Exponential moments for numerical approximations of stochastic partial differential equations
Arnulf Jentzen, Primo\v{z} Pu\v{s}nik

TL;DR
This paper introduces a new class of tamed exponential Euler schemes for SPDEs, establishing exponential moment bounds crucial for analyzing convergence in complex infinite-dimensional stochastic systems.
Contribution
It proposes novel tamed exponential Euler schemes for SPDEs and proves their exponential integrability, a key step for convergence analysis in infinite-dimensional stochastic models.
Findings
Established exponential moment bounds for stochastic Burgers equations.
Proved exponential integrability for stochastic Kuramoto-Sivashinsky equations.
Demonstrated bounds for two-dimensional stochastic Navier-Stokes equations.
Abstract
Stochastic partial differential equations (SPDEs) have become a crucial ingredient in a number of models from economics and the natural sciences. Many SPDEs that appear in such applications include non-globally monotone nonlinearities. Solutions of SPDEs with non-globally monotone nonlinearities are in nearly all cases not known explicitly. Such SPDEs can thus only be solved approximatively and it is an important research problem to construct and analyze discrete numerical approximation schemes which converge with positive strong convergence rates to the solutions of such infinite dimensional SPDEs. In the case of finite dimensional stochastic ordinary differential equations (SODEs) with non-globally monotone nonlinearities it has recently been revealed that exponential integrability properties of the discrete numerical approximation scheme are a key instrument to establish positive…
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