闭环数据和商业智能驱动的井动态评估方法,以识别井动态的变化

A. Alsaeedi, M. Elabrashy, M. Alzeyoudi, M. Albadi, Sandeep Soni, Jose Isambertt, Deepak Tripathi, Hamda Alkuwaiti
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引用次数: 0

摘要

资产工程师每天花费大量时间进行数据验证,从多个来源收集数据,手动收集和分析这些数据点,以推断井的行为,最后在现场实施变更。本文提出了一种闭环方法,该方法大大减少了在低效率活动中损失的时间,帮助工程师更快地做出决策,并协助有效地实施现场的变化。该井的性能评估首先与公司数据库直接集成,将现场数据输入水力模型。接下来,使用预先配置的油井性能限制,如油藏参数、油井校准参数和地面参数来验证输入数据,并提醒最终用户触发油井性能评估工作流。该工作流基于一个商业智能工具,该工具集成了统计信息和基于物理的模型信息。最后,在工程师做出整体决策后,集成动作跟踪机制将可操作项分配给现场操作人员,以关闭工作流。这种方法大大减少了在数据整合和分析上花费的时间。从本质上讲,这意味着工程师有更多的时间专注于改善井况的策略,例如在一个月内从300多个管柱中捕获1000多口井的数据,进行增产或重新射孔。这种方法不完全依赖于静态物理模型或统计模型;相反,这种方法结合了这两种方法来提高决策能力。此外,统计模型捕获了井的动态行为,并根据水力模型得出的估计井行为进行验证。此外,流线型可视化工具可帮助工程师快速识别井中存在的问题,如产能降低、储层压力降低、井眼规模增大、井筒限制增加等。这个闭环工作流的另一个关键附加价值是可操作的反馈,它被很好地定义并存储在系统中以供通用参考。例如,资产工程师提供可操作的反馈,如重新测试要求、油井增产、候选人工举升、油管间隙等。在行动跟踪框架内,现场工程师可以快速过滤分配给他或她的当天行动项目,并采取适当的行动。通过将统计和水力模型与可视化和动作跟踪功能相结合,这种基于动作的新型集成闭环工作流程大大减少了日常验证任务和井况评估任务所花费的时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Closed-Loop Data & Business Intelligence Driven Approach of Well Performance Evaluation to Identify Changes in Well Behavior
Asset engineers spend significant time in data validation on a daily basis by gathering data from multiple sources, manually collecting and analyzing these data points to deduce well behavior, and finally implementing the changes on the field. This paper proposes a closed-loop methodology that drastically reduces the time lost in low-efficiency activities, helps engineers to make faster decisions, and assists in efficiently implementing the changes in the field. This well performance evaluation starts with direct integration with the corporate database to feed the field data into a hydraulic model. Next, Pre-configured well performance limits such as reservoir parameters, well calibration parameters, and surface parameters are used to validate the input data and alert the end-user to trigger a well performance evaluation workflow. This workflow is based on a business intelligence tool that integrates statistical information with physics-based model information. Finally, after the engineer makes a holistic decision, an integrated action tracking mechanism assigns an actionable item to the field operator to close the workflow. This approach significantly reduces the time spent on data consolidation and analysis. Essentially this means more time for the engineers to focus on well behavior improvement strategies such as stimulation or re-perforation from more than three hundred strings with more than a thousand well data captured over a month. This approach is not entirely dependent on either static physics-based or statistical models; instead, this approach integrates both methods to enhance decision-making. Moreover, the dynamic behavior of the well is captured in the statistical model and validated against the estimated well behavior derived from the hydraulic model. Furthermore, the streamlined visualization tool helps engineers quickly identify well problems, such as lower productivity, reduced reservoir pressure, increased well scale, increased restrictions in the wellbore, etc. Another critical value addition of this closed-loop workflow is the actionable feedback that is well defined and stored within the system for common reference. For example, the asset engineers provide actionable feedback such as retesting requirement, well stimulation, artificial lift candidate, tubing clearance. Within the action tracking framework, field engineers can quickly filter the assigned action items to him or her for the day and take appropriate actions. This new integrated action-based closed-loop workflow significantly reduces the time spent on daily validation tasks and well performance evaluation tasks by combining the statistical and hydraulic models supported with visualization and action tracking capabilities.
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