SPE Journal
Volume 17,
Number 3,
September 2012,
pp. 849-864
Summary
In this paper, we develop an efficient algorithm for production optimization
under linear and nonlinear constraints and an uncertain reservoir description.
The linear and nonlinear constraints are incorporated into the objective
function using the augmented Lagrangian method, and the bound constraints are
enforced using a gradient-projection trust-region method. Robust long-term
optimization maximizes the expected life-cycle net present value (NPV) over a
set of geological models, which represent the uncertainty in reservoir
description. Because the life-cycle optimal controls may be in conflict with
the operator's objective of maximizing short-time production, the method is
adapted to maximize the expectation of short-term NPV over the next 1 or 2
years subject to the constraint that the life-cycle NPV will not be
substantially decreased. The technique is applied to synthetic reservoir
problems to demonstrate its efficiency and robustness. Experiments show that
the field cannot always achieve the optimal NPV using the optimal well controls
obtained on the basis of a single but uncertain reservoir model, whereas the
application of robust optimization reduces this risk significantly.
Experimental results also show that robust sequential optimization on each
short-term period is not able to achieve an expected life-cycle NPV as high as
that obtained with robust long-term optimization.
© 2012. Society of Petroleum Engineers
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History
- Original manuscript received:
14 December 2010
- Meeting paper published:
22 February 2011
- Revised manuscript received:
20 April 2011
- Manuscript approved:
23 June 2011
- Published online:
7 June 2012
- Version of record:
12 September 2012