4.2 Article

The most likely transition path for a class of distribution-dependent stochastic systems

Journal

STOCHASTICS AND DYNAMICS
Volume -, Issue -, Pages -

Publisher

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0219493723400087

Keywords

Large deviations; interacting particles; adaptive minimum action method; distribution-dependent stochastic dynamics; the most likely transition path; McKean-Vlasov stochastic systems

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This article investigates the problem of the most likely transition path in distribution-dependent stochastic dynamical systems and computes it using the adaptive minimum action method.
Distribution-dependent stochastic dynamical systems arise widely in engineering and science. We consider a class of such systems which model the limit behaviors of interacting particles moving in a vector field with random fluctuations. We aim to examine the most likely transition path between equilibrium stable states of the vector field. In the small noise regime, the action functional does not involve the solution of the skeleton equation which describes the unperturbed deterministic flow of the vector field shifted by the interaction at zero distance. As a result, we are led to study the most likely transition path for a stochastic differential equation without distribution dependency. This enables the computation of the most likely transition path for these distribution-dependent stochastic dynamical systems by the adaptive minimum action method and we illustrate our approach in two examples.

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