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Different time scales in dynamic systems with multiple outcomes.

Golan BelAnton ZilmanAnatoly B Kolomeisky
Published in: The Journal of chemical physics (2021)
Stochastic biochemical and transport processes have various final outcomes, and they can be viewed as dynamic systems with multiple exits. Many current theoretical studies, however, typically consider only a single time scale for each specific outcome, effectively corresponding to a single-exit process and assuming the independence of each exit process. However, the presence of other exits influences the statistical properties and dynamics measured at any specific exit. Here, we present theoretical arguments to explicitly show the existence of different time scales, such as mean exit times and inverse exit fluxes, for dynamic processes with multiple exits. This implies that the statistics of any specific exit dynamics cannot be considered without taking into account the presence of other exits. Several illustrative examples are described in detail using analytical calculations, mean-field estimates, and kinetic Monte Carlo computer simulations. The underlying microscopic mechanisms for the existence of different time scales are discussed. The results are relevant for understanding the mechanisms of various biological, chemical, and industrial processes, including transport through channels and pores.
Keyphrases
  • monte carlo
  • molecular dynamics
  • heavy metals
  • molecular dynamics simulations
  • machine learning
  • insulin resistance
  • skeletal muscle
  • weight loss
  • mass spectrometry
  • case control
  • glycemic control