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Exponentially weighted resolvent estimates for complex Ornstein-Uhlenbeck systems (1510.00823v1)

Published 3 Oct 2015 in math.AP

Abstract: In this paper we study differential operators of the form \begin{align*} \left\mathcal{L}_\infty v \right = A\triangle v(x) + \left\langle Sx,\nabla v(x) \right\rangle - Bv(x), \,x \in \mathbb{R}d, \,d \geqslant 2, \end{align*} for matrices $A,B\in\mathbb{C}{N,N}$, where the eigenvalues of $A$ have positive real parts. The sum $A\triangle v(x) + \left\langle Sx, \nabla v(x) \right\rangle$ is known as the Ornstein-Uhlenbeck operator with an unbounded drift term defined by a skew-symmetric matrix $S\in\mathbb{R}{d,d}$. Differential operators such as $\mathcal{L}{\infty}$ arise as linearizations at rotating waves in time-dependent reaction diffusion systems. The results of this paper serve as foundation for proving exponential decay of such waves. Under the assumption that $A$ and $B$ can be diagonalized simultaneously we construct a heat kernel matrix $H(x,\xi,t)$ of $\mathcal{L}{\infty}$ that solves the evolution equation $v_t=\mathcal{L}{\infty}v$. In the following we study the Ornstein-Uhlenbeck semigroup \begin{align*} \left T(t)v\right = \int{\mathbb{R}d} H(x,\xi,t) v(\xi) d\xi,\,x \in \mathbb{R}d,\, t>0, \end{align*} in exponentially weighted function spaces. This is used to derive resolvent estimates for $\mathcal{L}{\infty}$ in exponentially weighted $Lp$-spaces $Lp{\theta} (\mathbb{R}d,\mathbb{C}N)$, $1\leqslant p<\infty$, as well as in exponentially weighted $C_{\mathrm{b}}$-spaces $C_{\mathrm{b},\theta}(\mathbb{R}d,\mathbb{C}N)$.

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