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Ensemble-based well trajectory and drilling schedule optimization-application to the Olympus benchmark model

机译:基于合奏的井轨迹和钻井计划优化 - 应用于奥林巴斯基准模型

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摘要

The general field development optimization problem is complex due to the potentially large number of controls of mixed type and discontinuities in the objective function related to varying numbers and types of wells being placed in a discretized grid. This may make the problem challenging or even unsuitable for certain types of optimization methods that rely on, e.g., the availability of (adjoint) gradients. It is not yet clear which alternative approaches will be most useful. Here we investigate the application of stochastic gradient-based optimization techniques to field development optimization. Since their initial application to large-scale well rate and pressure control problems, such techniques have been shown to produce useful results of practical value also for other types of reservoir optimization problems such vertical well placement, well drilling scheduling, and water-alternating-gas strategy optimization. Here we introduce an efficient parameterization for well trajectory optimization and discuss a simple way to handle the number of wells that is placed. The full field development problem is split into subproblems that are addressed sequentially. The sequential workflow is applied to the Olympus benchmark model which represents a complex green field development optimization challenge. Initial experiments show that the proposed approach based on stochastic gradient methods is able to find much improved development strategies, as defined by the number and trajectories of wells, a platform location and a drilling sequence, at relatively low computational cost. We additionally identify a number of possible improvements to the applied workflow that are expected to make it applicable to other field cases of intermediate complexity.
机译:由于与不同数量和类型的井中被放置在离散电网中的物镜函数中的混合类型和不连续性的潜在大量控制,普通现场开发优化问题是复杂的。这可能会对某些类型的优化方法挑战或甚至不合适地发挥问题,例如,例如,例如(伴随)梯度的可用性。尚不清楚哪种替代方法最有用。在这里,我们研究了随机梯度基优化技术在现场开发优化中的应用。由于它们初始应用于大规模的井速率和压力控制问题,因此已经显示出这种技术的实用价值的有用结果也用于其他类型的储层优化问题,这种垂直井放置,钻井调度和水交交易战略优化。在这里,我们介绍了一个有效的参数化,以获得井轨迹优化,并讨论处理放置的井数的简单方法。完整的现场开发问题被分成了顺序地解决的子问题。顺序工作流应用于奥林巴斯基准模型,该模型代表复杂的绿地开发优化挑战。初始实验表明,基于随机梯度方法的提议方法能够以相对低的计算成本,井,平台位置和钻井序列的数量和轨迹所定义的显着的发展策略。我们还确定了许多可能改进所应用的工作流程,这些流程预计将适用于中间复杂性的其他现场情况。

著录项

  • 来源
    《Computational Geosciences》 |2020年第6期|2095-2109|共15页
  • 作者单位

    TNO - Applied Geosciences Princetonlaan 6 PO Box 80015 Utrecht The Netherlands;

    TNO - Applied Geosciences Princetonlaan 6 PO Box 80015 Utrecht The Netherlands;

    TNO - Applied Geosciences Princetonlaan 6 PO Box 80015 Utrecht The Netherlands Delft University of Technology Stevinweg 1 2628CN Delft The Netherlands;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Ensemble optimization; Field development; Well trajectory;

    机译:合奏优化;现场发展;井展轨道;
  • 入库时间 2022-08-18 21:08:09

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