3-D Fluvial Reservoir Characterization Using Multiple-Point Statistics
Dovera, Laura, Ernesto Della Rossa, Marco Pontiggia, Livio Ruvo, Giuseppe Serafini, Eni, San Donato Milanese (Milano), Italy
Multiple-Point statistics, an innovative technology being
developed by
model
integrating all available information and considering
different geological scenarios in order to correctly express the geological
uncertainty. This statistical approach performs the simulation starting from a
Training Image, a conceptual visual
representation
of how heterogeneities could
be distributed in the actual reservoir.
This paper presents a 3D detailed reservoir characterization of
a fluvial reservoir using Multiple-Point statistics. The reservoir consists of prograding fluvial bars separated by shales.
The coarser facies are supposed to overly and
sometimes to erode the finer ones. Because of the overall progradation
pattern, a coarsening-upward vertical facies sequence
may be inferred.
First, by integrating all the information coming from cluster
analysis, seismic and sedimentological
model
, a
stationary Training Image consisting of fluvial bars separated by shales and with a coarsening-upward facies
trend has been built.
Next, using the Training Image built and the conditioning hard
and soft data, a Multiple-Point statistical simulation has been performed.
The results show that the geological conceptual
model
has been
reconstructed correctly and that the Training Image patterns geometries and facies contacts are well reproduced.
To quantify the geological uncertainty, a different Training
Image has been built and a new simulation has been performed. Also in this case
interesting results has been obtained.
A comparison with a traditional object based simulation is also
presented.