针对特定油藏应用的基于人工智能的提高采收率材料筛选

Ronaldo Giro, Silas Pereira Lima Filho, Ferreira Rodrigo Neumann Barros, Michael S. Engel, M. Steiner
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引用次数: 4

摘要

全球油田平均采收率(RF)仅为20-40%左右。RF如此之低的一个可能原因可能是提高采收率(EOR)技术尚未得到广泛应用。这可能是出于经济原因,考虑到提高采收率的有效性和对储层的潜在损害,或者缺乏针对储层的建议。在本文中,我们介绍了一种利用人工智能(AI)方法为特定油藏条件选择提高采收率材料的方法。我们研究了筛选结果与仅用于识别EOR方法的最先进技术所得结果的一致性,即没有EOR材料特异性。我们的方法将注入流体(包括EOR材料)的物理和化学表征与储层的岩性、孔隙度、渗透率以及油、水和盐条件等特定信息相关联。我们在组合数据集上使用了机器学习,以便为注入流体的EOR组合提供建议。人工智能模型将测井资料中有关岩石、油和水条件的特定油藏数据输入转换为针对特定油藏的EOR候选材料推荐,以优化EOR效果。筛选标准是根据提高采收率的有效性和孔隙尺度上关键油藏参数的相似性进行排序的。在方法上,Naïve贝叶斯分类器在整个训练数据集上进行了10倍交叉验证,对所有实例进行了分类,准确率高达90%。为了与业内常用的提高采收率方法筛选标准进行比较,我们创建了一个测试数据集,其中包含基于代表每种提高采收率方法的平均参数值的实例。在这种情况下,我们的方法能够以接近100%的准确率对测试数据集进行分类。我们的方法可以为特定的储层条件提供提高采收率鸡尾酒的建议,包括化学成分的浓度,这些建议可以通过测井资料轻松获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-Based Screening of Enhanced Oil Recovery Materials for Reservoir-Specific Applications
The global average Recovery Factor (RF) in oil fields is only about 20-40%. A possible reason for such a low RF might be that Enhanced Oil Recovery (EOR) techniques are not yet broadly applied. This could be for economic reasons, concerns regarding the effectiveness of EOR and potential damage to the reservoir, or the lack of reservoir-specific recommendations. In this contribution, we introduce a methodology that selects EOR materials for specific reservoir conditions by using Artificial Intelligence (AI) methods. We investigate the consistency of the screening results with the results obtained by state-of-the-art techniques that are used to identify EOR methods only, i.e., without EOR material specificity. Our method correlates physical and chemical representations of injection fluids, including EOR materials, with reservoir-specific information on lithology, porosity, permeability, as well as oil, water and salt conditions. We have used machine learning on the combined data set in order to provide recommendation for EOR cocktail for injection fluids. Reservoir specific data input on rock, oil, and water conditions available in well logs is transformed by the AI model into a reservoir-specific recommendation of EOR candidate materials for optimized EOR effectiveness. The screening criteria are ranked based on EOR effectiveness and the similarity of key reservoir parameters at pore scale. Methodologically, a Naïve Bayes Classifier with 10-fold cross-validation over the full training data set classified all instances with an accuracy of up to 90%. In order to compare with the EOR method screening criteria typically used in the industry, we have created a test data set containing instances based on averaged parameter values for representing each EOR method. In this case, our method is capable of classifying the test data set with nearly 100% accuracy. Our methodology allows to produce recommendations for EOR cocktails, including concentrations of their chemical components, for specific reservoir conditions that are readily available through well logs.
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