arXiv Analytics

Sign in

arXiv:2009.09658 [math.PR]AbstractReferencesReviewsResources

Limit theorems for time-dependent averages of nonlinear stochastic heat equations

Kunwoo Kim, Jaeyun Yi

Published 2020-09-21Version 1

We study limit theorems for time-dependent average of the form $X_t:=\frac{1}{2L(t)}\int_{-L(t)}^{L(t)} u(t, x) \, dx$, as $t\to \infty$, where $L(t)=e^{\lambda t}$ and $u(t, x)$ is the solution to a stochastic heat equation on $\mathbb{R}_+\times \mathbb{R}$ driven by space-time white noise with $u_0(x)=1$ for all $x\in \mathbb{R}$. We show that for $X_t$ (i) the weak law of large numbers holds when $\lambda>\lambda_1$, (ii) the strong law of large numbers holds when $\lambda>\lambda_2$, (iii) the central limit theorem holds when $\lambda>\lambda_3$, (iv) the quantitative central limit theorem holds when $\lambda>\lambda_4$, where $\lambda_i$'s are positive constants depending on the moment Lyapunov exponents of $u(t, x)$.

Related articles: Most relevant | Search more
arXiv:2305.18853 [math.PR] (Published 2023-05-30)
Polarity of points for systems of nonlinear stochastic heat equations in the critical dimension
arXiv:1110.4079 [math.PR] (Published 2011-10-18)
Initial measures for the stochastic heat equation
arXiv:math/0604067 [math.PR] (Published 2006-04-04, updated 2007-07-26)
When the law of large numbers fails for increasing subsequences of random permutations