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A multi-view ensemble machine learning approach for 3D modeling using geological and geophysical data

Deping Chu, Jinming Fu, Bo Wan, Hong Li, Lujiang Li, Fang Fang, Shengwen Li, Shengyong Pan, Shunping Zhou

2024International Journal of Geographical Information Systems13 citationsDOI

Abstract

Geophysical data are often integrated into geological data for 3D modeling of underground spaces. However, the existing single-view approach means it is difficult to adequately fuse the valid information between the two types of data, and the complexity of lithological decoding and classification is high. To address this issue, a multi-view ensemble machine learning (ML) framework is proposed. Initially, the original dataset of lithology prediction is constructed by aligning geological and geophysical data with different spatial scales. Next, the dataset is divided into three datasets of structural strength, density, and moisture content according to the lithology properties of the geophysical data. The proposed framework is then used to capture the lithologic characteristics under different views to achieve the prediction of lithologic labels. In this process, a self-attentive mechanism is used to adaptively fuse the valid information under each view. To validate the proposed framework, it is applied to a project in Jiaxing, Zhejiang Province, China. Compared with existing ML methods, the proposed multi-view ensemble ML framework improves modeling accuracy and constructs models with low uncertainty. The framework can be extended to other multi-source data fusion tasks across geoscience domains.

Topics & Concepts

GeophysicsData miningComputer scienceArtificial intelligenceMachine learningData scienceGeologyGeological Modeling and AnalysisImage Processing and 3D ReconstructionSeismic Imaging and Inversion Techniques
A multi-view ensemble machine learning approach for 3D modeling using geological and geophysical data | Litcius