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Superstatistical approach of the anomalous exponent for scaled Brownian motion (2206.07820v2)

Published 15 Jun 2022 in cond-mat.stat-mech

Abstract: Anomalous diffusion phenomenon is an intriguing process that tracer diffusion presents in numerous complex systems. Current experimental and theoretical investigations have reported the emergence of random diffusivity scenarios accompanied by the heterogeneity of the $\alpha$-anomalous diffusion exponents. In this framework, we investigate a heterogeneous ensemble of tracers governed by scaled Brownian motion (sBm). The heterogeneous features are considered on anomalous diffusion exponent and diffusivity. To analyse such systems, we introduce the truncated-Gaussian and truncated chi-squared distributions for anomalous exponents in the superstatistical framework. We also discuss the role of different temporal scales in sBm for our model. Furthermore, we investigate the effects of coupling between diffusivity and anomalous exponent on superstatistics of sBm. The investigation provides a thorough analysis of simulation and analytical results.

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