Enhancing knowledge discovery from unstructured data using a deep learning approach to support subsurface modeling predictions

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Brendan Hoover, Dakota Zaengle, M. Mark-Moser, Patrick C. Wingo, Anuj Suhag, Kelly Rose
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引用次数: 0

Abstract

Subsurface interpretations and models rely on knowledge from subject matter experts who utilize unstructured information from images, maps, cross sections, and other products to provide context to measured data (e. g., cores, well logs, seismic surveys). To enhance such knowledge discovery, we advanced the National Energy Technology Laboratory's (NETL) Subsurface Trend Analysis (STA) workflow with an artificial intelligence (AI) deep learning approach for image embedding. NETL's STA method offers a validated science-based approach of combining geologic systems knowledge, statistical modeling, and datasets to improve predictions of subsurface properties. The STA image embedding tool quickly extracts images from unstructured knowledge products like publications, maps, websites, and presentations; categorically labels the images; and creates a repository for geologic domain postulation. Via a case study on geographic and subsurface literature of the Gulf of Mexico (GOM), results show the STA image embedding tool extracts images and correctly labels them with ~90 to ~95% accuracy.
利用深度学习方法加强非结构化数据的知识发现,为地下建模预测提供支持
地下解释和模型依赖于主题专家的知识,他们利用图像、地图、横截面和其他产品中的非结构化信息为测量数据(如岩心、测井记录、地震勘探)提供背景信息。为了加强这种知识发现,我们将国家能源技术实验室(NETL)的地下趋势分析(STA)工作流程与人工智能(AI)深度学习方法相结合,用于图像嵌入。NETL 的 STA 方法提供了一种经过验证的基于科学的方法,将地质系统知识、统计建模和数据集结合起来,以改进对地下属性的预测。STA 图像嵌入工具可从出版物、地图、网站和演示文稿等非结构化知识产品中快速提取图像,对图像进行分类标记,并创建一个地质领域推测库。通过对墨西哥湾(GOM)的地理和地下文献进行案例研究,结果表明 STA 图像嵌入工具提取图像并正确标注的准确率在 90% 到 95% 之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
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