Optimization of nonconventional wells under uncertainty using statistical proxies

The determination of the optimal type and placement of a nonconventional well in a heterogeneous reservoir represents a challenging optimization problem. This determination is significantly more complicated if uncertainty in the reservoir geology is included in the optimization. In this study, a genetic algorithm is applied to optimize the deployment of nonconventional wells. Geological uncertainty is accounted for by optimizing over multiple reservoir models (realizations) subject to a prescribed risk attitude. To reduce the excessive computational requirements of the base method, a new statistical proxy (which provides fast estimates of the objective function) based on cluster analysis is introduced into the optimization process. This proxy provides an estimate of the cumulative distribution function (CDF) of the scenario performance, which enables the quantification of proxy uncertainty. Knowledge of the proxy-based performance estimate in conjunction with the proxy CDF enables the systematic selection of the most appropriate scenarios for full simulation. Application of the overall method for the optimization of monobore and dual-lateral well placement demonstrates the performance of the hybrid optimization procedure. Specifically, it is shown that by simulating only 10% or 20% of the scenarios (as determined by application of the proxy), optimization results very close to those achieved by simulating all cases are obtained.

[1]  Brian D. Ripley,et al.  Pattern Recognition and Neural Networks , 1996 .

[2]  Louis J. Durlofsky,et al.  Approximate Model for Productivity of Nonconventional Wells in Heterogeneous Reservoirs , 2000 .

[3]  K. Payrazyan,et al.  Principal Component Analysis Applied to 3D Seismic Data for Reservoir Property Estimation , 2001 .

[4]  Angel R. Martinez,et al.  Computational Statistics Handbook with MATLAB , 2001 .

[5]  Roland N. Horne,et al.  Optimization of Well Placement in a Gulf of Mexico Waterflooding Project , 2002 .

[6]  Akhil Datta-Gupta,et al.  A Novel Approach for Reservoir Forecasting Under Uncertainty , 2002 .

[7]  Louis J. Durlofsky,et al.  Optimization of Nonconventional Well Type, Location, and Trajectory , 2003 .

[8]  Hyun Cho Integrated Optimization on a Long Horizontal Well Length , 2003 .

[9]  Louis J. Durlofsky,et al.  Optimization of Advanced Well Type and Performance , 2004 .

[10]  Mary F. Wheeler,et al.  PARALLEL WELL LOCATION OPTIMIZATION USING STOCHASTIC ALGORITHMS ON THE GRID COMPUTATIONAL FRAMEWORK , 2004 .

[11]  Henning Omre,et al.  Improved Production Forecasts and History Matching Using Approximate Fluid-Flow Simulators , 2004 .

[12]  Benoit Couet,et al.  Reservoir Optimization Tool for Risk and Decision Analysis , 2004 .

[13]  Louis J. Durlofsky,et al.  Assessment of Uncertainty in Reservoir Production Forecasts Using Upscaled Flow Models , 2005 .

[14]  Mrinal K. Sen,et al.  On optimization algorithms for the reservoir oil well placement problem , 2006 .