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Land-use impacts of Brazilian wind power expansion

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NIAID Data Ecosystem2026-03-12 收录
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https://zenodo.org/record/4013395
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The dataset support findings that are reported in the study Land-use impacts of Brazilian wind power expansion which is currently available as a preprint DOI:10.13140/RG.2.2.29794.76480 This is an initial release of the data set, its stable version will be released on acceptance by the peer-reviewed journal. Current version of the data set provides aggregated land-use and land cover for the wind park clusters, which were installed from 1998 to 2018 in four federal states in Brazil that cover 80% of the country’s installed capacity. The land-use and land cover for each wind park cluster was aggregated for the year which is two years prior to the commissioning year of that wind park cluster. Fields state:  federal state of Brazil i.e., BA (Bahia), CE (Céara), RN (Rio Grande do Norte), RS (Rio Grande do Sul) wind_cluster_id: identification code for each wind cluster anthropogenic_land_m2: area of anthropogenic land-use within the wind cluster, m2 coastal_sand_m2: area of coastal sands within the wind cluster, m2 native_vegetation_m2: area of native vegetation within the wind cluster, m2 water_m2: area of water within the wind cluster, m2 total_area_m2: total area of the wind cluster, m2 wind_cluster_type: type of the wind cluster based on its prevailing land-use and land cover class i.e., AnthLd wind cluster has anthropogenic land as its prevailing land-use and land cover class Coast wind cluster has coastal sand as its prevailing land-use and land cover class NatVeg wind cluster has native vegetation as its prevailing land-use and land cover class The land-use and land cover for wind park clusters is derived from annual land-use and land cover maps for Brazil with the spatial resolution of 30 x 30 m by MapBiomas project [1]. The wind park locations and their commissioning dates are derived from the data set by Brazilian Electricity Regulatory Agency [2].
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2020-09-04
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