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安徽省庐江县朱岗铅锌矿床地质特征及找矿方向 被引量:18
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作者 蔡晓兵 汪晶 +2 位作者 岳运华 张舒 吴明安 《安徽地质》 2015年第3期161-166,共6页
庐江县朱岗铅锌矿床位于庐枞盆地北东部边缘,是近年实施安徽省地勘基金项目新发现的矿床,为一大型规模主要为铅锌矿共生少量铜矿的隐伏矿床,属火山、次火山气—液作用形成的斑岩型铅锌矿床。本文阐述了区域成矿地质背景和矿床地质特征,... 庐江县朱岗铅锌矿床位于庐枞盆地北东部边缘,是近年实施安徽省地勘基金项目新发现的矿床,为一大型规模主要为铅锌矿共生少量铜矿的隐伏矿床,属火山、次火山气—液作用形成的斑岩型铅锌矿床。本文阐述了区域成矿地质背景和矿床地质特征,分析了控矿条件及矿床成因,提出了找矿标志及找矿方向,不仅丰富了该区矿产勘查资料,也为今后寻找类似矿产提供借鉴意义。 展开更多
关键词 庐枞火山岩盆地 朱岗铅锌矿床 斑岩型铅锌矿床 地质特征 找矿方向
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Discrimination of Pb-Zn deposit types using sphalerite geochemistry: New insights from machine learning algorithm 被引量:7
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作者 Xiao-Ming Li Yi-Xin Zhang +4 位作者 Zhan-Ke Li Xin-Fu Zhao Ren-Guang Zuo Fan Xiao Yi Zheng 《Geoscience Frontiers》 SCIE CAS CSCD 2023年第4期200-219,共20页
Due to the combined influences such as ore-forming temperature,fluid and metal sources,sphalerite tends to incorporate diverse contents of trace elements during the formation of different types of Lead-zinc(Pb-Zn)depo... Due to the combined influences such as ore-forming temperature,fluid and metal sources,sphalerite tends to incorporate diverse contents of trace elements during the formation of different types of Lead-zinc(Pb-Zn)deposits.Therefore,trace elements in sphalerite have long been utilized to distinguish Pb-Zn deposit types.However,previous discriminant diagrams usually contain two or three dimensions,which are limited to revealing the complicated interrelations between trace elements of sphalerite and the types of Pb-Zn deposits.In this study,we aim to prove that the sphalerite trace elements can be used to classify the Pb-Zn deposit types and extract key factors from sphalerite trace elements that can dis-criminate Pb-Zn deposit types using machine learning algorithms.A dataset of nearly 3600 sphalerite spot analyses from 95 Pb-Zn deposits worldwide determined by LA-ICP-MS was compiled from peer-reviewed publications,containing 12 elements(Mn,Fe,Co,Cu,Ga,Ge,Ag,Cd,In,Sn,Sb,and Pb)from 5 types,including Sedimentary Exhalative(SEDEX),Mississippi Valley Type(MVT),Volcanic Massive Sulfide(VMS),skarn,and epithermal deposits.Random Forests(RF)is applied to the data processing and the results show that trace elements of sphalerite can successfully discriminate different types of Pb-Zn deposits except for VMS deposits,most of which are falsely distinguished as skarn and epithermal types.To further discriminate VMS deposits,future studies could focus on enlarging the capacity of VMS deposits in datasets and applying other geological factors along with sphalerite trace elements when con-structing the classification model.RF’s feature importance and permutation feature importance were adopted to evaluate the element significance for classification.Besides,a visualized tool,t-distributed stochastic neighbor embedding(t-SNE),was used to verify the results of both classification and evalua-tion.The results presented here show that Mn,Co,and Ge display significant impacts on classification of Pb-Zn deposits and In,Ga,Sn,Cd,and Fe also have relatively important effects compared to the rest ele-ments,confirming that Pb-Zn deposits discrimination is mainly controlled by multi-elements in spha-lerite.Our study hence shows that machine learning algorithm can provide new insights into conventional geochemical analyses,inspiring future research on constructing classification models of mineral deposits using mineral geochemistry data. 展开更多
关键词 DISCRIMINATION pb-zn deposit Sphalerite trace elements Machine learning algorithms feature analysis
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