Rough analysis and stochastic partial differential equations

<p>Rough analysis involves the study of systems governed by (partial) differential equations driven by irregular (’rough’) signals. This thesis explores advancements in pathwise Itô formula with arbitrary rough signal, singulars stochastic partial differential equations (SPDEs) and its applica...

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Main Author: Jin, R
Other Authors: Gubinelli, M
Format: Thesis
Language:English
Published: 2024
Subjects:
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author Jin, R
author2 Gubinelli, M
author_facet Gubinelli, M
Jin, R
author_sort Jin, R
collection OXFORD
description <p>Rough analysis involves the study of systems governed by (partial) differential equations driven by irregular (’rough’) signals. This thesis explores advancements in pathwise Itô formula with arbitrary rough signal, singulars stochastic partial differential equations (SPDEs) and its applications.</p> <br> <p>In the first part of the research, with Prof. Rama Cont,we extend the Itô calculus to paths with finite <em>p</em>-variation, where <em>p</em> is any positive real number. This generalization builds upon previous work that handled integer values of <em>p</em>, introducing a fractional Itô calculus in a purely pathwise setting. The new framework includes the local Caputo fractional derivative and provides a comprehensive Itô formula applicable to a broader class of paths.</p> <br> <p>The second part of the research delves into singular SPDEs, focusing on applications in superprocess and fluid dynamics. In collaboration with Prof. Nicolas Perkowski, we investigate the compact support property of rough super Brownian motion and extend the model to include branching random walks with infinite variance off-spring distributions. Furthermore, we address fractional stochastic Landau-Lifshitz Navier-Stokes equations, demonstrating existence and uniqueness of energy solutions, and exploring the large-scale behavior of the systems in the super critical cases.</p>
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spelling oxford-uuid:28fe62b1-d150-47b6-b04b-543f279cf6322024-08-08T14:17:25ZRough analysis and stochastic partial differential equationsThesishttp://purl.org/coar/resource_type/c_db06uuid:28fe62b1-d150-47b6-b04b-543f279cf632MathematicsEnglishHyrax Deposit2024Jin, RGubinelli, MCont, RCont, RPerkowski, NRosati, T<p>Rough analysis involves the study of systems governed by (partial) differential equations driven by irregular (’rough’) signals. This thesis explores advancements in pathwise Itô formula with arbitrary rough signal, singulars stochastic partial differential equations (SPDEs) and its applications.</p> <br> <p>In the first part of the research, with Prof. Rama Cont,we extend the Itô calculus to paths with finite <em>p</em>-variation, where <em>p</em> is any positive real number. This generalization builds upon previous work that handled integer values of <em>p</em>, introducing a fractional Itô calculus in a purely pathwise setting. The new framework includes the local Caputo fractional derivative and provides a comprehensive Itô formula applicable to a broader class of paths.</p> <br> <p>The second part of the research delves into singular SPDEs, focusing on applications in superprocess and fluid dynamics. In collaboration with Prof. Nicolas Perkowski, we investigate the compact support property of rough super Brownian motion and extend the model to include branching random walks with infinite variance off-spring distributions. Furthermore, we address fractional stochastic Landau-Lifshitz Navier-Stokes equations, demonstrating existence and uniqueness of energy solutions, and exploring the large-scale behavior of the systems in the super critical cases.</p>
spellingShingle Mathematics
Jin, R
Rough analysis and stochastic partial differential equations
title Rough analysis and stochastic partial differential equations
title_full Rough analysis and stochastic partial differential equations
title_fullStr Rough analysis and stochastic partial differential equations
title_full_unstemmed Rough analysis and stochastic partial differential equations
title_short Rough analysis and stochastic partial differential equations
title_sort rough analysis and stochastic partial differential equations
topic Mathematics
work_keys_str_mv AT jinr roughanalysisandstochasticpartialdifferentialequations