在集成数字生产平台中利用商业智能和数据分析来释放优化潜力

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

摘要

本文讨论了大型凝析气田集成数字生产平台的商业智能算法和数据分析能力。高级工作流的重点是帮助用户浏览大量数据,以识别模式,并利用基于异常的智能警报进行预测。这有助于得出深刻的发现,并为用户提供建议,以制定有效的业务决策,实现油田潜在的优化目标。在一个大型凝析气田中实施了一个集成数字生产平台,该平台具有许多生产优化工作流程,包括日常油井和设施性能监测和监视。通过与强大的商业智能(BI)工具的集成,系统内的数据集成得到增强,使用户能够创建定制的仪表板、KPI屏幕和基于异常的警报屏幕。与生产平台的额外集成来自PI资产框架和公司数据库等实时来源的数据,提高了集成生产系统的日常油井和设施监控能力。BI工具的高级集成为用户提供了各种机会,通过利用来自各种仪表板和业务KPI屏幕的洞察力来识别瓶颈、生产改进机会和故障排除区域。此外,将这些仪表板与多个公司数据源和实时资产数据框架集成,使用户能够最大限度地利用嵌入在大量数据中的信息。这也使最终用户能够最大限度地利用系统潜力,所有信息都可以在一个协作平台下获得。由各种内置复杂算法支持的集成扩展了脚本功能,并增强了可视化,从而帮助资产实现业务kpi需求。用户界面中的商业智能算法建立了一种向下钻取方法,以利用与多个变量相关的信息。这允许快速识别数据中的趋势和模式。定制方法帮助用户根据他们的工程需求和当前实践从数据中获取最大的信息。这种先进的集成帮助用户最大限度地减少了他们在传统数据分析(如收集、映射、过滤和绘图)中的工作。在集成平台中嵌入的这些强大功能的帮助下,用户能够更多地关注优化,并最大限度地减少系统配置的时间和精力。这种独特的整合是独一无二的。一个由油井、网络和各种工作流程组成的在线集成数字生产平台与商业智能工具集成在一起,从而为最终用户提供了与系统优化相关的巨大机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Business Intelligence and Data Analytics in an Integrated Digital Production Platform to Unlock Optimization Potentials
This paper discusses business intelligence algorithms and data analytics capabilities of an integrated digital production platform implemented in a giant gas condensate field. The advanced workflow focuses on helping the user navigate through the bulk of data to identify patterns and make predictions utilizing exception-based intelligence alarming. This helps derive insightful findings and provides recommendations for users to make efficient business decisions for achieving field potential optimization objectives. An Integrated digital production platform within a giant gas condensate field is implemented with numerous production optimization workflows encompassing daily well and facility performance monitoring and surveillance. The data integration within the systems is enhanced by integration with powerful Business Intelligence (BI) tools, enabling users to create customized dashboards, KPI screens, and exception-based alarm screens. An additional integration to the production platform is carried out with data from real-time sources like PI Asset Framework and corporate databases, improving the integrated production system's daily well and facility surveillance capabilities. The advanced integration of BI tools provided users with various opportunities to identify bottlenecks, production improvement chances, and troubleshooting areas by capitalizing insights from various dashboards and business KPI screens. Further, integrating these dashboards with several corporate data sources and a real-time asset data framework enabled users to harness maximized information embedded in the bulk of data. This also enabled end-users to harness maximized system potential, with all information available under a single collaborative platform. The integration powered by various inbuilt complex algorithms extended scripting capabilities, and enhanced visualization assisted the asset in realizing business KPIs requirements. Business intelligence algorithms in user interface established a drill-down approach to utilize information associated with multiple variables on top of one another. This allowed for the quick identification of trends and patterns in data. The customization approach helped the user to draw maximum information out of data as per their engineering requirements and current practices. This advanced integration facilitated users to minimize their efforts in traditional data analysis such as gathering, mapping, filtering, and plotting. With the help of these powerful features embedded in an integrated platform, the user was able to drive more focus on optimization and minimize time and effort on system configuration. This unique integration was one of its kind. An online integrated digital production platform comprising of wells, networks, and various workflows was integrated with business intelligence tools, thereby providing end-users tremendous opportunities related to system optimization.
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