FlexLogNet:一种基于深度学习的灵活的井式日志补全方法,能自适应地利用现有信息预测缺失信息

IF 4.2 2区 地球科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Chuanli Dai, Xu Si, Xinming Wu
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引用次数: 0

摘要

测井记录是了解地下岩层特征和勘探石油资源的重要工具。然而,由于成本限制、仪器故障或其他因素,经常会随机丢失测井记录。目前已开发出许多补全缺失测井曲线的方法,但这些方法都是基于固定类型的已知测井曲线输入来预测特定类型的缺失测井曲线。这种固定的输入输出模式严重限制了这些方法在实际数据中的应用,因为在实际数据中,已知和缺失的井记录类型往往是不同的。为解决这一问题,我们提出了一种混合深度学习方法,该方法由异构图神经网络(HGNN)和全连接网络(FCN)两部分组成,可实现多种类型井志之间的相互预测。它可以自适应地使用所有已知的测井记录来预测任何缺失的测井记录,实现了非常灵活实用的测井记录补全功能,即用现有的测井记录补全缺失的测井记录。具体来说,HGNN 头会推断多个测井记录之间的相互关系,预测包含详细信息的归一化测井记录,而这是通过使用多个独立内核来提取和聚合多个测井记录的特征来实现的。FCN 头估算预测测井的全局统计数据,包括平均值和标准偏差,用于对 HGNN 头估算的测井进行去规范化。HGNN 和 FCN 头同时通过混合损失函数进行训练,以确保其预测的一致性。此外,我们还提出了一种自适应训练策略,可利用所有测井记录,包括那些缺失的测井段。我们使用以下四种测井记录演示了模型的能力:伽马射线(GR)、体积密度(RHOB)、中子孔隙度(NPHI)和声波压缩波(DTC)。理论上,在其他测井曲线上训练的模型也可以相互预测。我们的方法在挪威附近北海近海油田获得的数据集上产生了较高的皮尔逊相关系数和较小的均方根误差,证明了我们提出的技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FlexLogNet: A flexible deep learning-based well-log completion method of adaptively using what you have to predict what you are missing

Well logs are essential tools for understanding the characteristics of subsurface formations and exploring petroleum resources. However, well logs are often missing randomly due to cost constraints, instrument failures, or other factors. Many methods have been developed for completing missing well logs, but these methods are all based on fixed types of known well-log inputs to predict specific types of missing logs. This fixed input–output mode severely limits the application of these methods in actual data, where the known and missing well-log types are often varying. To address this problem, we propose a hybrid deep learning method with two heads of heterogeneous graph neural network (HGNN) and fully connected network (FCN) to achieve mutual prediction among multiple types of well logs. It can adaptively use all known well logs to predict any missing well logs, achieving a very flexible and practical well log completion function of using what you have to complete what you are missing. Specifically, the HGNN head infers the inter-relationships among multiple well logs to predict normalized logs that contain detailed information, which achieved by using multiple independent kernels to extracting and aggregating the features of the multiple logs. The FCN head estimates the global statistics of the predicted logs, including means and standard deviations, for de-normalizing the well logs estimated by the HGNN head. Both the HGNN and FCN heads are trained simultaneously by a hybrid loss function to ensure the consistency of their predictions. Furthermore, we present an adaptive training strategy that leverages all well logs, including those with missing segments. We demonstrate the capability of our model using four well logs: gamma ray (GR), bulk density (RHOB), neutron porosity (NPHI), and compressional waves sonic (DTC). Theoretically, the model trained on other logs can also predict each other. Our approach yields high Pearson correlation coefficients and small root mean square error on a dataset obtained from an offshore North Sea field near Norway, demonstrating the efficacy of our proposed technique.

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来源期刊
Computers & Geosciences
Computers & Geosciences 地学-地球科学综合
CiteScore
9.30
自引率
6.80%
发文量
164
审稿时长
3.4 months
期刊介绍: Computers & Geosciences publishes high impact, original research at the interface between Computer Sciences and Geosciences. Publications should apply modern computer science paradigms, whether computational or informatics-based, to address problems in the geosciences.
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