Quasilinear SPDEs via rough paths
Felix Otto, Hendrik Weber

TL;DR
This paper develops a framework for analyzing quasilinear stochastic partial differential equations driven by rough signals, establishing existence, uniqueness, and stability results using rough path techniques and Schauder estimates.
Contribution
It introduces a novel approach extending controlled rough path theory to quasilinear PDEs with rough forcing, enabling rigorous analysis of such equations.
Findings
Established existence and uniqueness of solutions for small data.
Derived $C^eta$-estimates for solutions under rough forcing.
Extended rough path methods to nonlinear PDE terms involving the solution.
Abstract
We are interested in (uniformly) parabolic PDEs with a nonlinear dependance of the leading-order coefficients, driven by a rough right hand side. For simplicity, we consider a space-time periodic setting with a single spatial variable: \begin{equation*} \partial_2u -P( a(u)\partial_1^2u - \sigma(u)f ) =0 \end{equation*} where is the projection on mean-zero functions, and is a distribution and only controlled in the low regularity norm of for on the parabolic H\"older scale. The example we have in mind is a random forcing and our assumptions allow, for example, for an which is white in the time variable and only mildly coloured in the space variable ; any spatial covariance operator with is admissible. On the deterministic side we obtain a -estimate…
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