SmartTensors:用于地球科学应用的无监督和物理信息机器学习框架

B. Ahmmed, V. Vesselinov, M. Mudunuru
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摘要

SmartTensors (https://github.com/SmartTensors)是一个用于地球科学应用的无监督和物理信息机器学习的新框架。SmartTensors AI平台中的方法是使用高级矩阵/张量分解来开发的,该分解受到强制鲁棒性和可解释性(例如,非负性,稀疏性,物理和数学约束等)的惩罚约束。该框架已被用于分析与一系列广泛问题相关的各种数据集:从COVID-19到野火和气候。在这里,我们将重点分析美国大盆地的地热前景。该盆地面积广阔,尚未被彻底勘探以发现新的地热资源。现有的区域地球化学数据有望提供关于盆地地热储层性质的关键信息,包括温度、流体/热流、边界条件和空间范围。地球化学数据也可能包括隐藏的(潜在的)信息,这些信息是地热远景的代表。我们处理了在14341个地点观测到的18个地球化学属性的稀疏地球化学数据集。使用我们的地热勘探GeoThermalCloud工具箱(https://github.com/SmartTensors/GeoThermalCloud.jl)对数据进行分析,该工具箱也是SmartTensors框架的一部分。使用非负矩阵分解和定制k-均值聚类(NMFk)的无监督机器学习在SmartTensors中实现,分别识别了代表低、中、高温储层的三个隐藏地热特征(图)。NMFk还评估了在研究区域内出现这类资源的可能性。NMFk还在研究域上将属性从稀疏重构为连续。未来的工作将在机器学习分析中加入其他区域和站点尺度的数据集,包括地质、地球物理和地热属性。©2022勘探地球物理学家协会和美国石油地质学家协会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmartTensors: Unsupervised and physics-informed machine learning framework for the geoscience applications
SmartTensors (https://github.com/SmartTensors) is a novel framework for unsupervised and physics-informed machine learning for geoscience applications. The methods in SmartTensors AI platform are developed using advanced matrix/tensor factorization constrained by penalties enforcing robustness and interpretability (e.g., nonnegativity, sparsity, physics, and mathematical constraints;etc.). This framework has been applied to analyze diverse datasets related to a wide range of problems: from COVID-19 to wildfires and climate. Here, we will focus on the analysis of geothermal prospectivity of the Great Basin, U.S. The basin covers a vast area that is yet to be thoroughly explored to discover new geothermal resources. The available regional geochemical data are expected to provide critical information about the geothermal reservoir properties in the basin, including temperature, fluid/heat flow, boundary conditions, and spatial extent. The geochemical data may also include hidden (latent) information that is a proxy for geothermal prospectivity. We processed the sparse geochemical dataset of 18 geochemical attributes observed at 14,341 locations. The data are analyzed using our GeoThermalCloud toolbox for geothermal exploration (https://github.com/SmartTensors/GeoThermalCloud.jl) whichis also a part of the SmartTensors framework. An unsupervised machine learning using non-negative matrix factorization with customized k-means clustering (NMFk) as implemented in SmartTensors identified three hidden geothermal signatures representing low-, medium-, and high-temperature reservoirs, respectively (Fig). NMFk also evaluated the probability of occurrence of these types of resources through the studied region. NMFk also reconstructed attributes from sparse into continuous over the study domain. Future work will add in the ML analyses other regional- and site-scale datasets including geological, geophysical, and geothermal attributes. © 2022 Society of Exploration Geophysicists and the American Association of Petroleum Geologists.
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