In mathematics, a Brownian sheet or multiparametric Brownian motion is a multiparametric generalization of the Brownian motion to a Gaussian random field. This means we generalize the "time" parameter of a Brownian motion from to .
The exact dimension of the space of the new time parameter varies from authors. We follow John B. Walsh and define the -Brownian sheet, while some authors define the Brownian sheet specifically only for , what we call the -Brownian sheet.[1]
This definition is due to Nikolai Chentsov, there exist a slightly different version due to Paul Lévy.
Consider the space of continuous functions of the form satisfying This space becomes a separableBanach space when equipped with the norm
Notice this space includes densely the space of zero at infinity equipped with the uniform norm, since one can bound the uniform norm with the norm of from above through the Fourier inversion theorem.
that is continuously embbeded as a dense subspace in and thus also in and that there exist a probability measure on such that the triple is an abstract Wiener space.
^Walsh, John B. (1986). An introduction to stochastic partial differential equations. Springer Berlin Heidelberg. p. 269. ISBN978-3-540-39781-6.
^Davar Khoshnevisan und Yimin Xiao (2004), Images of the Brownian Sheet, arXiv:math/0409491
^Ossiander, Mina; Pyke, Ronald (1985). "Lévy's Brownian motion as a set-indexed process and a related central limit theorem". Stochastic Processes and their Applications. 21 (1): 133–145. doi:10.1016/0304-4149(85)90382-5.
^Stroock, Daniel (2011), Probability theory: an analytic view (2nd ed.), Cambridge, p. 349-352