| Literature DB >> 35869082 |
Victor Maus1,2, Stefan Giljum3, Dieison M da Silva4, Jakob Gutschlhofer3, Robson P da Rosa5, Sebastian Luckeneder3, Sidnei L B Gass4, Mirko Lieber3, Ian McCallum6.
Abstract
The growing demand for minerals has pushed mining activities into new areas increasingly affecting biodiversity-rich natural biomes. Mapping the land use of the global mining sector is, therefore, a prerequisite for quantifying, understanding and mitigating adverse impacts caused by mineral extraction. This paper updates our previous work mapping mining sites worldwide. Using visual interpretation of Sentinel-2 images for 2019, we inspected more than 34,000 mining locations across the globe. The result is a global-scale dataset containing 44,929 polygon features covering 101,583 km2 of large-scale as well as artisanal and small-scale mining. The increase in coverage is substantial compared to the first version of the dataset, which included 21,060 polygons extending over 57,277 km2. The polygons cover open cuts, tailings dams, waste rock dumps, water ponds, processing plants, and other ground features related to the mining activities. The dataset is available for download from https://doi.org/10.1594/PANGAEA.942325 and visualisation at www.fineprint.global/viewer .Entities:
Year: 2022 PMID: 35869082 PMCID: PMC9307859 DOI: 10.1038/s41597-022-01547-4
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 8.501
List of all commodities reported in the SNL database.
| Commodity name (Number of mines reporting the commodity) | ||
|---|---|---|
| Gold (17526) | Yttrium (69) | Lutetium (9) |
| Copper (8699) | Potassium Oxide (68) | Thulium (9) |
| Silver (7215) | Barite (53) | Borates (8) |
| Coal (5164) | Rhenium (47) | Erbium (8) |
| Zinc (4168) | Scandium (47) | Holmium (8) |
| Lead (3337) | Magnesium (44) | Limestone (7) |
| Iron Ore (2280) | Iridium (39) | Osmium (7) |
| U3O8 (2013) | Leucoxene (39) | Selenium (7) |
| Nickel (1951) | Thorium (38) | Alumina (6) |
| Diamonds (1515) | Cadmium (36) | Hafnium (6) |
| Molybdenum (1461) | Ruthenium (36) | Beryl (5) |
| Cobalt (1079) | Caesium (35) | Ferrochrome (5) |
| Platinum (1024) | Indium (33) | Ferrovanadium (5) |
| Palladium (972) | Tellurium (31) | Gypsum (5) |
| Rhodium (578) | Beryllium (29) | Aggregates (4) |
| Lanthanides (533) | Spodumene (29) | Aluminum (4) |
| Lithium (490) | Chromium (26) | Sapphire (4) |
| Tungsten (424) | Cerium (25) | Strontium (4) |
| Tin (419) | Neodymium (25) | Emerald (3) |
| Manganese (353) | Iron Sand (24) | Ferrotungsten (3) |
| Graphite (333) | Rare Earth Elements (24) | Kaolin (3) |
| Phosphate (325) | Rubidium (23) | Calcium Carbonate (2) |
| Magnetite (295) | Mercury (22) | Hematite (2) |
| Vanadium (290) | Gallium (20) | Jade (2) |
| Potash (262) | Lanthanum (20) | Platinum Group Metals (2) |
| Tantalum (242) | Praseodymium (20) | Potassium Sulfate (2) |
| Bauxite (241) | Dysprosium (17) | Topaz (2) |
| Chromite (217) | Germanium (14) | Vermiculite (2) |
| Titanium (191) | Silica (14) | Asbestos (1) |
| Antimony (190) | Terbium (14) | Boron (1) |
| Ilmenite (181) | Europium (13) | Ferromanganese (1) |
| Niobium (174) | Samarium (13) | Frac Sand (1) |
| Zircon (171) | Garnet (12) | Heavy Rare Earths and Yttrium (1) |
| Rutile (152) | Potassium Chloride (11) | Marble (1) |
| Heavy Mineral Sands (150) | Gadolinium (10) | Promethium (1) |
| Bismuth (99) | Ytterbium (10) | Ruby (1) |
| Arsenic (70) | Ferronickel (9) | Sodium Bicarbonate (1) |
Fig. 1Mapped small- and large-scale mining in South America. (a) Small-scale gold mining in the Brazilian Amazon on both sides of the Tapajós River in the Brazilian state of Pará. (b) Toquepala copper mine in Tacna Province, Peru.
Fig. 2Global overview of mining areas mapped in Version 2 aggregated to 5050 km grid cells and projected to Interrupted Goode Homolosine. The maps at the bottom are zoomed to South America (left), and Australia and parts of South-East Asia (right).
Fig. 3Mining land use per country in square kilometres. The dashed bars indicate the areas mapped in Version 1 of the dataset.
Fig. 4Global overview of additional mining area mapped in Version 2 compared to Version 1, aggregated to 5050 km grid cells and projected to Interrupted Goode Homolosine.
Mining area in km2 and the number of polygons (n) mapped per country. The countries are indicated by their respective ISO 3166-1 alpha-3 code.
| Country | n | Country | n | Country | n | |||
|---|---|---|---|---|---|---|---|---|
| RUS | 11,770.93 | 2,825 | CZE | 165.88 | 73 | ETH | 16.30 | 33 |
| CHN | 10,364.57 | 8,795 | SWE | 159.29 | 219 | CYP | 16.27 | 32 |
| AUS | 8,482.63 | 3,416 | SRB | 149.67 | 192 | PAN | 15.57 | 21 |
| USA | 8,188.54 | 3,899 | TZA | 146.60 | 225 | LBR | 15.13 | 51 |
| IDN | 8,020.15 | 1,448 | FIN | 143.90 | 288 | AUT | 14.94 | 48 |
| BRA | 5,915.79 | 2,427 | NER | 127.52 | 35 | GEO | 14.60 | 9 |
| CAN | 5,087.56 | 2,828 | KGZ | 126.61 | 105 | URY | 13.45 | 28 |
| CHL | 4,562.65 | 697 | MOZ | 123.42 | 72 | JPN | 13.22 | 47 |
| ZAF | 3,594.62 | 1,526 | CUB | 118.32 | 65 | TKM | 13.07 | 3 |
| PER | 3,539.54 | 852 | NZL | 118.08 | 181 | LSO | 12.20 | 9 |
| GUY | 2,388.75 | 456 | MRT | 114.89 | 43 | MNE | 10.87 | 13 |
| ARG | 2,301.00 | 334 | BFA | 112.51 | 89 | ERI | 10.63 | 6 |
| IND | 2,293.41 | 1,204 | MYS | 112.12 | 118 | GTM | 10.60 | 20 |
| MMR | 2,140.09 | 170 | SAU | 111.40 | 74 | COG | 10.37 | 26 |
| KAZ | 2,082.59 | 656 | CIV | 107.30 | 44 | LKA | 10.12 | 45 |
| SUR | 1,972.02 | 306 | SLE | 88.51 | 104 | HND | 9.66 | 16 |
| GHA | 1,882.81 | 577 | PNG | 77.30 | 38 | IRQ | 8.85 | 4 |
| VEN | 1,401.40 | 105 | TUN | 75.48 | 25 | AFG | 6.79 | 10 |
| MEX | 932.22 | 1,583 | EGY | 72.75 | 29 | SLB | 5.93 | 3 |
| UKR | 877.10 | 707 | HUN | 71.39 | 110 | TGO | 5.43 | 3 |
| MNG | 782.92 | 429 | ECU | 71.02 | 97 | MWI | 5.00 | 14 |
| COL | 772.43 | 219 | ESH | 62.91 | 3 | KHM | 4.60 | 16 |
| TUR | 769.49 | 911 | SEN | 58.96 | 27 | CMR | 4.41 | 5 |
| DEU | 550.87 | 146 | LAO | 56.49 | 56 | ARE | 4.21 | 6 |
| NAM | 494.68 | 262 | ISR | 55.26 | 10 | FJI | 3.53 | 18 |
| ZMB | 480.05 | 149 | MKD | 53.57 | 34 | PRY | 3.52 | 29 |
| UZB | 468.39 | 73 | GAB | 51.84 | 13 | HTI | 3.36 | 10 |
| COD | 426.22 | 223 | SDN | 50.95 | 33 | UGA | 3.14 | 17 |
| MAR | 369.73 | 96 | MDG | 44.47 | 63 | BEL | 1.91 | 3 |
| IRN | 363.08 | 167 | ARM | 43.40 | 71 | SVN | 1.75 | 4 |
| POL | 331.66 | 218 | DZA | 42.77 | 97 | RWA | 1.64 | 16 |
| BWA | 315.20 | 171 | PRT | 39.94 | 162 | LUX | 1.42 | 5 |
| PHL | 302.68 | 350 | KOR | 39.11 | 125 | NLD | 1.42 | 8 |
| AGO | 294.51 | 218 | NOR | 35.88 | 109 | CRI | 1.36 | 4 |
| ESP | 292.44 | 256 | TJK | 34.23 | 67 | BGD | 1.27 | 2 |
| BOL | 286.77 | 138 | DOM | 31.18 | 29 | SJM | 1.03 | 3 |
| JOR | 263.89 | 46 | BIH | 29.06 | 14 | SOM | 0.70 | 3 |
| VNM | 263.31 | 146 | IRL | 25.81 | 97 | SLV | 0.59 | 5 |
| NCL | 251.66 | 158 | JAM | 25.62 | 56 | CHE | 0.55 | 10 |
| ZWE | 242.48 | 320 | BLR | 24.69 | 6 | GRL | 0.36 | 2 |
| GIN | 231.34 | 128 | NGA | 24.65 | 70 | ABW | 0.36 | 2 |
| BGR | 226.15 | 109 | AZE | 24.59 | 25 | SWZ | 0.33 | 2 |
| GRC | 216.26 | 73 | PRK | 24.52 | 30 | TCD | 0.20 | 2 |
| OMN | 201.53 | 110 | KEN | 23.52 | 29 | BEN | 0.11 | 2 |
| FRA | 199.46 | 158 | ITA | 23.30 | 76 | BDI | 0.08 | 1 |
| MLI | 194.94 | 78 | PAK | 22.80 | 28 | GNB | 0.06 | 2 |
| ROU | 176.98 | 94 | SVK | 19.43 | 94 | ISL | 0.05 | 1 |
| THA | 168.98 | 81 | ALB | 17.20 | 91 | |||
| GBR | 168.91 | 203 | NIC | 16.98 | 28 | |||
Error matrix and accuracy statistics derived from 1,220 random points equally allocated between the mapped classes Mine and No-mine.
| Mapped | Reference | User’s acc. (%) | ||
|---|---|---|---|---|
| Mine | No-mine | Total | ||
| Mine | 481 | 129 | 610 | 97.2 |
| No-mine | 14 | 596 | 610 | 82.2 |
| Total | 495 | 725 | 1220 | |
| Producer’s acc. (%) | 78.9 | 97.7 | ||
| Overall acc.: 88.3%; Kappa: 0.77; F1 Score: 0.87; MCC: 0.78 | ||||
| Measurement(s) | terrestrial mining |
| Technology Type(s) | satellite imaging |
| Factor Type(s) | area • polygon geometry |
| Sample Characteristic - Environment | land |
| Sample Characteristic - Location | Earth (planet) |