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Decision Maturation Using Ensemble Based Robust Optimization for Field Development Planning

机译:使用基于基于Field Development Planning的集合鲁棒优化的决策成熟

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A key aspect in the process of field development planning is to determine the optimal order m which production and injection wells will be drilled For large fields typically many wells (50-100) are drilled which implies a significantly high number of possible combinations in which wells may be drilled To evaluate all the possible combinations is computationally infeasible especially since in reality for field planning it is imperative to account for the range of uncertainties present to make a mature decision The total number of simulations increases significantly when such uncertainties are accounted for Decision maturation is the process of a user making an informed decision, in this case selecting an optimal drilling order, whilst including all the uncertainties known to the user in an automated optimization assisted framework To achieve this goal we use the recently developed StoSAG formulation which is based on the increasingly popular Ensemble Optimization (EnOpt) method In recent papers StoSAG was shown to be theoretically robust and numerically outperform EnOpt on a variety of synthetic test cases with continuous control variables In this work we investigate the applicability of StoSAG to find the optimal drilling order of a real field case with approximately 700,000 active grid cells The optimal drilling order control which is inherently a discrete/integer problem has been parameterized into continuous drilling priorities which highlight the flexibility of the method to different control types In addition to the optimal drilling order we optimize the type of well (injector/producer) to be drilled as well as a tune delay variable to find the optimal time at which a production well could possibly be converted into an injection well We show that compared to a reference case we can achieve up to 18% mcrease in an economic objective function A variety of experiments are performed which highlight the significant practical value achieved with our proposed decision maturation framework to find the optimal well types and drilling order over the life-cycle of the reservoir for a real field case under geological uncertainties
机译:现场开发规划过程中的一个关键方面是确定为大领域钻出生产和注入孔的最佳阶数,通常钻出许多井(50-100),这意味着井中的显着大量可能的组合可以钻取以评估所有可能的组合是计算地不可行的,特别是因为实际上,由于现场规划,令人遗憾的是考虑存在成熟决定的不确定性范围,当这些不确定因素被算用于决策成熟时,模拟总数显着增加是用户制作明智的决定的过程,在这种情况下选择最佳钻井顺序,而在自动优化辅助框架中包括用户中已知的所有不确定性,以实现这一目标,我们使用最近开发的STOSAG配方基于再生中越来越受欢迎的集合优化(Enopt)方法T纸STOSAG显示在本工作中的连续控制变量的各种合成测试用例的各种合成测试用例中的理论上稳健和数量优势,我们研究了STOSAG的适用性,找到了大约700,000个有源网格细胞的真实现场情况的最佳钻井顺序固有的最佳钻井顺序控制是在连续钻孔优先级的连续钻孔优先级的最佳钻探顺序控制除了最佳钻井顺序之外,我们将对不同的控制类型突出了不同控制类型的灵活性,我们优化了井(注射器/制片人)的类型被钻取以及调谐延迟变量,找到生产井可能被转化为注射井的最佳时间我们表明,与参考案例相比,我们可以在经济目标函数中获得高达18%的MCR,各种各样进行实验,突出了我们提出的决定所取得的显着实用价值在地质不确定性下,在水库的生命周期中找到最佳井类型和钻井顺序的成熟框架

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