Value of Information and other Decision Analytic Techniques for Optimization of Seismic and Drilling Mark Cronshaw SPEE Denver January 13, 2010 Gustavson.

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Presentation transcript:

Value of Information and other Decision Analytic Techniques for Optimization of Seismic and Drilling Mark Cronshaw SPEE Denver January 13, 2010 Gustavson Associates

Introduction Optimal drilling and seismic choices depend on Probability of success (presence of hydrocarbon in commercial quantity) Value of the prospect if it is successful Cost of drilling Cost of seismic Accuracy of seismic

Key Ideas Decision trees promote intelligent discussion of alternatives and optimal choices Can assess the value of information before it is gathered and analyzed Potential cost saving: avoid unnecessary data gathering Potential time saving: avoid unnecessary data gathering Information has value only if it might change a decision

Example -Base case assumptions Probability of structure = 10% (with commercial hydrocarbon) Cost of seismic = $2 million Dry hole cost = $10 million Completion cost = $2 million Value of prospect if successful = $60 million (excluding well cost)

Possible outcomes Drill dry hole without seismic Cost = $10 million Drill successful well without seismic Net value = $60 (success) - $10 (dry hole cost) - $2 (completion cost) = $48 million Drill successful well after doing seismic Net value = $60 (success) - $10 (dry hole cost) - $2 (completion cost) - $2 (seismic cost) = $46 million Drill dry hole after doing seismic Cost = $10 (dry hole) + $2 (seismic) = $12 million Abandon prospect after doing seismic Cost = $2 million

Sequence of decision models Drill without seismic Perfect information about structure Provides an upper bound on the value of seismic Imperfect seismic information Accounts for false positives and false negatives Compare drilling with and without seismic Uncertainty about value of success

Summary – Without seismic Base case: Better to not drill High success value: Better to drill High probability of success: Better to drill Value of perfect information = $4.8 million = Maximum willingness to pay for seismic If seismic will cost more than this, then Do not do it Do not become involved with the prospect

Summary - With seismic (1) Base case: Prospect is not attractive It is not worth doing seismic! Medium success value Prospect is attractive If seismic indicates promise , then drill If seismic does not look promising ,then do not drill Promising seismic increases the probability of success Discouraging seismic reduces the probability of success High success value Prospect is very attractive Better to drill without doing seismic!

Summary - With seismic (2) Sensitivity to probability of structure: Qualitatively similar to success value Medium probability of structure Prospect is attractive If seismic indicates promise , then drill If seismic does not look promising ,then do not drill Promising seismic increases the probability of success Discouraging seismic reduces the probability of success High probability of structure Prospect is very attractive Better to drill without doing seismic!

Extensions Can incorporate additional uncertainty Success value Dry hole cost Completion cost Seismic cost Can explicitly model success case cash flows

Conclusions Optimal decision-making about drilling and seismic depends on costs, benefits and uncertainties It is not always optimal to do seismic Decision-making is simple to model Relies on subjective opinions about values & probabilities It is easy to do sensitivity analysis Decision analysis Is easy to do Reveals the optimal choice Promotes intelligent discussion of alternatives Is very useful at early stages of a project, with lots of uncertainty

Backup Slide – Flipping the Tree .08 .1 .02 .27 .9 .63 .23 Present .77 Absent Structure .35 Promising .03 .97 .65 Discouraging Seismic Result .08 .27 .02 .63