Monitoring of Open-Pit Mining Areas Using Landsat Series Imagery (1984-2023) and Cloud Processing

Pau Montero, Edgardo Bustos, Joan-Cristian Padró Garcia, Vicenç Carabassa

Research output: Contribution to journalArticleResearchpeer-review

Abstract

While open-pit mining activities represent one of the human-derived most impactful land cover changes, these changes and the linked restoration processes can be challenging to assess. This article presents a reproducible methodology carried out with cloud processing of satellite images (Google Earth Engine (GEE)) to evaluate the evolution of open-pit mining activities and their restoration in a Mediterranean landscape. For this purpose, the calculation of the normalized differential vegetation index (NDVI) was used to obtain a quantitative parameter to monitor vegetation presence in each extractive area. To validate these results, confusion matrices were performed between the classification obtained in the study and the official land cover mapping, using randomly selected mining areas as test points, with an average accuracy of 88%. According to the methodology used, the surface of areas denuded by mining in the period 1984-2023 has fluctuated over time, with a maximum in 2005 coinciding with the peak of the Spanish construction boom, and a subsequent decrease towards the present. From these results, it can be concluded that Landsat-type data processed using GEE provide a quick and useful tool for monitoring the evolution of mining activity, including restoration trends, becoming particularly valuable for public bodies' inspections or decision making.
Original languageEnglish
Article number1301
Number of pages11
JournalLand
Volume13
Issue number8
Publication statusPublished - 16 Aug 2024

Keywords

  • GEE
  • NDVI
  • integrated restoration
  • mineral extraction evolution
  • open-pit mining

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