ISSN 1009-6248CN 61-1149/P 双月刊

主管单位:中国地质调查局

主办单位:中国地质调查局西安地质调查中心
中国地质学会

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    林俞亨,王立立,欧阳永棚,等. 基于浓度–面积分形模型和模糊证据权的铜矿资源潜力评价:以江西九瑞地区为例[J]. 西北地质,2024,57(1):165−178. doi: 10.12401/j.nwg.2023199
    引用本文: 林俞亨,王立立,欧阳永棚,等. 基于浓度–面积分形模型和模糊证据权的铜矿资源潜力评价:以江西九瑞地区为例[J]. 西北地质,2024,57(1):165−178. doi: 10.12401/j.nwg.2023199
    LIN Yuheng,WANG Lili,OUYANG Yongpeng,et al. Evaluation of Copper Mineral Resource Potential Using Concentration–Area Fractal Model and Fuzzy Evidence Weighting: A Case Study of the Jiurui Region in Jiangxi[J]. Northwestern Geology,2024,57(1):165−178. doi: 10.12401/j.nwg.2023199
    Citation: LIN Yuheng,WANG Lili,OUYANG Yongpeng,et al. Evaluation of Copper Mineral Resource Potential Using Concentration–Area Fractal Model and Fuzzy Evidence Weighting: A Case Study of the Jiurui Region in Jiangxi[J]. Northwestern Geology,2024,57(1):165−178. doi: 10.12401/j.nwg.2023199

    基于浓度–面积分形模型和模糊证据权的铜矿资源潜力评价:以江西九瑞地区为例

    Evaluation of Copper Mineral Resource Potential Using Concentration–Area Fractal Model and Fuzzy Evidence Weighting: A Case Study of the Jiurui Region in Jiangxi

    • 摘要: 中国江西省的九瑞地区是长江中下游成矿带中最重要的铜矿产地之一,其中花岗闪长斑岩与铜成矿关系密切。基于水系沉积物与矿化相关的信息,采用因子分析(FA)、浓度–面积分形法(C–A)和模糊证据权方法(FWofE)相结合建立成矿潜力预测模型。使用因子分析处理包含32个元素的255份水系沉积物样本数据,找到能够指示铜矿化的组合元素(即主因子)。采用多重分形反距离加权插值法(MIDW)创建主因子得分栅格图并用C–A分形模型提取与铜矿化相关的地化异常。将得到和铜矿化相关的地球化学异常图与地质、遥感解译数据相结合,应用模糊证据权方法建立预测模型。结果表明:已知铜矿床位于圈定预测概率高值区,且受花岗闪长斑岩和断裂的分布共同控制;除已知铜矿床区域外,圈定的3个一级远景区域内也具有较高的概率,值得进一步铜勘查找矿工作的进行。

       

      Abstract: The Jiurui region in Jiangxi Province, China, is one of the most significant copper mining areas in the middle and lower reaches of the Yangtze River mineralization belt, with a close relationship between granodiorite porphyry and copper mineralization. In this study, a predictive model for mineralization potential was established by combining factor analysis (FA), concentration-area (C-A) fractal method, and fuzzy weight of evidence (FWofE) based on information related to stream sediment and mineralization. ϕfactor analysis was applied to a dataset of 255 stream sediment samples containing 32 elements to identify combinations of elements (principal factors) indicative of copper mineralization. κ the principal factor scores were interpolated using the multiple inverse distance weighted (MIDW) method to create a raster map, and the C-A fractal model was employed to extract geochemical anomalies associated with copper mineralization. λ the geochemical anomaly map related to copper mineralization was integrated with geological and remote sensing interpretation data, and a predictive model was established using the fuzzy weight of evidence method. The results indicated that: known copper deposits are located within high-probability zones defined by the model and are influenced by the distribution of granodiorite porphyry and faults; in addition to the known copper deposit areas, three primary prospective areas identified within the defined regions also exhibit a high probability, meriting further exploration efforts for copper prospecting.

       

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