采用集成过程控制的控压钻井

Mahdi Imanian, M. Karbasian, A. Ghassemi
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引用次数: 0

摘要

在石油工业中,钻井作业过程中的井筒压力控制一直很重要,因为这可以防止井喷的发生。本研究首次将自动过程控制与统计过程控制相结合,对钻井作业中的随机和特殊原因进行识别、监测和控制。为此,采用自动过程控制,将控制图应用于被控过程的输出;随后,确定超出预定义控制范围的点。该方法能够使用自动过程控制中不使用的可控输入变量,例如泥浆比重的变化,来完全控制过程。由于过程的动态性,基于自适应模型的控制器已经取代了自动过程控制中的反馈方法。控制图也被用来比较不同的自动过程控制方法的性能。在此基础上,模糊自适应方法在自动过程控制中具有良好的性能。结果表明,该方法可以改善自动过程控制方法的局限性,通过统计过程控制将钻头压力控制在可接受的范围内。
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Managed Pressure Drilling Using Integrated Process Control
Control of wellbore pressure during drilling operations has always been important in the oil industry as this can prevent the possibility of well blowout. The present research employs a combination of automatic process control and statistical process control for the first time for the identification, monitoring, and control of both random and special causes in drilling operations. To this end, by using automatic process control, control charts are applied to the output of the controlled process; subsequently, the points which are outside the predefined control limits are identified. This method is capable of using controllable input variables not used in automatic process control, such as changes in the mud weight, to fully control the process. Due to the dynamic nature of the process, adaptive model-based controllers have replaced feedback methods in automatic process control. Control charts have also been used to compare the performance of different automatic process control approaches. Based on this new criterion, the fuzzy adaptive approach is shown to have good performance in automatic process control. The results indicate that this approach can improve the limits of the automatic process control method by using statistical process control for controlling the bit pressure in an acceptable range.
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