Big geochemical data through remote sensing for dynamic mineral resource monitoring in tailing storage facilities

Steven E. Zhang , Glen T. Nwaila , Shenelle Agard , Julie E. Bourdeau , Emmanuel John M. Carranza , Yousef Ghorbani
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Abstract

Evolution in geoscientific data provides the mineral industry with new opportunities. A direction of geochemical data generation evolution is towards big data to meet the demands of data-driven usage scenarios that rely on data velocity. This direction is more significant where traditional geochemical data are not ideal, which is the case for evaluating unconventional resources, such as tailing storage facilities (TSFs), because they are not static due to sedimentation, compaction and changes associated with hydrospheric and lithospheric processes (e.g., erosion, saltation and mobility of chemical constituents). In this paper, we generate big secondary geochemical data derived from Sentinel-2 satellite-remote sensing data to showcase the benefits of big geochemical data using TSFs from the Witwatersrand Basin (South Africa). Using spatially fused remote sensing and legacy geochemical data on the Dump 20 TSF, we trained a machine learning model to predict in-situ gold grades. Subsequently, we deployed the model to the Lindum TSF, which is 3 km away, over a period of a few years (2015-2019). We were able to visualize and analyze the temporal variation in the spatial distributions of the gold grade of the Lindum TSF. Additionally, we were able to infer extraction sequencing (to the resolution of the data), acid mine drainage formation and seasonal migration. These findings suggest that dynamic mineral resource models and live geochemical monitoring (e.g., of elemental mobility and structural changes) are possible without additional physical sampling.

利用遥感地球化学大数据进行尾矿库矿产资源动态监测
地球科学数据的演变为矿产工业提供了新的机遇。地球化学数据生成的一个方向是向大数据发展,以满足依赖数据速度的数据驱动使用场景的需求。在传统地球化学数据不理想的情况下,这一方向更为重要,这是评估尾矿储存设施等非常规资源的情况,因为由于沉积、压实以及与岩石圈和岩石圈过程相关的变化(例如化学成分的侵蚀、盐析和迁移),这些资源不是静态的。在本文中,我们从Sentinel-2卫星遥感数据中生成了大型次级地球化学数据,以展示使用Witwatersrand盆地(南非)TSF的大型地球化学数据的优势。利用Dump 20 TSF的空间融合遥感和遗留地球化学数据,我们训练了一个机器学习模型来预测原位黄金品位。随后,我们在几年内(2015-2019年)将该模型部署到3公里外的Lindum TSF。我们能够可视化和分析Lindum TSF黄金品位空间分布的时间变化。此外,我们还能够推断出提取顺序(达到数据的分辨率)、酸性矿井排水的形成和季节性迁移。这些发现表明,在没有额外物理采样的情况下,动态矿产资源模型和实时地球化学监测(例如元素迁移和结构变化)是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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