Estimation of a non stationary cov. model¶
Let  be a multivariate
normal process of dimension 
 where 
.
 is supposed to be a second order process and we note
its covariance function.
We denote 
 the vertices of
the common mesh 
 and
 the associated values
of the field 
. We suppose that we have 
 fields.
We recall that the covariance function 
 writes:
(1)¶
where the mean function  is defined by:
(2)¶
First, we estimate the covariance function  on the
vertices of the mesh 
. At each vertex
, we use the empirical mean estimator applied
to the 
 fields to estimate:
- at the vertex - : 
(3)¶
- at the vertices - : 
(4)¶
Then, we build a covariance function defined on
 which is a piecewise constant function defined
on 
 by:
where  is such that 
 is the vertex of
 the nearest to 
 and 
 the
nearest to 
.
Examples:
 OpenTURNS
      OpenTURNS