为完井考虑增加额外的维度:地球工程、泵送测量和数据挖掘的案例研究

Yuan Liu, L. Mu, Zhengfeng Zhao, Xianwen Li, P. Enkababian
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引用次数: 0

摘要

在过去的二十年里,完井技术发展迅速,在许多地方,多级完井已成为主要的完井方式。尽管近年来完井工具技术不断创新,但在完井优化实践中仍存在差距。在本文中,我们通过结合地球工程、泵送测量和数据挖掘,为完井技术增加了额外的维度,我们有证据表明,这些额外的元素有助于提高我们的理解、现场效率和整体性能。多级完井优化是关于在哪里以及如何完井。过去采用了不同的方法,即使有了更好的完井设计,油藏和完井质量都得到了保证,但仍有改进的空间。例如,1)完井设计中没有定性地利用地质性质;2)执行阶段的实时作业反馈不足以及时做出完井和压裂调整决策;3)完井到产油周期太长,学习曲线不够快,太多影响因素隐藏在细节中。增加了三个额外的维度来解决改进区域。地球工程增加了“空间信息”,可以将三维空间网格中的地质属性作为地质质量(GQ)投影到井筒中,从而可以将这些信息与储层和完井质量(RQ和CQ)定量地结合起来,以改进压裂处理设计。随泵测量(MWP)增加了实时操作反馈的“及时反馈”,无论是通过高频压力监测井筒还是通过邻井水平监测井的微地震数据来自目标区域,都可以帮助完井和压裂诊断以及现场决策。数据挖掘增加了“模式识别”功能,对油藏和作业数据进行收集和分析,从而系统地了解油藏的复杂性,为改进同一地区未来完井的规划铺平道路。在我们的工作中,每个解决方案都有具体的案例研究。地球工程、MWP和数据挖掘为当前的完井实践增加了三个维度。在我们的案例研究中,这些方法已经证明了提高设计准确性、增加执行信心和加速评估学习曲线的能力。当前完井实践中增加的额外维度主要是空间、时间和模式,它们共同有助于确定未来完井优化创新的方向。
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Adding Extra Dimensions for Completion Consideration: Case Studies with Geoengineering, Measurement While Pumping, and Data Mining
Well completion has evolved rapidly in the past two decades, as multistage completion has become the predominant practice to complete a well in many places. Although innovation in completion tool technology has been continuous in recent years, there are still gaps in the well completion optimization practice. In this paper, we add additional dimensions to well completion technology by incorporating geoengineering, measurement while pumping, and data mining, and we have evidence to show that those additional elements help to improve our understanding, on-site efficiency, and overall performance. Multistage completion optimization is about where and how to complete a well. Different methods were employed in the past, and even with a better-engineered completion design where both reservoir and completion quality are honored, there are still area for improvement. For example, 1) geological properties are not qualitatively utilized in the completion design; 2) real-time operational feedback during the execution phase is inadequate for in-time decisions for completion and fracturing adjustment; 3) the completion-to-well-performance cycle is so long that the learning curve is not fast enough, and too many influential factors are hidden in the details. Three extra dimensions were added to address the improvement areas. Geoengineering adds "space information" in enabling geological properties from a 3D space grid to be projected onto the wellbore as geology quality (GQ) so that the information can be used together with reservoir and completion quality (RQ and CQ) quantitatively to improve the fracturing treatment design. Measurement while pumping (MWP) adds "timely feedback" in that real-time operational feedback—either from the wellbore via high-frequency pressure monitoring or from the target zones via microseismic data in offset horizontal monitoring wells—can help with the completion and fracture diagnosis and decision making on-site. Data mining adds "pattern recognition" in that reservoir and operation data are collected and analyzed to generate a systematic understanding of the reservoir complexity, paving the way for the improved planning of future well completions in the same region. Each of the solutions comes with specific case studies in our work. Geoengineering, MWP, and data mining add three dimensions to the current well completion practice. In our case studies, these approaches have demonstrated the capability to improve the accuracy of the design, increase confidence in the execution, and accelerate the learning curve from evaluation. The extra dimensions added to the current completion practice are essentially space, time, and pattern, and together, they help to define the direction of future innovations for completion optimization.
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