非常规油藏混合建模预测最终采收率

C. Temizel, C. H. Canbaz, Karthik Balaji, Ahsen Ozesen, Kirill Yanidis, Hasanain Alsaheib, Nouf Alsulaiman, Mustafa A. Basri, Nayif Jama
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引用次数: 1

摘要

在数据丰富的常规油藏中,机器学习模型是一种强大的预测和优化工具。然而,在非常规油藏中,由于存在很大的不确定性,纯数据驱动的机器学习模型尚未被证明是可重复和可扩展的。在这种情况下,将基于物理的油藏模拟方法与机器学习技术相结合,可以作为缓解这些限制的解决方案。本研究的目的是提供一个概述以及实施这种综合方法的例子,以预测页岩储层的估计最终采收率(EUR)。这项研究完全基于合成数据。为了生成油藏某一段的数据,使用了全物理油藏模拟器。本节的模拟数据用于训练机器学习模型,该模型提供EUR作为输出。然后使用基于物理的模型预测具有不同储层性质的油田另一部分的产量。利用先前训练的模型,对该油藏段进行产量预测,以说明对数据不丰富的油藏段进行EUR预测的综合方法。综合方法,或混合建模,对数据匮乏的油藏不同段进行产量预测。使用基于物理的模型,机器学习模型所做的EUR预测的不确定性已经减少,并且已经获得了更准确的预测。这种方法主要适用于油藏,例如非常规油藏,在这些油藏中,已经开发的油田的一部分拥有大量的数据,而油田的另一部分将缺乏数据。混合模型始终能够在可接受的精度水平上预测EUR,因此,突出了这种综合方法的好处。该研究推进了可重复和可扩展的混合模型在非常规油藏中的应用,并强调了与单独使用基于物理或基于机器学习的模型相比,混合模型的优势。
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Hybrid Modeling In Unconventional Reservoirs To Forecast Estimated Ultimate Recovery
Machine learning models have worked as a robust tool in forecasting and optimization processes for wells in conventional, data-rich reservoirs. In unconventional reservoirs however, given the large ranges of uncertainty, purely data-driven, machine learning models have not yet proven to be repeatable and scalable. In such cases, integrating physics-based reservoir simulation methods along with machine learning techniques can be used as a solution to alleviate these limitations. The objective of this study is to provide an overview along with examples of implementing this integrated approach for the purpose of forecasting Estimated Ultimate Recovery (EUR) in shale reservoirs. This study is solely based on synthetic data. To generate data for one section of a reservoir, a full-physics reservoir simulator has been used. Simulated data from this section is used to train a machine learning model, which provides EUR as the output. Production from another section of the field with a different range of reservoir properties is then forecasted using a physics-based model. Using the earlier trained model, production forecasting for this section of the reservoir is then carried out to illustrate the integrated approach to EUR forecasting for a section of the reservoir that is not data rich. The integrated approach, or hybrid modeling, production forecasting for different sections of the reservoir that were data-starved, are illustrated. Using the physics-based model, the uncertainty in EUR predictions made by the machine learning model has been reduced and a more accurate forecasting has been attained. This method is primarily applicable in reservoirs, such as unconventionals, where one section of the field that has been developed has a substantial amount of data, whereas, the other section of the field will be data starved. The hybrid model was consistently able to forecast EUR at an acceptable level of accuracy, thereby, highlighting the benefits of this type of an integrated approach. This study advances the application of repeatable and scalable hybrid models in unconventional reservoirs and highlights its benefits as compared to using either physics-based or machine-learning based models separately.
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