SPE Journal
Volume 18,
Number 1,
February 2013,
pp. 146-158
Summary
The ensemble Kalman filter (EnKF) is one of the most promising tools for
assisted history matching of reservoir models, but challenges remain for
applications on complex geological structures (facies fields). In this paper,
we propose a method that uses distance functions to estimate such fields. The
definition of a distance function is "the shortest distance between a given
position in the field and the boundary separating facies types." The idea
behind this approach is that distances have smooth properties, and the
distribution of the ensemble in a given gridblock is without multimodality and
in better agreement with the EnKF Gaussianity assumptions. The distances are
then updated by use of the EnKF and converted to petrophysical parameters when
the reservoir simulator is run to the next assimilation time. The approach is
flexible and simple and possesses several advantages compared with other
existing methods: The input items for the method are facies realizations that
can be generated with any preferred geostatistical tool; we ensure that the
updated fields always are facies realizations; we ensure the conditioning of
the correct facies types at the well location, both initially and during the
assimilation steps; and the method does not involve complex modifications of
the standard EnKF equations.
The approach presented here is based on an extension of previous work
performed by the authors. The novelty of the extension is summarized by the
following: Any number of specified facies types can be estimated; one distance
function is used for each facies type--at each gridblock, the facies type that
corresponds to the distance function with maximal value is selected; there are
no restrictions on the structure of the facies field to be estimated; and the
methodology is extended to update variations in the petrophysical parameters
within each facies type. The first of these extensions is considered the most
important because the flexibility regarding the number of facies types is
necessary for every real industrial application.
We demonstrate the methodology on a field with shallow-marine-environment
characteristics. The conclusions from the example are that the history match is
improved, uncertainty is reduced, and the method always returns facies
realizations with geological authenticity.
© 2012. Society of Petroleum Engineers
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History
- Original manuscript received:
4 February 2011
- Meeting paper published:
23 May 2011
- Revised manuscript received:
14 June 2012
- Manuscript approved:
2 October 2012
- Published online:
28 December 2012
- Version of record:
27 February 2013