采用人工智能和机器学习技术的新型试井数据分析仪和过程优化器

N. Reddicharla, Subba Ramarao Rachapudi, Indra Utama, F. A. Khan, Prabhker Reddy Vanam, Saber Mubarak Al Nuimi, Mayada Ali Sultan Ali
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引用次数: 0

摘要

试井是油藏动态监测的重要环节之一。随着油田的成熟和井存量的增加,测试在资源(MPFM和测试分离器)方面变得繁琐,这影响了生产配额的交付。此外,测试数据验证和批准遵循一个业务流程,在接受或拒绝井试之前需要长达10天的时间。进行的试井数量接近10,000,其中每年约有10%至15%的测试被统计拒绝。本文的目的是开发一种方法,以减少试井拒绝,并及时提高运营商干预的标志,重新开始试井。本案例研究应用于某成熟油田,该油田已生产40年,拥有大量的历史试井数据。本文讨论了一种由人工智能(AI)支持的数据驱动的试井数据分析仪和优化器的开发,用于分两阶段使用MPFM进行测试的井。其动机是获取历史数据、实时数据、井模型性能曲线,并规定试井数据的质量,以便实时为作业者提供标志。机器学习预测结果有助于测试操作,并可以将测试验收周转时间从10天大幅减少到几个小时。在第二层,具有历史数据的无监督模型有助于识别影响试井样例拒绝的参数,测试持续时间、节流孔尺寸、GOR等。建模结果将用于更新试井程序和测试理念。这种方法正在ADNOC陆上资产的一个项目中进行评估。该结果有望将试井拒绝率降低至少5%,从而进一步优化所需资源并改善回分配过程。此外,测试质量的实时标记将有助于将验证周期从10天小时缩短,从而改善测试周期过程。在资源有限的情况下,该方法提高了油藏综合管理的合规性,满足了试井要求。预计该方法将与全油田数字化油田实施相结合。这是一种将机器学习和人工智能应用于试井的新方法。它最大限度地利用实时数据,创建咨询系统,提高测试数据质量监测和及时决策,以减少试井拒绝。
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A Novel Well Test Data Analyzer and Process Optimizer Using Artificial Intelligence and Machine Learning Techniques
Well testing is one of the vital process as part of reservoir performance monitoring. As field matures with increase in number of well stock, testing becomes tedious job in terms of resources (MPFM and test separators) and this affect the production quota delivery. In addition, the test data validation and approval follow a business process that needs up to 10 days before to accept or reject the well tests. The volume of well tests conducted were almost 10,000 and out of them around 10 To 15 % of tests were rejected statistically per year. The objective of the paper is to develop a methodology to reduce well test rejections and timely raising the flag for operator intervention to recommence the well test. This case study was applied in a mature field, which is producing for 40 years that has good volume of historical well test data is available. This paper discusses the development of a data driven Well test data analyzer and Optimizer supported by artificial intelligence (AI) for wells being tested using MPFM in two staged approach. The motivating idea is to ingest historical, real-time data, well model performance curve and prescribe the quality of the well test data to provide flag to operator on real time. The ML prediction results helps testing operations and can reduce the test acceptance turnaround timing drastically from 10 days to hours. In Second layer, an unsupervised model with historical data is helping to identify the parameters that affecting for rejection of the well test example duration of testing, choke size, GOR etc. The outcome from the modeling will be incorporated in updating the well test procedure and testing Philosophy. This approach is being under evaluation stage in one of the asset in ADNOC Onshore. The results are expected to be reducing the well test rejection by at least 5 % that further optimize the resources required and improve the back allocation process. Furthermore, real time flagging of the test Quality will help in reduction of validation cycle from 10 days hours to improve the well testing cycle process. This methodology improves integrated reservoir management compliance of well testing requirements in asset where resources are limited. This methodology is envisioned to be integrated with full field digital oil field Implementation. This is a novel approach to apply machine learning and artificial intelligence application to well testing. It maximizes the utilization of real-time data for creating advisory system that improve test data quality monitoring and timely decision-making to reduce the well test rejection.
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