基于深度神经网络的致密油藏测井数据渗透率预测

IF 2.2 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Journal of Applied Geophysics Pub Date : 2024-08-28 DOI:10.1016/j.jappgeo.2024.105501
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引用次数: 0

摘要

渗透率是评价储层性质的关键参数,准确预测渗透率是确定优质储层和建立地质模型的重要依据。然而,该地区储层的强烈异质性、复杂岩性和成岩作用给储层渗透率的准确评估带来了巨大挑战。近年来,由于数据科学和人工智能的发展,使用机器学习(ML)来解决地球物理测井及相关领域的问题受到了广泛关注。ML 是指任何预测算法或算法组合,它们可以从数据中学习并进行预测,而无需明确编码确定性模型。最直接的例子就是深度神经网络(DNN),它通过数据训练来最小化成本函数并进行预测。鄂尔多斯盆地长7系致密储层蕴藏着大量油气资源,最近已成为非常规油气勘探和开发的重点。在这项工作中,我们对鄂尔多斯盆地地区的致密储层进行了基于 DNN 的渗透率预测。从 19 口井的测井记录中,我们选择了 17 口井的有效数据点进行预处理后的 DNN 训练,并使用其余两口井进行测试。首先,我们将收集到的所有参数作为输入对 DNN 进行了训练,结果两口井的渗透率预测 R2 值分别为 0.64 和 0.72,表明拟合效果良好。然后,我们通过对输入参数和渗透率进行交叉图分析,优化了这些参数。使用相同的网络结构(所有超参数设置相同),我们再次对 DNN 进行了训练,以获得基于 DNN 的新模型。预测结果表明,去除与渗透率相关性较差的输入参数后,两口井的预测精度提高了,R2 值分别为 0.70 和 0.87。
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Permeability prediction using logging data from tight reservoirs based on deep neural networks

Permeability is a critical parameter for evaluating reservoir properties, and accurate prediction is an important basis for identifying high-quality reservoirs and geological modeling. However, the strong heterogeneity, complex lithology and diagenesis in the reservoirs of this region pose a major challenge for the accurate assessment of reservoir permeability. In recent years, the use of machine learning (ML) to solve problems in geophysical well logging and related fields has gained much attention thanks to advances in data science and artificial intelligence. ML is any predictive algorithm or combination of algorithms that learns from data and makes predictions without being explicitly coded with a deterministic model. The most immediate example is deep neural networks (DNN) that are trained with data to minimize a cost function and make predictions. The tight reservoirs in the Chang 7 Member of the Ordos Basin host significant oil and gas resources and have recently emerged as the main focus of unconventional oil and gas exploration and development. In this work, we performed DNN-based permeability prediction for the tight reservoirs in the Ordos Basin area. From 19 well logs, we selected effective data points from 17 wells for DNN training after preprocessing and used the remaining two wells for testing. First, we trained the DNN with all collected parameters as inputs, resulting in permeability prediction R2 values of 0.64 and 0.72 for the two wells, indicating a good fit. We then optimized the input parameters by performing a crossplot analysis between these parameters and the permeability. Using the same network structure (with all hyperparameters set the same), we trained the DNN again to obtain a new DNN-based model. The prediction results showed that removing input parameters with poor correlation to permeability improved the prediction accuracy with R2 values of 0.70 and 0.87 for the two wells.

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来源期刊
Journal of Applied Geophysics
Journal of Applied Geophysics 地学-地球科学综合
CiteScore
3.60
自引率
10.00%
发文量
274
审稿时长
4 months
期刊介绍: The Journal of Applied Geophysics with its key objective of responding to pertinent and timely needs, places particular emphasis on methodological developments and innovative applications of geophysical techniques for addressing environmental, engineering, and hydrological problems. Related topical research in exploration geophysics and in soil and rock physics is also covered by the Journal of Applied Geophysics.
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