The Kardar-Parisi-Zhang (KPZ) equation is a stochastic partial differential
equation which is ill-posed because the nonlinearity is marginally defined with
respect to the roughness of the forcing noise. However, its Cole-Hopf solution,
defined as the logarithm of the solution of the linear stochastic heat equation
(SHE) with a multiplicative noise, is a mathematically well-defined object. In
fact, Hairer [13] has recently proved that the solution of SHE can actually be
derived through the Cole-Hopf transform of the solution of the KPZ equation
with a suitable renormalization under periodic boundary conditions. This
transformation is unfortunately not well adapted to studying the invariant
measures of these Markov processes.
The present paper introduces a different type of regularization for the KPZ
equation on the whole line R or under periodic boundary conditions,
which is appropriate from the viewpoint of studying the invariant measures. The
Cole-Hopf transform applied to this equation leads to an SHE with a smeared
noise having an extra complicated nonlinear term. Under time average and in the
stationary regime, it is shown that this term can be replaced by a simple
linear term, so that the limit equation is the linear SHE with an extra linear
term with coefficient 1/24. The methods are essentially stochastic analytic:
The Wiener-It\^o expansion and a similar method for establishing the
Boltzmann-Gibbs principle are used. As a result, it is shown that the
distribution of a two-sided geometric Brownian motion with a height shift given
by Lebesgue measure is invariant under the evolution determined by the SHE on
R