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  • 1
    Publication Date: 2020-09-08
    Description: The area used for mineral extraction is a key indicator for understanding and mitigating the environmental impacts caused by the extractive sector. To date, worldwide data products on mineral extraction do not report the area used by mining activities. In this paper, we contribute to filling this gap by presenting a new data set of mining extents derived by visual interpretation of satellite images. We delineated mining areas within a 10 km buffer from the approximate geographical coordinates of more than six thousand active mining sites across the globe. The result is a global-scale data set consisting of 21,060 polygons that add up to 57,277 km2. The polygons cover all mining above-ground features that could be identified from the satellite images, including open cuts, tailings dams, waste rock dumps, water ponds, and processing infrastructure. The data set is available for download from 10.1594/PANGAEA.910894 and visualization at www.fineprint.global/viewer.
    Electronic ISSN: 2052-4463
    Topics: Nature of Science, Research, Systems of Higher Education, Museum Science
    Published by Springer Nature
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  • 2
    Publication Date: 2024-04-20
    Description: This dataset updates the global-scale mining polygons (Version 1) available from https://doi.org/10.1594/PANGAEA.910894. It contains 44,929 polygon features, covering 101,583 km² of land used by the global mining industry, including large-scale and artisanal and small-scale mining. The polygons cover all ground features related to mining, .e.g open cuts, tailing dams, waste rock dumps, water ponds, processing infrastructure, and other land cover types related to the mining activities. The data was derived using a similar methodology as the first version by visual interpretation of satellite images. The study area was limited to a 10 km buffer around the 34,820 mining coordinates reported in the S&P metals and mining database. We digitalized the mining areas using the 2019 Sentinel-2 cloudless mosaic with 10 m spatial resolution (https://s2maps.eu by EOX IT Services GmbH - Contains modified Copernicus Sentinel data 2019). We also consulted Google Satellite and Microsoft Bing Imagery, but only as additional information to help identify land cover types linked to the mining activities. The main data set consists of a GeoPackage (GPKG) file, including the following variables: ISO3_CODE〈string〉, COUNTRY_NAME〈string〉, AREA〈double〉 in squared kilometres, FID〈integer〉 with the feature ID, and geom〈polygon〉 in geographical coordinates WGS84. The summary of the mining area per country is available in comma-separated values (CSV) file, including the following variables: ISO3_CODE〈string〉, COUNTRY_NAME〈string〉, AREA〈double〉 in squared kilometres, and N_FEATURES〈integer〉 number of mapped features. Grid data sets with the mining area per cell were derived from the polygons. The grid data is available at 30 arc-second resolution (approximately 1x1 km at the equator), 5 arc-minute (approximately 10x10 km at the equator), and 30 arc-minute resolution (approximately 55x55 km at the equator). We performed an independent validation of the mining data set using control points. For that, we draw 1,000 random samples stratified between two classes: mine and no-mine. The control points are also available as a GPKG file, including the variables: MAPPED〈string〉, REFERENCE〈string〉, FID〈integer〉 with the feature ID, and geom〈point〉 in geographical coordinates WGS84. The overall accuracy calculated from the control points was 88.3%, Kappa 0.77, F1 score 0.87, producer's accuracy of class mine 78.9 % and user's accuracy of class mine 97.2 %.
    Keywords: Binary Object; Binary Object (File Size); Binary Object (Media Type); coal; File content; FINEPRINT; Land-cover; land-use; metal ores; minerals; Mining; raw material extraction; Spatially explicit material footprints: fine-scale assessment of Europe's global environmental and social impacts
    Type: Dataset
    Format: text/tab-separated-values, 12 data points
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  • 3
    Publication Date: 2024-04-20
    Description: This data set provides spatially explicit estimates of the area directly used for surface mining on a global scale. It contains more than 21,000 polygons of activities related to mining, mainly of coal and metal ores. Several data sources were compiled to identify the approximate location of mines active at any time between the years 2000 to 2017. This data set does not cover all existing mining locations across the globe. The polygons were delineated by experts using Sentinel-2 cloudless (https://s2maps.eu by EOX IT Services GmbH (contains modified Copernicus Sentinel data 2017 & 2018)) and very high-resolution satellite images available from Google Satellite and Bing Imagery. The derived polygons cover the direct land used by mining activities, including open cuts, tailing dams, waste rock dumps, water ponds, and processing infrastructure. The main data set consists of a GeoPackage (GPKG) file, including the following variables: ISO3_CODE〈string〉, COUNTRY_NAME〈string〉, AREA〈double〉 in squared kilometres, FID〈integer〉 with the feature ID, and geom〈polygon〉 in geographical coordinates WGS84. The summary of the mining area per country is available in comma-separated values (CSV) file, including the following variables: ISO3_CODE〈string〉, COUNTRY_NAME〈string〉, AREA〈double〉 in squared kilometers, and N_FEATURES〈integer〉 number of mapped features. Grid data sets with the mining area per cell were derived from the polygons. The grid data is available at 30 arc-second resolution (approximately 1x1 km at the equator), 5 arc-minute (approximately 10x10 km at the equator), and 30 arc-minute resolution (approximately 55x55 km at the equator). We performed an independent validation of the mining data set using control points. For that, we draw a 1,000 random samples stratified between two classes: mine and no-mine. The control points are also available as a GPKG file, including the variables: MAPPED〈string〉, REFERENCE〈string〉, FID〈integer〉 with the feature ID, and geom〈point〉 in geographical coordinates WGS84. The overall accuracy calculated from the control points was 88.4%, other accuracy metrics are shown below. Confusion Matrix and Statistics Reference Prediction Mine No-mine Mine 394 106 No-mine 10 490 Accuracy : 0.884 95% CI : (0.8625, 0.9032) No Information Rate : 0.596 P-Value [Acc 〉 NIR] : 〈 2.2e-16 Kappa : 0.768 Mcnemar's Test P-Value : 〈 2.2e-16 Sensitivity : 0.9752 Specificity : 0.8221 Pos Pred Value : 0.7880 Neg Pred Value : 0.9800 Precision : 0.7880 Recall : 0.9752 F1 : 0.8717 Prevalence : 0.4040 Detection Rate : 0.3940 Detection Prevalence : 0.5000 Balanced Accuracy : 0.8987 This work was supported by the European Research Council (ERC) under the European Union's Horizon 2020 research and innovation programme grant number 725525 FINEPRINT project (https://www.fineprint.global/).
    Keywords: coal; FINEPRINT; land-use; metal ores; minerals; raw material extraction; Spatially explicit material footprints: fine-scale assessment of Europe's global environmental and social impacts
    Type: Dataset
    Format: application/zip, 18.4 MBytes
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