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Time-dependent probability density function for partial resetting dynamics

Statistical Mechanics 2023-05-25 v2 Mathematical Physics math.MP Biological Physics

Abstract

Stochastic resetting is a rapidly developing topic in the field of stochastic processes and their applications. It denotes the occasional reset of a diffusing particle to its starting point and effects, inter alia, optimal first-passage times to a target. Recently the concept of partial resetting, in which the particle is reset to a given fraction of the current value of the process, has been established and the associated search behaviour analysed. Here we go one step further and we develop a general technique to determine the time-dependent probability density function (PDF) for Markov processes with partial resetting. We obtain an exact representation of the PDF in the case of general symmetric L\'evy flights with stable index 0<α20<\alpha\le2. For Cauchy and Brownian motions (i.e., α=1,2\alpha=1,2), this PDF can be expressed in terms of elementary functions in position space. We also determine the stationary PDF. Our numerical analysis of the PDF demonstrates intricate crossover behaviours as function of time.

Keywords

Cite

@article{arxiv.2305.13722,
  title  = {Time-dependent probability density function for partial resetting dynamics},
  author = {C. Di Bello and A. V. Chechkin and A. K. Hartmann and Z. Palmowski and R. Metzler},
  journal= {arXiv preprint arXiv:2305.13722},
  year   = {2023}
}

Comments

21 pages, 4 figures, IOPLaTeX