A Model Predictive Control Method for Autonomous Directional Drilling

Nazlı Demirer, Umut Zalluhoglu, J. Marck, Hossam Gharib, Robert Darbe
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引用次数: 5

Abstract

Directional drilling for hydrocarbon exploration has been challenged to become more cost-effective and consistent with fast-growing drilling operations for both offshore and onshore production areas. Autonomous directional drilling provides a solution to these challenges by providing repeatable drilling decisions for accurate well placement, improved borehole quality, and flexibility to adapt smoothly to new technologies for drilling tools and sensors. This work proposes a model predictive control (MPC)-based approach for trajectory tracking in autonomous drilling. Given a well plan, bottomhole assembly (BHA) configuration, and operational drilling parameters, the optimal control problem is formulated to determine steering commands (i.e., tool face and steering ratio) necessary to achieve drilling objectives while satisfying operational constraints. The proposed control method was recently tested and validated during multiple field trials in various drilling basins on two- and three-dimensional (2D and 3D) well plans for both rotary steerable systems (RSS) and mud motors. Multiple curve sections were drilled successfully with automated steering decisions, generating smooth wellbores and maintaining proximity with the given well plan.
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自主定向钻井模型预测控制方法
油气勘探定向钻井面临的挑战是如何提高成本效益,并与海上和陆上生产区域快速增长的钻井作业保持一致。自主定向钻井为这些挑战提供了解决方案,通过提供可重复的钻井决策,实现精确的井眼定位,提高井眼质量,并灵活地适应钻井工具和传感器的新技术。本文提出了一种基于模型预测控制(MPC)的自主钻井轨迹跟踪方法。给定井平面图、底部钻具组合(BHA)配置和钻井操作参数,制定最优控制问题,以确定在满足作业约束的同时实现钻井目标所需的转向命令(即工具面和转向比)。最近,针对旋转导向系统(RSS)和泥浆马达,在多个钻井盆地进行了二维和三维(2D和3D)井方案的多次现场试验,并对所提出的控制方法进行了测试和验证。通过自动转向决策,成功钻出了多个曲线段,生成了光滑的井眼,并保持了与给定井平面图的接近度。
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