Convergence of Markov chain approximations to stochastic reaction-diffusion equations

Citation
Michael A. Kouritzin, et Long Hongwei, Convergence of Markov chain approximations to stochastic reaction-diffusion equations, Annals of applied probability , 12(3), 2002, pp. 1039-1070
ISSN journal
10505164
Volume
12
Issue
3
Year of publication
2002
Pages
1039 - 1070
Database
ACNP
SICI code
Abstract
In the context of simulating the transport of a chemical or bacterial contaminant through a moving sheet of water, we extend a well-established method of approximating reaction-diffusion equations with Markov chains by allowing convection, certain Poisson measure driving sources and a larger class of reaction functions. Our alterations also feature dramatically slower Markov chain state change rates often yielding a ten to one-hundred-fold simulation speed increase over the previous version of the method as evidenced in our computer implementations. On a weighted L2 Hilbert space chosen to symmetrize the elliptic operator, we consider existence of and convergence to pathwise unique mild solutions of our stochastic reaction-diffusion equation. Our main convergence result, a quenched law of large numbers, establishes convergence in probability of our Markov chain approximations for each fixed path of our driving Poisson measure source. As a consequence, we also obtain the annealed law of large numbers establishing convergence in probability of our Markov chains to the solution of the stochastic reaction-diffusion equation while considering the Poisson source as a random medium for the Markov chains.