Risk minimization in life-cycle oil production optimization
Andrea Capolei, Lasse Hjuler Christiansen, John Bagterp, J{\o}rgensen

TL;DR
This paper explores risk minimization in oil production optimization by using coherent risk measures like CVaR and introduces an offset-based risk mitigation method that compares strategies to real-world practices.
Contribution
It characterizes proper risk measures for production optimization and proposes a novel offset-based risk mitigation approach that considers real-life control strategies.
Findings
CVaR effectively reduces profit loss at different risk levels.
Optimized strategies outperform reactive control in risk reduction.
Offset-based risk mitigation minimizes worst-case profit deficits.
Abstract
The geology of oil reservoirs is largely unknown. Consequently, the reservoir models used for production optimization are subject to significant uncertainty. To minimize the associated risk, the oil literature has mainly used ensemble-based methods to optimize sample estimated risk measures of net present value (NPV). However, the success in reducing risk critically depends on the choice of risk measure. As a systematic approach to risk mitigation in production optimization, this paper characterizes proper risk measures by the axioms of coherence and aversion. As an example of a proper measure, we consider conditional value-at-risk, , at different risk levels, . The potential of to minimize profit loss is demonstrated by a simulated case study. The case study compares to real-world best practices, represented by…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Mining Techniques and Economics · Risk and Portfolio Optimization
