利用人工智能释放相对渗透率的潜力

Abdur Rahman Shah, K. Ghorayeb, Hussein Mustapha, Samat Ramatullayev, Nour El Droubi, C. Kloucha
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引用次数: 1

摘要

任何动态模型的一个最重要的方面是相对渗透率。为了释放大型相对渗透率数据库的潜力,所提出的工作流程集成了数据分析、机器学习和人工智能(AI)。该工作流程允许自动生成干净的数据库和相对渗透率数据的数字孪生。该工作流程通过将岩石分类方案扩展到同一地层的多个油田,利用人工智能来识别附近油田的模拟数据。我们创建了一个完全集成的智能工具,用于从实验室报告中提取SCAL数据,然后使用AI和自动化处理和建模数据。在提取端点和Corey系数后,使用自动历史匹配和岩心洪水实验模拟来检查相对渗透率样品的质量。经过训练的人工智能模型用于识别来自相同地层的其他油田的各种岩石类型的类似物。最后,基于人工智能模型的输出,利用相同油田和模拟油田的数据计算相对渗透率。工作流解决方案为创建相对渗透率的干净数据库提供了可靠且集成良好的方法。该工作流程使得使用Corey和LET方法以系统的方式创建相对渗透率数据的数字孪生成为可能。设计了模拟运行,使压力测量与相对渗透率曲线的调整和细化相匹配。人工智能工作流使我们能够充分发挥来自各个领域的相对渗透率样本的海量数据库的潜力。为了确保动态模型中的利用率,以健壮的方式创建了高、中、低用例。该工作流程解决方案采用人工智能模型,从多个油田的同一地层中识别岩石类型类似物。人工智能生成的类似物,结合强大的工作流程,可以快速控制相对渗透率数据,从而创建一个完全集成的相对渗透率数据库。提出的解决方案灵活、可伸缩,可以适应任何数据,应用于任何领域。
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Unleashing the Potential of Relative Permeability Using Artificial Intelligence
One of the most important aspects of any dynamic model is relative permeability. To unlock the potential of large relative permeability data bases, the proposed workflow integrates data analysis, machine learning, and artificial intelligence (AI). The workflow allows for the automated generation of a clean database and a digital twin of relative permeability data. The workflow employs artificial intelligence to identify analogue data from nearby fields by extending the rock typing scheme across multiple fields for the same formation. We created a fully integrated and intelligent tool for extracting SCAL data from laboratory reports, then processing and modeling the data using AI and automation. After the endpoints and Corey coefficients have been extracted, the quality of the relative permeability samples is checked using an automated history match and simulation of core flood experiments. An AI model that has been trained is used to identify analogues for various rock types from other fields that produce from the same formations. Finally, based on the output of the AI model, the relative permeabilities are calculated using data from the same and analog fields. The workflow solution offers a solid and well-integrated methodology for creating a clean database for relative permeability. The workflow made it possible to create a digital twin of the relative permeability data using the Corey and LET methods in a systematic manner. The simulation runs were designed so that the pressure measurements are history matched with the adjustment and refinement of the relative permeability curve. The AI workflow enabled us to realize the full potential of the massive database of relative permeability samples from various fields. To ensure utilization in the dynamic model, high, mid, and low cases were created in a robust manner. The workflow solution employs artificial intelligence models to identify rock typing analogues from the same formation across multiple fields. The AI-generated analogues, combined with a robust workflow for quickly QC’ing the relative permeability data, allow for the creation of a fully integrated relative permeability database. The proposed solution is agile and scalable, and it can adapt to any data and be applied to any field.
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