Cloud-Based Planning and Real-Time Algorithms Improve Coiled Tubing Cleanout Efficiency

Johnny Bardsen, Bjørn Engvald Staveland Nilsen, Tormod Froyland, P. Ramondenc, Jordi Segura, A. Gabdullin, Lev Kotlyar, S. H. Fonseca
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In addition to technical challenges, cleanout operations face logistics and operational constraints, which directly impact the feasibility and viability of the intervention.\n Digital tools provide a path toward increased efficiency and success rate of CTCO, but the suite of legacy software often used in CT operations relies on monolithic implementations, which limit the possible optimization of the planning and the connection between design and execution data. More generally, reliance on manual operations (whether during the design or execution phases) often leads to missing on potential optimization opportunities. The transformation of CTCO leveraging a new cloud-based CT hydraulics (CTH) simulator, real-time execution advisors, and autonomous conveyance brings a new level of flexibility and interconnectivity to the design and execution phases.\n CTH features state-of-the-art flow and transport models, which improve CTCO design capabilities, providing the required insights during execution time to optimize the cleanout operation. During the design phase of underbalanced CTCO, the designer needs to work with uncertainty on several parameters, such as reservoir pressure or PI distribution of the horizontal section. The architecture of the CTH allows sensitizing over every parameter, which generates a combinatorial number of scenarios, driving a larger-than-usual processing demand. The cloud-based service's processing capacity meets these demands during the job design phase to generate a large database of sensitized scenarios and delineate a safe and effective operational envelope. Two case studies show how CTH can be used during the design phase to ensure more efficient job execution in two horizontal oil wells in the Valhall brownfield. In the first one, the simulator was used to guarantee that the cleanout execution would be possible even if contingency plans due to gas lift valve failure had to be triggered. In the second, sensitivity analysis was conducted over the pumping rate and formation pressure, identifying a safe operating envelope that, once coupled with an adequate execution approach, led to 20% oil base savings.\n Efficiency of CTCO operations is further improved by implementing autonomous conveyance execution during the operations. This includes automatic control of depth and speed, achieving more than 10% more efficient speeds during run-in-hole and pull-out-of-hole activities. Pull tests need to be performed at set intervals during conveyance to ensure that the pipe is not getting stuck, which accelerates fatigue of the CT pipe. The autonomous system also includes a pull test optimizer that accounts for the pipe's fatigue profile, weld locations, and completion data to strategically adjust the pull test schedule. This reduces the effect of these tests on pipe fatigue by up to 28% over its lifetime and lowers the risks linked with running across downhole restrictions. Besides, autonomous conveyance and pull test execution liberates the CT operator to concentrate on other crucial aspects of the operation. These include managing and monitoring the CT unit, fluid pumps, remote-operated choke, and downhole tools, controlling real-time parameters, updating the job log, and managing the crew.\n This study demonstrates that by combining extensive cloud computing, advanced flow models, surface and downhole measurements with real-time interpretation and inference algorithms, and autonomous operations, CTCO operations can be conducted safer and more efficiently, in a repeatable manner, therefore reducing the operating time, fluid pumped, pipe fatigue, and greenhouse emissions, and allowing to raise the success rate of those operations to a new industry benchmark level.","PeriodicalId":517791,"journal":{"name":"Day 2 Wed, March 20, 2024","volume":"42 6","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Day 2 Wed, March 20, 2024","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.2118/218290-ms","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

Depleted wells require underbalanced coiled tubing cleanouts (CTCO) in which natural production from the reservoir assists solids transport. Conventional cleanout methods relying on fluid circulation pose a risk of fluid loss, reducing annular velocity and increasing the risk of formation damage or stuck CT pipe incidents. The use of nitrified fluids addresses some of those risks, but also introduces a new set of challenges. In addition to technical challenges, cleanout operations face logistics and operational constraints, which directly impact the feasibility and viability of the intervention. Digital tools provide a path toward increased efficiency and success rate of CTCO, but the suite of legacy software often used in CT operations relies on monolithic implementations, which limit the possible optimization of the planning and the connection between design and execution data. More generally, reliance on manual operations (whether during the design or execution phases) often leads to missing on potential optimization opportunities. The transformation of CTCO leveraging a new cloud-based CT hydraulics (CTH) simulator, real-time execution advisors, and autonomous conveyance brings a new level of flexibility and interconnectivity to the design and execution phases. CTH features state-of-the-art flow and transport models, which improve CTCO design capabilities, providing the required insights during execution time to optimize the cleanout operation. During the design phase of underbalanced CTCO, the designer needs to work with uncertainty on several parameters, such as reservoir pressure or PI distribution of the horizontal section. The architecture of the CTH allows sensitizing over every parameter, which generates a combinatorial number of scenarios, driving a larger-than-usual processing demand. The cloud-based service's processing capacity meets these demands during the job design phase to generate a large database of sensitized scenarios and delineate a safe and effective operational envelope. Two case studies show how CTH can be used during the design phase to ensure more efficient job execution in two horizontal oil wells in the Valhall brownfield. In the first one, the simulator was used to guarantee that the cleanout execution would be possible even if contingency plans due to gas lift valve failure had to be triggered. In the second, sensitivity analysis was conducted over the pumping rate and formation pressure, identifying a safe operating envelope that, once coupled with an adequate execution approach, led to 20% oil base savings. Efficiency of CTCO operations is further improved by implementing autonomous conveyance execution during the operations. This includes automatic control of depth and speed, achieving more than 10% more efficient speeds during run-in-hole and pull-out-of-hole activities. Pull tests need to be performed at set intervals during conveyance to ensure that the pipe is not getting stuck, which accelerates fatigue of the CT pipe. The autonomous system also includes a pull test optimizer that accounts for the pipe's fatigue profile, weld locations, and completion data to strategically adjust the pull test schedule. This reduces the effect of these tests on pipe fatigue by up to 28% over its lifetime and lowers the risks linked with running across downhole restrictions. Besides, autonomous conveyance and pull test execution liberates the CT operator to concentrate on other crucial aspects of the operation. These include managing and monitoring the CT unit, fluid pumps, remote-operated choke, and downhole tools, controlling real-time parameters, updating the job log, and managing the crew. This study demonstrates that by combining extensive cloud computing, advanced flow models, surface and downhole measurements with real-time interpretation and inference algorithms, and autonomous operations, CTCO operations can be conducted safer and more efficiently, in a repeatable manner, therefore reducing the operating time, fluid pumped, pipe fatigue, and greenhouse emissions, and allowing to raise the success rate of those operations to a new industry benchmark level.
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基于云的规划和实时算法提高了套管清理效率
枯竭井需要欠平衡的螺旋管清理(CTCO),在这种情况下,储层的自然生产有助于固体输送。依靠流体循环的传统清管方法存在流体流失风险,降低了环流速度,增加了地层损害或卡管事故的风险。使用硝化流体可以解决部分风险,但也带来了一系列新的挑战。除技术挑战外,清理作业还面临物流和操作方面的限制,这直接影响了干预的可行性和可行性。数字工具为提高 CTCO 的效率和成功率提供了一条途径,但 CT 操作中经常使用的传统软件套件依赖于单一的实施方案,这限制了规划的优化以及设计与执行数据之间的联系。更普遍的情况是,依赖人工操作(无论是在设计阶段还是在执行阶段)往往会导致错失潜在的优化机会。CTCO 的转型利用了全新的云 CT 水力学(CTH)模拟器、实时执行顾问和自主输送系统,将设计和执行阶段的灵活性和互联性提升到了一个新的水平。CTH 具有最先进的流量和输送模型,可提高 CTCO 的设计能力,在执行期间提供所需的洞察力,以优化清理作业。在欠平衡 CTCO 的设计阶段,设计人员需要处理多个参数的不确定性,如储层压力或水平段的 PI 分布。CTH 的结构允许对每个参数进行敏感化处理,这就产生了大量的组合方案,导致处理需求比平时更大。在作业设计阶段,基于云的服务处理能力可以满足这些需求,从而生成一个庞大的敏感化方案数据库,并划定安全有效的运行范围。两个案例研究展示了如何在设计阶段使用 CTH,以确保在 Valhall 棕地的两口水平油井中更高效地执行作业。在第一个案例中,模拟器被用来保证即使由于气举阀故障而触发应急计划,也能执行清井作业。在第二项模拟中,对抽油速率和地层压力进行了敏感性分析,确定了一个安全的操作范围,一旦与适当的执行方法相结合,就能节省 20% 的石油基数。通过在作业期间实施自主输送执行,进一步提高了 CTCO 作业的效率。这包括对深度和速度的自动控制,在井内运行和井外拔出活动中,速度效率提高了 10%以上。在输送过程中,需要在设定的时间间隔内进行拉拔测试,以确保管道不会被卡住,从而加速 CT 管道的疲劳。自主系统还包括一个拉拔测试优化器,可根据管道的疲劳曲线、焊接位置和完井数据对拉拔测试计划进行战略性调整。这样,这些测试对管道疲劳的影响在其使用寿命期间最多可减少 28%,并降低了与穿越井下限制有关的风险。此外,自主输送和拉拔测试的执行使 CT 操作员能够专注于作业的其他重要方面。这些方面包括管理和监控 CT 设备、流体泵、遥控扼流圈和井下工具,控制实时参数,更新工作日志,以及管理工作人员。这项研究表明,通过将广泛的云计算、先进的流动模型、带有实时解释和推理算法的地面和井下测量以及自主操作结合起来,可以更安全、更高效、可重复地进行 CTCO 操作,从而减少操作时间、泵送流体、管道疲劳和温室气体排放,并将这些操作的成功率提高到新的行业基准水平。
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