Yaglom limit for critical neutron transport
Simon C. Harris, Emma Horton, Andreas E. Kyprianou, Minmin Wang

TL;DR
This paper establishes a Yaglom limit theorem for a critical branching Markov process with non-local branching, showing convergence to an exponential distribution conditioned on survival, with applications to neutron transport.
Contribution
It introduces a novel approach based on scaled asymptotics of martingale moments for non-local branching processes, extending Yaglom limit results to neutron transport models.
Findings
Survival probability decays inversely with time.
Conditioned process converges to an exponential distribution.
Results apply to non-local branching in neutron transport.
Abstract
We consider the classical Yaglom limit theorem for a branching Markov process , with non-local branching mechanism in the setting that the mean semigroup is critical, i.e. its leading eigenvalue is zero. In particular, we show that there exists a constant such that \[ {\rm Law}\left(\frac{\langle f, X_t\rangle}{t} \bigg| \langle 1, X_t\rangle > 0 \right) \to {\mathbf e}_{c(f)}, \qquad t \to \infty, \] where is an exponential random variable with rate and the convergence is in distribution. As part of the proof, we also show that the probability of survival decays inversely proportionally to time. Although Yaglom limit theorems have recently been handled in the setting of branching Brownian motion in a bounded domain and superprocesses, \cite{Ellen, Yanxia}, these results do not allow for non-local branching, which complicates the…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Markov Chains and Monte Carlo Methods · Probability and Risk Models
