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首页> 外文期刊>Ore Geology Reviews: Journal for Comprehensive Studies of Ore Genesis and Ore Exploration >Stream sediment geochemical data analysis for district-scale mineral exploration targeting: Measuring the performance of the spatial U-statistic and C-A fractal modeling
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Stream sediment geochemical data analysis for district-scale mineral exploration targeting: Measuring the performance of the spatial U-statistic and C-A fractal modeling

机译:地区规模矿物勘探靶向流域地球化学数据分析:测量空间U形统计和C-A分形建模的性能

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摘要

Recognition of mineralization-related geochemical footprints and modeling their multi-element dispersion patterns are important aspects to consider when "vectoring" toward undiscovered ore deposits. The collection, analysis, and interpretation of stream sediment geochemical data together make an exploration method that has proven to be successful at the district scale mineral exploration targeting. Identifying the possible sources of stream sediment geochemical anomalies and mapping evidence (i.e., footprints) of the underlying ore-forming processes, however, are not trivial tasks. This is because stream sediment samples represent transported material reflecting the entire geology upstream from the sample locations. Furthermore, indicator element distribution patterns are commonly strongly affected by local factors such as regolith, topographic gradient, vegetation density, and/or climate. Therefore, there is a need for finding a better geochemical anomaly separation method regarding the nature of geochemical data obtained from the area sampled. The main objectives of this study were (1) evaluating and comparing the spatial U-statistic and concentration-area fractal modeling methods of anomaly identification, both amenable to spatial analysis, for recognizing geochemical footprints of porphyry copper mineralization, and (2) measuring their performance in the context of district-scale exploration targeting in an area located in southeast Iran. Subsequently, the methods were first evaluated on a dataset of element contents to decompose anomalous populations. Finally, the geochemical model that proved more efficient with respect to predicting the known mineral deposits was integrated with additional evidence maps to delineate exploration targets. Our evaluation of the resulting geochemical targeting model demonstrated that the targets derived from this method are robust and worthy of follow-up exploration.
机译:识别与矿化相关的地球化学占地面积和模型它们的多元素分散模式是在未被发现的矿石沉积物“载体”时考虑的重要方面。流沉积物地球化学数据的收集,分析和解释在一起进行了探索方法,已被证明在地区规模矿物勘探靶向方面取得成功。然而,确定潜在的矿石形成过程的流沉积物地球化学异常和绘图证据(即,足迹)的可能源不是微不足道的任务。这是因为流沉积物样本代表了反射样品位置上游的整个地质的运输材料。此外,指示元素分布模式通常受到诸如诸如诸如石油,地形梯度,植被密度和/或气候的局部因素的强烈影响。因此,需要寻找关于从采样区域获得的地球化学数据的性质的更好地球化学异常分离方法。本研究的主要目标是(1)评估和比较空间U型统计和浓度面积分形模拟方法的异常鉴定,适用于空间分析,用于识别斑岩铜矿化的地球化学占地面积,(2)测量它们位于伊朗东南地区的地区规模勘探背景下的表现。随后,首先在元素内容物的数据集上评估该方法以分解异常群体。最后,在预测已知的矿物沉积物方面被证明更有效的地球化学模型与额外的证据地图集成在划分勘探目标。我们对所产生的地球化学靶向模型的评价表明,来自该方法的目标是强大而值得后续探索的。

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