Extreme value statistics and arcsine laws for heterogeneous diffusion processes
Abstract
Heterogeneous diffusion with spatially changing diffusion coefficient arises in many experimental systems like protein dynamics in the cell cytoplasm, mobility of cajal bodies and confined hard-sphere fluids. Here, we showcase a simple model of heterogeneous diffusion where the diffusion coefficient D(x) varies in power-law way, i.e. D(x) |x|-α with the exponent α >-1. This model is known to exhibit anomalous scaling of the mean squared displacement (MSD) of the form t22+α and weak ergodicity breaking in the sense that ensemble averaged and time averaged MSDs do not converge. In this paper, we look at the extreme value statistics of this model and derive, for all α, the exact probability distributions of the maximum spatial displacement M(t) and arg-maximum tm(t) (i.e. the time at which this maximum is reached) till duration t. In the second part of our paper, we analyze the statistical properties of the residence time tr(t) and the last-passage time t(t) and compute their distributions exactly for all values of α. Our study unravels that the heterogeneous version (α ≠ 0) displays many rich and contrasting features compared to that of the standard Brownian motion (BM). For example, while for BM (α =0), the distributions of tm(t),~tr(t) and t(t) are all identical (\'a la "arcsine laws" due to L\'evy), they turn out to be significantly different for non-zero α. Another interesting property of tr(t) is the existence of a critical α (which we denote by α c=-0.3182) such that the distribution exhibits a local maximum at tr = t/2 for α < α c
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