Predicting Porosity and Water Saturation from Well-Log Data Using Probabilistic Multi-Task Neural Network with Normalizing Flows

Jinwoo Lee, M. Kwon, Youngjun Hong
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引用次数: 1

Abstract

In the oil and gas exploration process, understanding the hydrocarbon distribution of a reservoir is important. Well-log and core sample data such as porosity and water saturation are widely used for this purpose. With porosity and water saturation, we can calculate hydrocarbon volume more accurately than using well-log solely. However, as obtaining core sample data is expensive and time-consuming, predicting it with well-log can be a valuable solution for early-stage exploration since acquiring well-log is relatively economic and swift. Recently, numerous studies applied machine learning algorithms to predict core data from well-log. To the best of our knowledge, most works provide point estimation without probabilistic distribution modeling. In this paper, we developed a probabilistic deep neural network to provide uncertainty via confidence interval. Besides, we employed normalizing flows and multi-task learning to improve prediction accuracy. With this approach, we present the model's uncertainty that can be reliable information for decision making. Furthermore, we demonstrate our model outperforms other supervised machine learning algorithms regards to prediction accuracy.
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利用归一化流概率多任务神经网络从测井数据预测孔隙度和含水饱和度
在油气勘探过程中,了解储层的油气分布是非常重要的。孔隙度和含水饱和度等测井和岩心样品数据被广泛用于此目的。结合孔隙度和含水饱和度,可以比单纯利用测井资料更准确地计算出油气体积。然而,由于获取岩心样本数据昂贵且耗时,因此利用测井数据进行预测对于早期勘探来说是一种有价值的解决方案,因为获取测井数据相对经济且快速。最近,许多研究应用机器学习算法从测井中预测岩心数据。据我们所知,大多数工作提供点估计没有概率分布建模。在本文中,我们开发了一个概率深度神经网络,通过置信区间来提供不确定性。此外,我们采用归一化流和多任务学习来提高预测精度。通过这种方法,我们提出了模型的不确定性,可以作为决策的可靠信息。此外,我们证明了我们的模型在预测精度方面优于其他监督机器学习算法。
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