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Potential of Sentinel-2 data in the detection of lithium (Li)-bearing pegmatites: a study case

机译:Sentinel-2数据在检测锂(Li)伟晶岩中的潜力:一个研究案例

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Only recently remotely sensed data and image processing techniques have been used in the detection of lithium (Li)-bearing pegmatites because of the current growing importance and demand of Li for the construction of Li-ion batteries for electric cars. The study area of this work was the Fregeneda (Spain)- Almcndra (Portugal) region, where different known types of Li-pegmatites have been mapped. The objective of this study is to develop a methodology considering remotely sensed data, capable of identifying Li-pegmatites based on the recognition of the associated alteration halos. For that, Level 1-C cloud free Sentinel-2 images with low vegetation coverage were used. The normalized difference vegetation index (NDVI) was computed and a threshold was considered (NDVI<0.2). This study also aims exploiting the potential of Sentinel-2 data for this purpose. Minerals have important absorption features in the visible and infrared regions. Based on these features and with the aim of determining the most accurate methodology, Sentinel-2 reflectance data was used to compute RGB combinations, band ratios, principal component analysis (PCA) and image classification (supervised). These methodologies allow to predict the occurrence of iron oxides and clay minerals, and to discriminate between non-altered and hydrothermally altered zones. Band ratio 3/8 also predicts the occurrence of Li-bearing minerals. The results of the application of remote sensing data, in particular, Sentinel-2 images and image processing techniques to Li-mineralizations is of great interest to mining companies since they could lead to an increased efficiency and sustainability of mineral exploration.
机译:由于近来对于制造用于电动汽车的锂离子电池的锂的重要性和需求日益增长,只有最近的遥感数据和图像处理技术才被用于检测含锂(Li)的伟晶岩。这项工作的研究领域是西班牙的弗雷格内达-葡萄牙的阿尔姆德拉地区,这里已绘制了已知的不同类型的锂钛铁矿。这项研究的目的是开发一种考虑到遥感数据的方法,该方法能够基于对相关蚀变晕的识别来识别锂钛铁矿。为此,使用了植被覆盖率低的1-C级无云Sentinel-2图像。计算归一化植被指数(NDVI),并考虑阈值(NDVI <0.2)。这项研究还旨在为此目的开发Sentinel-2数据的潜力。矿物质在可见光和红外线区域具有重要的吸收特征。基于这些功能并旨在确定最准确的方法,Sentinel-2反射率数据用于计算RGB组合,带比,主成分分析(PCA)和图像分类(监督)。这些方法可以预测氧化铁和粘土矿物的发生,并可以区分未改变的区域和热液改变的区域。带比率3/8还预测了含锂矿物的发生。矿业公司对遥感数据(特别是Sentinel-2图像和图像处理技术)在锂矿化中的应用结果非常感兴趣,因为它们可以提高矿物勘探的效率和可持续性。

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