基于随机森林算法的找矿预测——以冈底斯成矿带西段斑岩—浅成低温热液型铜多金属矿为例
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国家重点研发计划(2021YFC2901803,2021YFC2901903)、国家自然科学基金(91955208,92055314,42202105)、国际地球科学计划(IGCP741),中国地质调查项目(DD20221776,DD20230093,DD20220971,DD2023247,DD20220965)及西南地质科技创新中心青藏高原国际大科学计划和刘宝珺院士基金联合资助。


Mineral search prediction based on Random Forest algorithm——A case study on porphyry-epithermal copper polymetallic deposits in the western Gangdise meatallogenic belt
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    摘要:

    【研究目的】 矿产资源定位预测的核心是矿产分布与控矿地质因素之间的非线性关系,大数据及机器学习技术在解决这类复杂非线性关系问题方面已经体现出巨大的优势。小比例尺地物化遥信息的预测数据集具有高维和极不平衡的特点,依靠传统的逻辑假设或统计分析很难适应。本文尝试将随机森林算法引入到小比例尺找矿预测领域来开展研究,探索大数据及机器学习技术在小比例尺找矿预测中的应用。【研究方法】 近年来,冈底斯成矿带西段新发现了鲁尔玛、拔拉扎、达若、红山和罗布真等多个斑岩型、浅成低温热液型铜金多金属矿床(点),证实冈底斯西段具有寻找斑岩型、浅成低温热液型铜金多金属矿的巨大潜力。本文以新发现的典型矿床为研究对象,在总结冈底斯成矿带西段斑岩铜矿成因模式的基础上,结合物化遥综合信息,构建地物化遥综合找矿模型,最后利用随机森林法开展研究区找矿预测。【研究结果】 本文结合典型矿床与区域地质、地球物理、地球化学及遥感综合信息,利用随机森林法在冈底斯成矿带西段开展斑岩型、浅成低温热液型铜金多金属矿的找矿预测,圈定出斑岩—浅成低温热液型铜多金属矿找矿远景区11个(包含Ⅰ级远景区2个,Ⅱ级远景区3个,Ⅲ级远景区6个),其中罗布真、打加错、达若、拔拉杂、尕尔穷和布东拉等远景区找矿潜力较大。【结论】 基于大数据机器学习的欠采样随机森林预测模型,有望适应综合地物化遥信息的预测数据高维和极不平衡特点,为成矿带尺度区域找矿预测提供方向。本次工作确定的远景区有望发现新的矿床(点),为冈底斯成矿带找矿勘查打开了新的视野。

    Abstract:

    The paper is the result of geological survey engineering.
    [Objective] The core problem of prospecting prediction is the nonlinear relationship between mineral distribution and mineral-controlling geological factors. Big data and machine learning technology have shown great advantages in solving such complex nonlinear relationship problems. The prediction dataset of small-scale geochemical remote information has the characteristics of high and extremely unbalanced, which is difficult to adapt by traditional logical assumptions or statistical analysis. Therefore, this paper attempts to introduce the random forest algorithm into the field of small-scale prospecting to explore the application of big data and machine learning technology in small-scale mineralization prediction.
    [Methods] In recent years, several Porphyry-epithermal copper polymetallic deposits (such as Luerma, Bolazha, Daruo, Hongshan, and Luobuzhen, etc.) have been discovered in the western Gangdise mineralized belt, which proved that the western Gangdise belt has great prospecting potential for porphyry and epithermal Cu-Au polymetallic deposits. Combined with the comprehensive information of typical deposits, regional geology, geophysics, geochemistry, and remote sensing, this paper uses the random forest method to carry out the prospecting prediction of porphyry and epithermal Cu-Au polymetallic deposits in the western Gangdise belt.
    [Results] This work has delineated 11 porphyry copper polymetallic prospect areas (including 2 levels I prospect areas, 3 level II prospect areas, and 6 level III prospect areas), of which Luobuzhen, Dajiacuo, Daruo, Balaza, Gaerqiong, and Budongla have great prospecting potential and are expected to find new ore deposits or points.
    [Conclusions] The under-sampling random forest prediction model based on big data machine learning is expected to adapt to the high-dimensional and extremely unbalanced characteristics of prediction data of comprehensive geophysical and geochemical remote information and provide direction for regional prospecting prediction at the scale of the metallogenic belt. The prospective area determined in this work is expected to find new deposits (points), which opens a new vision for ore prospecting and exploration in the Gangdise metallogenic belt.

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欧阳渊,刘洪,李光明,马东方,张林奎,黄瀚霄,张景华,张腾蛟,柳潇,赵银兵,李富. 基于随机森林算法的找矿预测——以冈底斯成矿带西段斑岩—浅成低温热液型铜多金属矿为例[J]. 中国地质, 2023, 50(2): 303-330.
OUYANG Yuan, LIU Hong, LI Guangming, MA Dongfang, ZHANG Linkui, HUANG Hanxiao, ZHANG Jinghua, ZHANG Tengjiao, LIU Xiao, ZHAO Yinbing, LI Fu. Mineral search prediction based on Random Forest algorithm——A case study on porphyry-epithermal copper polymetallic deposits in the western Gangdise meatallogenic belt[J]. Geology in China, 2023, 50(2): 303-330(in Chinese with English abstract).

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  • 收稿日期:2020-10-26
  • 最后修改日期:2022-01-16
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  • 在线发布日期: 2023-04-28
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