迁移学习背景下的中东特提斯油气系统非常规资源机会评价

Cyrus Ashayeri, B. Jha
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引用次数: 1

摘要

在数据很少的新领域,决策很大程度上依赖于基于物理的模拟模型。然而,由于对控制非常规资源流动的物理过程缺乏充分的了解,数据驱动建模已经成为一种替代和补充工具,可以根据现有数据进行采收率预测。迁移学习提供了一个机会,在获得足够的数据之前开始对资产进行早期分析。能源行业面临的新挑战,以及国内和全球供需动态的变化,促使中东一些石油出口国制定非常规资源开发战略。在这项研究中,我们开发了一个数据驱动的迁移学习框架,可以在全盆地范围内评估新的页岩气和致密油前景。所提出的迁移学习方法是根据德克萨斯州南部Eagle Ford超级盆地数千口水平井多级井的实际数据开发的。在该方法中,我们在数据预处理和特征生成步骤中集成了油藏工程领域的专业知识。我们还考虑了训练数据的时空平衡,以确保预测模型符合非常规油田开发的实际情况。我们的完整周期迁移学习工作流程包括降维和无监督聚类、监督学习和超参数微调。该工作流程使油藏工程师能够尝试多种假设场景,并在学习过程中观察额外数据的影响。我们使用开发的工作流程来检查Eagle Ford盆地在中东潜在区块的数据驱动模型的性能。Eagle Ford地区存在各种类型的液体油、凝析油和干气,因此需要训练一个足够灵活的模型,以便在新地点对各种类型的资产进行测试。我们首先展示了我们的模型在Eagle Ford的成功部署。接下来,我们使用来自Tuwaiq Mountain和Hanifa等主要地层的信息,并展示了一个完全开发的页岩储层的现有模型在新油田中以最少的信息获得可接受的精度方面的价值。我们的模型是由分辨率相对较低的数据类型开发的,这样可以最大限度地减少过拟合的影响,并允许在整个盆地范围内精确地推广到不同的地质情况。这种方法允许对大型资产的各个部分进行加速评估,以加强油田开发规划过程。这是第一个在盆地范围内研究迁移学习在中东地区一些主要非常规油气藏上的有效性的例子。该工作流程允许研究地质和岩石物理变量、钻井和完井参数以及新资产中大量井的产能之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Unconventional Resources Opportunities in the Middle East Tethyan Petroleum System in a Transfer Learning Context
Decision making in new fields with little data available relies heavily on physics-based simulation models. However, due to a lack of full understanding of the physical processes governing flow in the unconventional resources, data-driven modeling has emerged as an alternative and complimentary tool to create recovery forecasts that honor the available data. Transfer Learning provides an opportunity to start early-stage analysis of the asset before adequate data becomes available. New challenges in the energy industry as well as shifting dynamics in both domestic and global supply and demand has encouraged some of the petroleum exporting countries in the Middle East to strategize the development of unconventional resources. In this research we have developed a data-driven Transfer Learning framework that allows the basin-wide assessment of new shale gas and tight oil prospects. The proposed Transfer Learning method is developed on real-world data from several thousand horizontal multistage wells in the Eagle Ford super-basin in South Texas. In this method we have integrated reservoir engineering domain expertise in the data pre-processing and feature generation steps. We have also considered the temporal and spatial balancing of the training data to assure that the predictive models honor the real practice of unconventional field development. Our full cycle Transfer Learning workflow consists of dimensionality reduction and unsupervised clustering, supervised learning, and hyperparameter fine-tuning. This workflow enables reservoir engineers to experiment with multiple hypothetical scenarios and observe the impact of additional data in the learning process. We use the developed workflow to examine the performance of a data-driven model of the Eagle Ford Basin on potential plays in the Middle East. Existence of all liquid types of oil, condensate and dry gas in the Eagle Ford has resulted in training a model flexible enough to be tested on various types of assets in a new location. We first present the successful deployment of our model within the Eagle Ford. Next, we use the information from major formations such as Tuwaiq Mountain and Hanifa and show the value of a pre-existing model from a fully-developed shale play on achieving acceptable accuracies with minimal information available in a new field. Our model is developed by data types with relatively low resolution that minimizes overfitting effects and allows generalization to different geologies with basin-wide accuracy. This approach allows conducting accelerated assessment of various sections of a large asset to enhance field development planning processes. This is a first example of such an effort on a basin scale that examines the effectiveness of Transfer Learning on some of the major unconventional plays in the Middle East region. This workflow allows investigating the relationship among geologic and petrophysical variables, drilling and completion parameters, and productivity of a large group of wells in a new asset.
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