Automating Well Log Correlation Workflow Using Soft Attention Convolutional Neural Networks

A. Abubakar, Mandar Kulkarni, A. Kaul
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Abstract

In the process of deriving the reservoir petrophysical properties of a basin, identifying the pay capability of wells by interpreting various geological formations is key. Currently, this process is facilitated and preceded by well log correlation, which involves petrophysicists and geologists examining multiple raw log measurements for the well in question, indicating geological markers of formation changes and correlating them with those of neighboring wells. As it may seem, this activity of picking markers of a well is performed manually and the process of ‘examining’ may be highly subjective, thus, prone to inconsistencies. In our work, we propose to automate the well correlation workflow by using a Soft- Attention Convolutional Neural Network to predict well markers. The machine learning algorithm is supervised by examples of manual marker picks and their corresponding occurrence in logs such as gamma-ray, resistivity and density. Our experiments have shown that, specifically, the attention mechanism allows the Convolutional Neural Network to look at relevant features or patterns in the log measurements that suggest a change in formation, making the machine learning model highly precise.
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利用软注意卷积神经网络自动化测井相关工作流程
在推导盆地储层岩石物性的过程中,通过解释不同的地质构造来确定井的产油能力是关键。目前,这一过程是通过测井对比来进行的,这需要岩石物理学家和地质学家对所研究的井进行多次原始测井测量,指示地层变化的地质标志,并将其与邻近井的地质标志进行对比。从表面上看,这种选择油井标记的活动是手动进行的,“检查”过程可能非常主观,因此容易出现不一致的情况。在我们的工作中,我们提出了使用软注意卷积神经网络来预测井标记的自动化井相关工作流程。机器学习算法通过人工标记选择的例子以及它们在日志中的对应出现情况(如伽马射线、电阻率和密度)进行监督。我们的实验表明,具体来说,注意机制允许卷积神经网络查看日志测量中的相关特征或模式,这些特征或模式表明信息发生了变化,从而使机器学习模型高度精确。
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