Published February 14, 2024 | Version v10
Dataset Open

Species occurrence records of special area of conservation Montesinho/Nogueira.

  • 1. CICGE - Centro de Investigação em Ciências GeoEespaciais, Faculdade de Ciências da Universidade do Porto, Alameda do Monte da Virgem, 4430-146 Vila Nova de Gaia, Portugal.
  • 2. Department of Geosciences, Environment and Land Planning, Faculty of Sciences, University of Porto, Rua Campo Alegre, 687, 4169-007 Porto, Portugal. Earth Sciences Institute (ICT), Pole of the FCUP, University of Porto, 4169-007 Porto, Portugal.
  • 3. Area of Ecology – Department of Botany, Ecology and Plant Physiology, Faculty of Sciences (University of Cordoba). Campus de Rabanales. 14014 Córdoba, Spain.
  • 4. CoLAB ForestWISE - Collaborative Laboratory for Integrated Forest & Fire Management, Quinta de Prados, Campus da UTAD, 5001-801 Vila Real, Portugal
  • 5. Institute for Institute for the Conservation of Nature and Forests (ICNF), Avenida da República, 1050-191 Lisboa, Portugal Conservation of Nature and Forests, I.P., Avenida da República,1050-191 Lisboa, Portugal
  • 6. Institute for the Conservation of Nature and Forests (ICNF), Avenida da República, 1050-191 Lisboa, Portugal

Description

The dataset contains biodiversity data for significant taxonomic groups (flora - vascular plants, amphibians, reptiles, birds, and mammals) in special area of conservation Montesinho/Nogueira (Portugal). It covers the period from 2000 to 2022 and has a high spatial resolution (e.g., georeferenced and aggregated (1 km) records. Additionally, the dataset offers details on the conservation status of each species at both regional (Portugal) and European levels, as well as the sources of the records and their corresponding spatial resolution. The dataset was developed in response to the absence of standardized species occurrence records in the region and to facilitate modeling (e.g., development of ecological niche models).

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Dataset.csv

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