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journal article

DISCRETISATIONS OF ROUGH STOCHASTIC PDES

Hairer, Martin  
•
Matetski, K.
May 1, 2018
ANNALS OF PROBABILITY

We develop a general framework for spatial discretisations of parabolic stochastic PDEs whose solutions are provided in the framework of the theory of regularity structures and which are functions in time. As an application, we show that the dynamical Phi(4)(3) model on the dyadic grid converges after renormalisation to its continuous counterpart. This result in particular implies that, as expected, the Phi(4)(3) measure with a sufficiently small coupling constant is invariant for this equation and that the lifetime of its solutions is almost surely infinite for almost every initial condition.

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Type
journal article
DOI
10.1214/17-AOP1212
Web of Science ID

WOS:000430923200010

Author(s)
Hairer, Martin  
Matetski, K.
Date Issued

2018-05-01

Publisher

INST MATHEMATICAL STATISTICS

Published in
ANNALS OF PROBABILITY
Volume

46

Issue

3

Start page

1651

End page

1709

Subjects

CLASSICAL STATISTICAL-MECHANICS

•

QUANTUM FIELD-THEORY

•

DIFFERENTIAL-EQUATIONS

•

FINITE-VOLUME

•

QUANTIZATION

•

CONVERGENCE

•

MODEL

•

Stochastic PDEs

•

discretisations

•

regularity structures

•

stochastic quantization equation

•

invariant measure

•

Science & Technology

•

Physical Sciences

Editorial or Peer reviewed

REVIEWED

Written at

OTHER

EPFL units
PROPDE  
FunderFunding(s)Grant NumberGrant URL

ERC

Leverhulme Foundation

615897

Available on Infoscience
September 17, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/241188
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