EU State by State Emissions Data 1990 to 2023 and projected through 2050 PARQUET Dataset
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Region: EU
Breakdown: Annual and State by State
Timeframe: 1990 to 2023
Projections: 2024 to 2050
Prepared: December 2025
Provided by: European Environment Agency
Citation: EU, 2023, Regulation (EU) 2023/839 of the European Parliament and of the Council of 19 April 2023 amending Regulation (EU) 2018/841 as regards the scope, simplifying the reporting and compliance rules, and setting out the targets of the Member States for 2030, and Regulation (EU) 2018/1999 as regards improvement in monitoring, reporting, tracking of progress and review
This dataset appears to contain environmental and land use data, specifically regarding cropland, forest land, grassland, and other types of land uses in different regions. The data seems to be related to the carbon cycle and greenhouse gas emissions, with columns such as LULUCF (net total) indicating net changes in land carbon stocks and Approximated emissions for LULUCF suggesting estimated emissions from land use changes.
The quality scores indicate that this dataset has good overall quality, completeness, validity, uniqueness, and consistency. However, the low completeness score may suggest missing data or incomplete records for certain years or regions.
1. Analyzing historical trends in land use changes and their impact on greenhouse gas emissions
2. Identifying regions with high carbon sequestration potential through forest conservation efforts
3. Developing strategies to mitigate the effects of climate change by optimizing land use practices
1. The dataset may not be representative of global trends due to limited sample size and geographical scope
2. Data quality issues, such as missing values or inconsistencies, may affect the accuracy of analyses and conclusions drawn from the data
land-use-change, carbon-sequestration, greenhouse-gas-emissions, climate-change mitigation, environmental-sustainability
Visualize dataset coverage on a map. Geospatial columns (latitude/longitude, lat/lon, x/y) are detected automatically.
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