SPE Journal
Volume 17,
Number 1,
March 2012,
pp. 112-121
Summary
Subsurface geology is highly uncertain, and it is necessary to account for
this uncertainty when optimizing the location of new wells. This can be
accomplished by evaluating reservoir performance for a particular well
configuration over multiple realizations of the reservoir and then optimizing
based, for example, on expected net present value (NPV) or expected cumulative
oil production. A direct procedure for such an optimization would entail the
simulation of all realizations at each iteration of the optimization algorithm.
This could be prohibitively expensive when it is necessary to use a large
number of realizations to capture geological uncertainty. In this work, we
apply a procedure that is new within the context of reservoir
management--retrospective optimization (RO)--to address this problem. RO solves
a sequence of optimization subproblems that contain increasing numbers of
realizations. We introduce the use of k -means clustering for selecting
these realizations. Three example cases are presented that demonstrate the
performance of the RO procedure. These examples use particle swarm optimization
(PSO) and simplex linear interpolation (SLI)-based line search as the core
optimizers (the RO framework can be used with any underlying optimization
algorithm, either stochastic or deterministic). In the first example, we
achieve essentially the same optimum using RO as we do using a direct
optimization approach, but RO requires an order of magnitude fewer simulations.
The results demonstrate the advantages of cluster-based sampling over random
sampling for the examples considered. Taken in total, our findings indicate
that RO using cluster sampling represents a promising approach for optimizing
well locations under geological uncertainty.
© 2011. Society of Petroleum Engineers
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History
- Original manuscript received:
15 December 2010
- Meeting paper published:
21 February 2011
- Revised manuscript received:
12 May 2011
- Manuscript approved:
15 July 2011
- Published online:
5 December 2011
- Version of record:
13 March 2012