Contents Online
Communications in Mathematical Sciences
Volume 15 (2017)
Number 7
Discrete-in-time random particle blob method for the Keller–Segel equation and convergence analysis
Pages: 1821 – 1842
DOI: https://dx.doi.org/10.4310/CMS.2017.v15.n7.a2
Authors
Abstract
We establish an error estimate of a discrete-in-time random particle blob method for the Keller–Segel (KS) equation in $\mathbb{R}^d (d \geq 2)$. With a blob size $\epsilon=N^{- \frac{1}{d(d+1)}} \log(N)$, we prove the convergence rate between the solution to the KS equation and the empirical measure of the random particle method under $L^2$ norm in probability, where $N$ is the number of the particles.
Keywords
coupling method, concentration inequality, splitting scheme, kernel density estimation, Newtonian aggregation, chemotaxis, Brownian motion, interacting particle system
2010 Mathematics Subject Classification
35K55, 35Q92, 60H35, 65M12, 65M15, 65M75
Hui Huang is partially supported by the Alan Mekler Postdoctoral Fellowship in the Department of Mathematics at Simon Fraser University.
Jian-Guo Liu is partially supported by KI-Net NSF RNMS (Grant No. 1107444) and NSF DMS (Grant No. 1514826).
Received 3 April 2016
Accepted 15 April 2017
Published 16 October 2017