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Optimization of nonconventional wells under uncertainty using statistical proxies

机译:使用统计代理优化不确定性下的非常规井

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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.
机译:确定非常规井在非均质油藏中的最佳类型和位置代表了一个充满挑战的优化问题。如果在优化过程中包括储层地质的不确定性,则该确定将变得更加复杂。在这项研究中,遗传算法被应用于优化非常规井的部署。地质不确定性是通过根据规定的风险态度对多个油藏模型(实现)进行优化来解决的。为了减少基本方法的过多计算需求,将基于聚类分析的新统计代理(可提供目标函数的快速估计)引入优化过程。该代理提供对方案性能的累积分布函数(CDF)的估计,从而可以量化代理不确定性。与代理CDF结合使用基于代理的性能估计的知识,可以系统地选择最合适的方案进行全面仿真。将整体方法用于单孔和双侧井眼布置优化的应用证明了混合优化程序的性能。具体而言,表明通过仅模拟10%或20%的方案(由代理的应用程序确定),可以获得与通过模拟所有情况所获得的优化结果非常接近的优化结果。

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