Edwin Siahaan, Irwan Mamat, Senna Sun Laksana, Agung Setyowibowo, Aulia Ahmad Naufal, Octy Edrianana Wulandari, Sabrina Metra, Ardi Karta Nainggolan, Okky Idelian Arinandy, Livia Ellen, Maharani Devira Pramita, Agnes Tjiong, Yus Wilian, P. Songchitruksa
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引用次数: 0

摘要

技术的进步,加上丰富的静态和历史数据,使人工智能和数字自动化非常适合石油和天然气行业。专门解决了工程师在选择修井候选井时遇到的难题。在印度尼西亚的多层海上油田Attaka油田,修井和油井服务(WOWS)已成为减少产量下降的策略之一。传统的工作流程从多个未整合的来源、数据格式和资源限制中吸收数据,审查400多口井,穿透200多个油藏,可能需要2-3个月的时间,审查范围也会缩小。另外,并非所有数据和值都适合优先级流程。开发了一种称为WEPON的智能自动化解决方案,以提高阿塔卡地区WOWS候选人筛选的决策速度和质量。WEPON建立在数据科学平台之上,以简化分析引擎及其数据管道的开发、生产和维护。在该解决方案的流程中,使用并汇总了超过15个数据源,从油藏属性、分配的生产数据到井图。武器武器系统的主要组成部分包括:1。技术分析与机器学习结合多标准决策过程,识别高潜力完井,包括已生产完井和未开发完井2。采用油田原有的工作流程,对拟完井的地面和地下限制条件进行可行性检查。诊断井,确定正确的修井/修井机会。计算每口井的地下和地面风险,并将历史成功率与井的NPV相结合,得出其期望值(EV) 5。该引擎可通过解决方案的UI进行按需经济分析,并与作业者的经济分析工具绑定,该工具包含当前使用的计算和方案6。在基于web的应用程序上展示结果。由于主要流程每周运行一次,WEPON的自动化有助于将Attaka油田的审查规模扩大到整个油田,并将审查一口井的时间从3天减少到几个小时,从而使工程师能够将更多时间花在现有工作流程的高认知组件上。此外,它已经将方法转变为更受数据驱动的方法,从而做出更明智的决策。该武器的实施在印度尼西亚国家石油公司(PERTAMINA)进行试点。这也是该解决方案首次在数据科学平台上开发,使该工具具有常绿性和可扩展性。该实现也是第一个通过其API集成经济分析工具的实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Well Portfolio Optimisation: Accelerating Generation of Well Intervention Candidates with Automated Analytics and Machine Learning - A Case Study from Attaka Field, Indonesia
Advancements in technology, complemented with the abundance of static and historical data brought AI and digital automation adapted very well into the oil and gas industry. Specially to solve the challenges by the engineers in selecting well intervention candidates. In Attaka Field, a multi-layered offshore field in Indonesia, workover and well service (WOWS) have been one of the strategies to reduce production decline. With traditional workflows that absorb data from multiple unconsolidated sources and data format and resource limitation, reviewing 400+ wells that penetrates more than 200 reservoirs may take 2-3 months process with a reduced scope of review. As an addition, not all data and values are justified for the prioritization process. An intelligent automated solution termed as WEPON was developed to improve decision speed and quality in Attaka Field WOWS candidate screening. WEPON was built on top of a data science platform to ease the development, production and maintenance of the analytics engine and its data pipeline. More than 15 data sources, ranging from reservoir properties, allocated production data, up to well schematics were consumed and aggregated in this solution's flow. The main components for WEPON includes: 1. Technical analysis with analytics and ML plus multi-criteria decision-making process to identify high potential completions, both produced and virgin ones 2. Adopting from the field's old workflow, feasibility checks to surface and subsurface constraints for the proposed completions 3. Diagnosing the wells and determine the right workover/ intervention opportunities 4. Calculating each well's subsurface and surface risks, and historical success rate to be integrated with the well's NPV to produce its expected value (EV) 5. Running on-demand economic analysis accessible from the solution's UI, the engine is tied into the operator's economic analysis tool that contains the currently used calculation and scheme 6. A presentation of the results on a web-based application. As the main process is triggered to be run on a weekly basis, the automation of WEPON helps to increase Attaka Field review size to the whole fields, as well as reducing 89.7% of time from 3 days to review a well to hours of run to review the whole field, enabling engineers to spend more time on high-cognitive components of the existing workflows. Moreover, it has shifted the approach to a more data-driven one leading up to smarter decisions. The implementation of this WEPON is the pilot in the Indonesian National Oil Company, PERTAMINA. This is also the first time the solution developed on a data science platform, allowing the tool to be evergreen and extensible process. This implementation is also the first one to integrate an economic analysis tool through its API.
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