random processes. Inspired by these observations, we here study the process that preserves the properties of the fractional Brownian motion at a single trajectory level; however, the Hurst index randomly changes from trajectory to trajectory. We provide a general mathematical framework for analytical, numerical, and statistical analysis of the fractional Brownian motion with the random Hurst exponent. The explicit formulas for probability density function, mean-squared displacement, and autocovariance function of the increments are presented for three generic distributions of the Hurst exponent, namely, two-point, uniform, and beta distributions. The important features of the process studied here are accelerating diffusion and persistence transition, which we demonstrate analytically and numerically.
分形布朗运动是一种具有平稳长相关增量的高斯非马尔可夫自相似过程,它被认为是导致各种物理系统中反常扩散行为的原因。这种随机运动的相关性和扩散特性可以通过其自相似指数或赫斯特指数来充分描述。然而,最近在生物细胞中的单个粒子跟踪实验揭示了高度复杂的反常扩散现象,这些现象不能归因于一类自相似随机过程。受这些观察结果的启发,我们研究了在单个轨迹水平上保持分形布朗运动特性的过程;然而,赫斯特指数从轨迹到轨迹随机变化。我们为具有随机赫斯特指数的分形布朗运动提供了一个通用的数学框架,用于分析、数值和统计分析。对于赫斯特指数的三种通用分布,即两点分布、均匀分布和贝塔分布,给出了增量的概率密度函数、均方根位移和自协方差函数的显式公式。我们通过分析和数值模拟演示了这里研究的过程的加速扩散和持久过渡等重要特征。