Strong convergence of some Magnus-type schemes for the finite element discretization of non-autonomous parabolic SPDEs driven by additive fractional Brownian motion and Poisson random measure
Aurelien Junior Noupelah, Jean Daniel Mukam, Antoine Tambue
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引用次数: 0
Abstract
The aim of this work is to provide the strong convergence results of
numerical approximations of a general second order non-autonomous semilinear
stochastic partial differential equation (SPDE) driven simultaneously by an
additive fractional Brownian motion (fBm) with Hurst parameter H \in (1/2,1)
and a Poisson random measure, more realistic in modelling real world phenomena. Approximations in space are performed by the standard finite element method
and in time by the stochastic Magnus-type integrator or the linear
semi-implicit Euler method. We investigate the mean-square errors estimates of
our fully discrete schemes and the results show how the convergence orders
depend on the regularity of the initial data and the driven processes. To the
best of our knowledge, these two schemes are the first numerical methods to
approximate the non-autonomous semilinear stochastic partial differential
equation (SPDE) driven simultaneously by an additive fractional Brownian motion
with Hurst parameter H and a Poisson random measure.