Mathematical Biosciences and Engineering (Jan 2023)

Constrained Langevin approximation for the Togashi-Kaneko model of autocatalytic reactions

  • Wai-Tong (Louis) Fan,
  • Yifan (Johnny) Yang,
  • Chaojie Yuan

DOI
https://doi.org/10.3934/mbe.2023201
Journal volume & issue
Vol. 20, no. 3
pp. 4322 – 4352

Abstract

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The Togashi Kaneko model (TK model) is a simple stochastic reaction network that displays discreteness-induced transitions between meta-stable patterns. Here we study a constrained Langevin approximation (CLA) of this model. This CLA, derived under the classical scaling, is an obliquely reflected diffusion process on the positive orthant and hence respects the constraint that chemical concentrations are never negative. We show that the CLA is a Feller process, is positive Harris recurrent and converges exponentially fast to the unique stationary distribution. We also characterize the stationary distribution and show that it has finite moments. In addition, we simulate both the TK model and its CLA in various dimensions. For example, we describe how the TK model switches between meta-stable patterns in dimension six. Our simulations suggest that, when the volume of the vessel in which all of the reactions that take place is large, the CLA is a good approximation of the TK model in terms of both the stationary distribution and the transition times between patterns.

Keywords