首页> 外文期刊>Natural resources research >3D Mineral Prospectivity Mapping with Random Forests: A Case Study of Tongling, Anhui, China
【24h】

3D Mineral Prospectivity Mapping with Random Forests: A Case Study of Tongling, Anhui, China

机译:随机森林的3D矿物前瞻性映射 - 以铜陵,安徽,中国铜陵

获取原文
获取原文并翻译 | 示例
           

摘要

In the past few decades, a variety of data-driven predictive modeling techniques has led to a dramatic advancement in mineral prospectivity mapping (MPM). The random forests (RF) algorithm, a machine learning method, has been applied successfully to data-driven MPM. However, there are two main challenges that need to be examined. Firstly, whether RF modeling can be used for the 3D MPM. The voxel (in 3D) has replaced the pixel (in 2D) to represent geological features, and so the capability of the RF model should be tested. Secondly, when we conduct regional-scale MPM, building a suitable conceptual model has a significant influence on the results; however, mineral deposit models often focus on just deposit-scale features. These two challenges were encountered in the case study in the Tongling ore cluster, which is the most representative skarn ore-concentrated area in the Middle-Lower Yangtze River Valley Metallogenic Belt in Eastern China. Thus, 3D geological models of the Tongling ore cluster were constructed from the multiple geological datasets. Then, a conceptual model was translated into 3D predictor layers. Finally, we tested and compared the MPM capabilities of the RF and compared it with weights-of-evidence (WofE) modeling. The results indicate that RF modeling not only outperforms WofE modeling in 3D MPM, but it also has capability to assess the relative importance of different predictor layers. Further testing of this method is warranted in other areas with different scales or metallogenic model to investigate fully its efficiency.
机译:在过去的几十年中,各种数据驱动的预测性建模技术导致了矿物前瞻性映射(MPM)的戏剧性进步。随机森林(RF)算法,机器学习方法已成功应用于数据驱动的MPM。但是,需要检查两种主要挑战。首先,RF建模是否可以用于3D MPM。 Voxel(3D)已更换像素(2D)代表地质特征,因此应测试RF模型的能力。其次,当我们开展区域规模的MPM时,建立合适的概念模型对结果产生了重大影响;然而,矿床模型通常专注于存款规模特征。在铜陵矿石群体中遇到这两项挑战,这是中国东部中下长江谷成矿带中最具代表性的矽卡岩矿石集中区。因此,从多个地质数据集构成铜隆矿簇的3D地质模型。然后,将概念模型翻译成3D预测器层。最后,我们测试并比较了RF的MPM能力,并将其与证据(WOFE)建模进行了比较。结果表明,RF模型不仅优于3D MPM的WOFE建模,而且还具有评估不同预测器层的相对重要性的能力。在具有不同尺度或成矿模型的其他区域中有权进行此方法的进一步测试,以完全效率调查。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号