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Feynman-Kac representation for the parabolic Anderson model driven by fractional noise (1706.09050v1)

Published 27 Jun 2017 in math.PR and math.AP

Abstract: We consider the parabolic Anderson model driven by fractional noise: $$ \frac{\partial}{\partial t}u(t,x)= \kappa \boldsymbol{\Delta} u(t,x)+ u(t,x)\frac{\partial}{\partial t}W(t,x) \qquad x\in\mathbb{Z}d\;,\; t\geq 0\,, $$ where $\kappa>0$ is a diffusion constant, $\boldsymbol{\Delta}$ is the discrete Laplacian defined by $\boldsymbol{\Delta} f(x)= \frac{1}{2d}\sum_{|y-x|=1}\bigl(f(y)-f(x)\bigr)$, and ${W(t,x)\;;\;t\geq0}{x \in \mathbb{Z}d}$ is a family of independent fractional Brownian motions with Hurst parameter $H\in(0,1)$, indexed by $\mathbb{Z}d$. We make sense of this equation via a Stratonovich integration obtained by approximating the fractional Brownian motions with a family of Gaussian processes possessing absolutely continuous sample paths. We prove that the Feynman-Kac representation \begin{equation} u(t,x)=\mathbb{E}x\Bigl[u_o(X(t))\exp \int_0t W\bigl(\mathrm{d}s, X(t-s)\bigr)\Bigr]\,, \end{equation} is a mild solution to this problem. Here $u_o(y)$ is the initial value at site $y\in\mathbb{Z}d$, ${X(t)\;;\;t\geq0}$ is a simple random walk with jump rate $\kappa$, started at $x \in \mathbb{Z}d$ and independent of the family ${W(t,x)\;;\;t\geq0}{x\in\mathbb{Z}d}$ and $\mathbb{E}x$ is expectation with respect to this random walk. We give a unified argument that works for any Hurst parameter $H\in (0,1)$.

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