蔡惠慧, 徐永洋, 李孜轩, 曹豪豪, 冯雅兴, 陈思琼, 李永胜. 2019: 基于卷积神经网络模型划分成矿远景区——以甘肃大桥地区金多金属矿田为例. 地质通报, 38(12): 1999-2009.
    引用本文: 蔡惠慧, 徐永洋, 李孜轩, 曹豪豪, 冯雅兴, 陈思琼, 李永胜. 2019: 基于卷积神经网络模型划分成矿远景区——以甘肃大桥地区金多金属矿田为例. 地质通报, 38(12): 1999-2009.
    CAI Huihui, XU Yongyang, LI Zixuan, CAO Haohao, FENG Yaxing, CHEN Siqiong, LI Yongsheng. 2019: The division of metallogenic prospective areas based on convolutional neural network model: A case study of the Daqiao gold polymetallic deposit. Geological Bulletin of China, 38(12): 1999-2009.
    Citation: CAI Huihui, XU Yongyang, LI Zixuan, CAO Haohao, FENG Yaxing, CHEN Siqiong, LI Yongsheng. 2019: The division of metallogenic prospective areas based on convolutional neural network model: A case study of the Daqiao gold polymetallic deposit. Geological Bulletin of China, 38(12): 1999-2009.

    基于卷积神经网络模型划分成矿远景区——以甘肃大桥地区金多金属矿田为例

    The division of metallogenic prospective areas based on convolutional neural network model: A case study of the Daqiao gold polymetallic deposit

    • 摘要: 大数据和高性能计算使得地质学可能突破种种主客观因素的限制,从传统的定性描述和不确定性作为特点转变为更全面的定量化发展阶段,即地质学更加注重通过挖掘复杂的多元地学数据间的关联关系来探究地质成因过程。为了厘清研究区多元化地质数据并划分成矿远景区,结合现代信息化新方法新技术,智能高效地帮助地学工作者提供辅助决策依据。以甘肃省大桥金矿为研究区,提出了利用一维卷积神经网络替代传统的人工计算,通过对研究区金多金属矿的地球化学元素及地球物理元素数据进行训练,挖掘研究区综合成矿信息,依据训练结果划分出4类成矿远景区。研究结果表明,地质成矿过程复杂,每一个成矿预测要素在地质成矿过程中均发挥重要的作用。在大比例尺度上,应用深度学习网络模型划分成矿远景区能客观地反映多元化地质数据本身的非线性特征,识别地质要素的空间特征,深层次提取和挖掘成矿异常信息,实现矿产资源智能化预测评价。

       

      Abstract: Big data and high performance computing make it possible for geology to break through the limitations of various subjective and objective factors and transform from the traditional qualitative description and uncertainty to a more comprehensive quantitative development stage, that is, geology pays more attention to exploring the geological genesis process by mining the correlation between complex and multiple geoscience data. In order to clarify the diversity of geological data in the study area and divide the metallogenic prospective area, the authors aimed to help the geoscientists to make decisions intelligently and efficiently by combining the new methods and technologies of modern informatization. With the Daqiao gold deposit in Gansu Province as the study area, the authors proposed to use one-dimensional convolutional neural network instead of traditional manual calculation and, through training the geochemical and geophysical element data in the study area, excavated the comprehensive metallogenic information in the study area, and then recognized four types of metallogenic prospective areas based on the training results. The results show that the geological mineralization process is complex, and each element of metallogenic prediction plays an important role in the geological mineralization process. On a large scale, the deep learning network model can objectively reflect the nonlinear characteristics of diversified geological data, identify the spatial characteristics of geological elements, extract and excavate the information of mineralization anomalies, and realize the intelligent prediction and evaluation of mineral resources.

       

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