3D mineral prospectivity modeling using multi-scale 3D convolution neural network and spatial attention approaches

Xiaohui Li, Yuheng Chen, Feng Yuan, Simon M. Jowitt, Mingming Zhang, Can Ge, Zhiqiang Wang, Yufeng Deng
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Abstract

A significant proportion of recent mineral exploration has increasingly focused on the targeting of deep-seated orebodies. Mineral prospectivity modeling is one of the more important approaches that facilitates exploration targeting and the mitigation of risks associated with mineral exploration, particularly under cover. Recent advances in 3D mineral prospectivity modeling enable the effective extraction of predictive information from three-dimensional geological models, enabling more accurate exploration targeting of deep-seated orebodies. These advancements have synergized with deep learning approaches to improve the efficiency of mineral exploration based on nonlinear and multi-layer sensing attributes, effectively enabling the identification and extraction of key relationships between 3D predictive maps and mineralization. The main deep learning method used for 3D mineral prospectivity modeling is convolutional neural network (CNN) modeling. However, this research typically does not consider the multiscale features of geological structures, meaning further improvements can be made to this modeling approach. This paper introduces a multi-scale 3D convolutional neural network model (3D CNN) incorporating a spatial attention mechanism and an Inception module (MSAM-CNN) for 3D mineral prospectivity modeling. By integrating Inception modules and spatial attention mechanisms, the network's capability to identify multi-scale geological features and delineate key predictive areas is significantly enhanced compared to typical CNN approaches. This new approach provides further improvement in the accuracy and generalization capability of 3D mineral prospectivity modeling. To evaluate the effectiveness of this model, we undertook 3D mineral prospectivity modeling within the area of the Baixiangshan iron deposit, in the Ningwu Basin of the Middle-Lower Yangtze River Metallogenic Belt, China. The results show that the multi-scale 3D convolutional neural network model is remarkably robust and has good generalization capabilities. The approach can also can effectively delineate targets within the deep and peripheral areas of the deposit, providing targets for future exploration. The addition, performance indicators, ROC curve, and Capture-Efficiency curve generated during this modeling consistently demonstrate that the MSAM-CNN model outperforms Inception-enhanced CNN (M-CNN), CNN, Random Forest (RF), and Support Vector Machine (SVM) models. All of this indicates that MSAM-CNN approaches can effectively extract 3D spatial features within 3D predictive maps during 3D mineral prospectivity modeling better than other approaches that are commonly used, indicating that thius approach represents a promising tool for the accurate and precise identification of targets during future exploration for deep-seated mineralization.

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利用多尺度三维卷积神经网络和空间注意力方法建立三维矿产远景模型
近期的矿产勘探有很大一部分越来越侧重于深层矿体的目标定位。矿产远景建模是促进勘探目标确定和降低矿产勘探相关风险的重要方法之一,特别是在覆盖层下。三维矿产远景建模的最新进展能够从三维地质模型中有效提取预测信息,从而更准确地确定深层矿体的勘探目标。这些进步与深度学习方法相辅相成,提高了基于非线性和多层传感属性的矿产勘探效率,有效地识别和提取了三维预测图与矿化之间的关键关系。用于三维找矿建模的主要深度学习方法是卷积神经网络(CNN)建模。然而,这种研究通常不考虑地质结构的多尺度特征,这意味着可以进一步改进这种建模方法。本文介绍了一种多尺度三维卷积神经网络模型(三维 CNN),该模型结合了空间注意力机制和 Inception 模块(MSAM-CNN),用于三维找矿建模。与典型的 CNN 方法相比,通过整合 Inception 模块和空间注意机制,该网络识别多尺度地质特征和划分关键预测区域的能力得到了显著增强。这种新方法进一步提高了三维找矿建模的准确性和概括能力。为了评估该模型的有效性,我们在中国长江中下游成矿带宁武盆地白象山铁矿床区域进行了三维找矿建模。结果表明,多尺度三维卷积神经网络模型具有显著的鲁棒性和良好的泛化能力。该方法还能有效划分矿床深部和外围区域的目标,为未来勘探提供目标。此外,建模过程中生成的性能指标、ROC 曲线和捕获效率曲线一致表明,MSAM-CNN 模型优于初始增强型 CNN(M-CNN)、CNN、随机森林(RF)和支持向量机(SVM)模型。所有这些都表明,MSAM-CNN 方法能够在三维矿产远景建模过程中有效提取三维预测图中的三维空间特征,优于其他常用方法,这表明 MSAM-CNN 方法是未来深层矿化勘探过程中准确和精确识别目标的一种有前途的工具。
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