Conical stochastic maximal $L^p$-regularity for $1 \leq p \lt \infty$
Pascal Auscher (LM-Orsay), Jan van Neerven (TWA), Pierre Portal (MSI)

TL;DR
This paper establishes conical stochastic maximal $L^p$-regularity estimates for second order elliptic operators on $ ^n$, extending known results to all $1 \,\leq\, p < \infty$, with applications to nonlinear SPDEs.
Contribution
It introduces a novel conical maximal $L^p$-regularity estimate for stochastic convolutions applicable for all $p$ in $[1,\infty)$, surpassing previous limitations to $p\geq 2$.
Findings
Proves conical stochastic maximal $L^p$-regularity for all $p$ in $[1,\infty)$.
Uses off-diagonal bounds and extrapolation techniques in the proof.
Applies results to nonlinear SPDEs with rough initial data.
Abstract
Let be a second order divergence form elliptic operator on with bounded measurable real-valued coefficients and let be a cylindrical Brownian motion in a Hilbert space . Our main result implies that the stochastic convolution process satisfies, for all , a conical maximal -regularity estimate Here, and are the parabolic tent spaces of real-valued and -valued functions, respectively. This contrasts with Krylov's maximal -regularity estimate which is known to hold only for , even…
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Taxonomy
TopicsAdvanced Harmonic Analysis Research · Numerical methods in inverse problems · Nonlinear Partial Differential Equations
