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Mapping mineral prospectivity through big data analytics and a deep learning algorithm

机译:通过大数据分析和深度学习算法映射矿物前景

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Identification of anomalies related to mineralization and integration of multi-source geoscience data are essential for mapping mineral prospectivity. In this study, we applied big data analytics and a deep learning algorithm to process geoscience data to identify and integrate anomalies related to skarn-type Iron mineralization in the southwestern Fujian metallogenic zone of China. Based on the geological setting and environment for the formation of skarn-type Iron mineralization, 42 relevant variables, including two geological, one geophysical, and 39 geochemical variables, were analyzed and integrated for detecting anomalies related to mineralization using a deep autoencoder network. The results indicate that the mapped prospectivity areas have a strong spatial relationship with the locations of known mineralization and demonstrate that big data analytics supported by deep learning methods is a potential technique to be considered for use in mineral prospectivity mapping.
机译:鉴定与矿化和多源地球科学数据的集成有关的异常,对于绘制矿物前景至关重要。 在这项研究中,我们应用了大数据分析和深度学习算法来处理地球科学数据,以识别和整合在中国西南部富建型铁矿化相关的矽卡型铁矿化相关的异常。 基于矽卡岩型铁矿化形成的地质环境和环境,分析了42种相关变量,包括两个地质,一个地球物理和39个地球化学变量,并综合使用深度自动化网络检测与矿化相关的异常。 结果表明,映射的前瞻性区域与已知矿化的位置具有强烈的空间关系,并证明了深度学习方法支持的大数据分析是用于矿物前瞻性映射的潜在技术。

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