Accumulation time of stochastic processes with resetting
Paul C Bressloff

TL;DR
This paper introduces the accumulation time as a new, straightforward way to analyze how stochastic processes with resetting approach their nonequilibrium stationary states, extending the concept across various models and conditions.
Contribution
It develops a direct method based on accumulation time to characterize the approach to NESS in stochastic processes with resetting, including various models and delays.
Findings
Derived asymptotic formulas for accumulation time in 1D Brownian motion with resetting
Extended the analysis to higher dimensions and non-Poissonian resetting
Showed that delays like refractory periods do not affect the asymptotic behavior of accumulation time
Abstract
One of the characteristic features of a stochastic process under resetting is that the probability density converges to a nonequilibrium stationary state (NESS). In addition, the approach to the stationary state exhibits a dynamical phase transition, which can be interpreted as a traveling front separating spatial regions for which the probability density has relaxed to the NESS from those where it has not. One can establish the existence of the phase transition by carrying out an asymptotic expansion of the exact solution. In this paper we develop an alternative, direct method for characterizing the approach to the NESS of a stochastic process with resetting that is based on the calculation of the so-called accumulation time. The latter is the analog of the mean first passage time of a search process, in which the survival probability density is replaced by an accumulation fraction…
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