Subsurface geometry of the Revell Batholith by constrained geophysical modelling, NW Ontario, Canada

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Applied Computing and Geosciences Pub Date : 2023-09-01 DOI:10.1016/j.acags.2023.100121
Martin Mushayandebvu , Aaron DesRoches , Martin Bates , Andy Parmenter , Derek Kouhi
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引用次数: 1

Abstract

The Revell batholith is located within the Western Wabigoon terrane of the Superior Province, Northwestern Ontario, Canada, and is a potential site for a deep geological repository (DGR). This batholith is considered to have favourable geoscientific characteristics for hosting a DGR, including a sufficient volume of relatively homogenous rock. The subsurface geometry of the batholith plays an important role in determining its volume, as well as assessing regional-scale hydraulics, rock mechanics, and glacial stress disturbances on the bedrock, which are other important features and processes that can impact the batholith over the timeframes of concern for long-term storage of used nuclear fuel. Subsurface geometry is complicated to unravel, and surface mapping alone is inadequate to obtain the information at depth. However, gravity, magnetic, or seismic data can be used to enhance understanding by approximating the geometry.

This study aims to refine the subsurface geometry and distribution of the Revell batholith from a constrained forward and inverse geophysical model, incorporating high-resolution geophysical data together with a compilation of historic and recent geological field data. The Revell batholith was previously cited as a flat-based pluton with a depth of 1.6 km, where our findings suggest the batholith is deeper than previously thought, with an uneven contact geometry at its base that extends slightly deeper than 3.5 km. Model uncertainties were assessed by varying probabilistic constraints on volume overlap/commonality and shape within GeoModeller™. Results indicate that overall batholith-greenstone contact is generally unchanged when the geological constraints are varied, providing a high degree of confidence that the Revell batholith has a sufficient volume of relatively homogeneous bedrock.

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基于约束地球物理模型的加拿大安大略省西北部Revell基的地下几何结构
Revell岩基位于加拿大安大略省西北部苏必利尔省的Western Wabigoon岩层内,是一个潜在的深部地质储藏库(DGR)的地点。该基岩被认为具有有利的地质科学特征,包括足够体积的相对均匀的岩石。基岩的地下几何形状在确定其体积以及评估区域尺度的水力学、岩石力学和基岩上的冰川应力扰动方面起着重要作用,这些是在长期储存乏燃料的时间框架内可能影响基岩的其他重要特征和过程。地下几何结构很复杂,地表测绘本身不足以获得深层信息。然而,重力、磁场或地震数据可以通过近似几何来增强理解。本研究旨在通过有限的正、逆地球物理模型,结合高分辨率地球物理数据以及历史和近期地质现场数据汇编,细化Revell基的地下几何形状和分布。雷维尔岩基以前被认为是一个深度为1.6公里的扁平岩体,我们的研究结果表明,岩基比以前认为的要深,其底部的接触几何形状不均匀,延伸深度略高于3.5公里。通过在GeoModeller™中对体积重叠/共性和形状的不同概率约束来评估模型的不确定性。结果表明,在不同的地质约束条件下,整体的岩基-绿岩接触总体上是不变的,这为Revell岩基具有足够体积的相对均质基岩提供了高度的信心。
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来源期刊
Applied Computing and Geosciences
Applied Computing and Geosciences Computer Science-General Computer Science
CiteScore
5.50
自引率
0.00%
发文量
23
审稿时长
5 weeks
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