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Continuous time random walk model with asymptotical probability density of waiting times via inverse Mittag-Leffler function

机译:通过逆Mittag-Leffler函数具有等待时间的渐近概率密度的连续时间随机游动模型

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The mean squared displacement (MSD) of the traditional ultraslow diffusion is a logarithmic function of time. Recently, the continuous time random walk model is employed to characterize this ultraslow diffusion dynamics by connecting the heavy-tailed logarithmic function and its variation as the asymptotical waiting time density. In this study we investigate the limiting waiting time density of a general ultraslow diffusion model via the inverse Mittag-Leffler function, whose special case includes the traditional logarithmic ultraslow diffusion model. The MSD of the general ultraslow diffusion model is analytically derived as an inverse Mittag-Leffler function, and is observed to increase even more slowly than that of the logarithmic function model. The occurrence of very long waiting time in the case of the inverse Mittag-Leffler function has the largest probability compared with the power law model and the logarithmic function model. The Monte Carlo simulations of one dimensional sample path of a single particle are also performed. The results show that the inverse Mittag-Leffler waiting time density is effective in depicting the general ultraslow random motion. (C) 2017 Elsevier B.V. All rights reserved.
机译:传统超慢扩散的均方位移(MSD)是时间的对数函数。最近,连续时间随机游走模型被用来通过连接重尾对数函数及其变化作为无症状等待时间密度来表征这种超慢扩散动力学。在这项研究中,我们通过反Mittag-Leffler函数研究一般超慢扩散模型的极限等待时间密度,该函数的特例包括传统的对数超慢扩散模型。普通超慢扩散模型的MSD解析为Mittag-Leffler逆函数,并且观察到其增长速度甚至比对数函数模型慢。与幂定律模型和对数函数模型相比,Mittag-Leffler逆函数的等待时间非常长。还执行了单个粒子的一维样本路径的蒙特卡洛模拟。结果表明,逆Mittag-Leffler等待时间密度可有效地描述一般的超慢随机运动。 (C)2017 Elsevier B.V.保留所有权利。

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