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基于卷积神经网络的胶东夏甸金矿床三维智能找矿预测

3D intelligent prospecting prediction of Xiadian Gold Deposit, Jiaodong Peninsula based on convolutional neural networks

  • 摘要: 三维找矿预测是目前矿山深边部找矿的重要手段,控矿结构面的三维特征对三维找矿预测的可靠性至关重要。传统方法依赖人为提取形态指标(如距离、曲率、坡度等),其主观性强且难以完备地反映复杂的三维空间控矿规律。为解决该问题,以夏甸金矿床为研究对象,提出了一种基于拉普拉斯−贝尔特拉米特征描述符与卷积神经网络相结合的三维智能找矿预测模型。该方法利用拉普拉斯−贝尔特拉米特征客观、定量地表征断裂及矿体的三维形态,通过特征投影技术将无结构的三维几何信息转换为二维多通道图像,并输入至CNN模型中进行深度学习与自适应特征融合。研究结果表明,该模型能够有效识别深部隐伏矿化空间,在夏甸金矿床深部圈定了4处具有高成矿潜力的找矿靶区,为下一步找矿工作提供了科学依据。

     

    Abstract: 3D prospecting prediction has become an indispensable technique for deep and peripheral ore exploration in current mines, where the reliability of such predictions is heavily dependent on the 3D characterization of ore-controlling structural surfaces. Traditional methods rely on manual extraction of morphological indicators (e.g., distance, curvature, and slope), which are highly subjective and difficult to fully characterize complex 3D spatial ore-controlling patterns. To address this issue, by taking the Xiadian Gold Deposit as the research object, a 3D intelligent prospecting prediction model based on the combination of Laplace−Beltrami feature descriptors and convolutional neural networks was proposed. This method leveraged the Laplace−Beltrami features to objectively and quantitatively characterize the 3D geometry of faults and orebodies. Unstructured 3D geometric information was converted into 2D multi-channel images using the feature projection method, which were then input into the CNN model for deep learning and adaptive feature fusion. The results demonstrate that the proposed model can effectively identify deep concealed mineralization spaces. Four high-potential prospecting targets have been delineated in the deep part of the Xiadian Gold Deposit, providing a scientific basis for the subsequent ore exploration work of the mine.

     

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