基于强化学习的水平井筒轨迹智能优化

Shihui Sun , Yanwen Gao , Xiaofeng Sun , Jun Wu , Huilin Chang
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引用次数: 0

摘要

超长水平井对于提高页岩油气井的产量和开发效益至关重要。目前,先进的井下半闭环转向钻井技术依赖于地面和井下的双重通信机制,以及人类专家的经验决策。然而,由于页岩油气相关地质的不确定性、钻具建造能力的不确定性以及钻井过程中测量信息的滞后性,很难精确控制储层中超长水平裸眼钻井的轨迹。本报告提出了一种基于强化学习的超长水平井轨迹自适应目标检测和设计方法。所开发的方法能够根据边钻井边测井数据动态识别储层序列,并实时预测水平目标,识别精度高达 90.1%。此外,边钻井边测量数据可用于准确描述目标进入过程的深度、倾角和方位角。通过定义钻头动作、奖励函数和更新机制,模拟了钻头与目标环境之间的动态交互机制。钻井工程条件限制了相互作用,从而使钻头自动决定钻进目标的方向,证明了向目标钻进的井筒轨迹具有 100% 的准确性。实验应用结果表明,所开发的方法可用于实时确定水平井的动态目标区域,并在钻井和测量过程中对超长水平段井眼轨迹调整做出智能井下决策。因此,高质量储层的钻井速度得到显著提高。本文讨论的结果为进一步开发井下全闭环智能自主决策井眼轨迹控制提供了启示。
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Intelligent optimization of horizontal wellbore trajectory based on reinforcement learning
Ultra-long horizontal wells are crucial for improving the production and developmental benefits of shale oil and gas wells. Currently, advanced downhole semi-closed-loop steering drilling technology depends on a dual communication mechanism between the surface and downhole, as well as the empirical decisions of human experts. However, it is difficult to acutely control the trajectory of ultra-long horizontal open hole drilling in a reservoir owing to geological uncertainties related to shale oil and gas, the uncertainty of the drilling tool's building capacity, and the lag of measurement information while drilling. This report proposes an adaptive target detection and design method for ultra-long horizontal well trajectories based on reinforcement learning. The developed approach enables dynamic identification of reservoir sequences according to logging-while-drilling data and prediction of horizontal targets in real-time, with a recognition accuracy of 90.1%. Additionally, measurement-while-drilling data are used to accurately characterize the depth, inclination, and azimuth of the target-entering process. The dynamic interaction mechanism between the bit and the target environment is simulated by defining the bit action, reward function, and an update mechanism. The drilling engineering conditions restrict the interactions, such that the bit automatically decides the direction in which to drill the targets, demonstrating 100% accuracy for the wellbore trajectory toward the target. The experimental application results indicate that the developed method can be applied to determine the dynamic target area of a horizontal well in real time and make intelligent downhole decisions regarding ultra-long horizontal section borehole trajectory adjustments while drilling and measuring. The drilling rate of high-quality reservoirs is therefore significantly improved. The results discussed herein provide insights to support further developments of downhole full-closed-loop intelligent autonomous decision-making borehole trajectory control.
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