5 datasets found
  1. Eastern Europe: Maps and hydrographic or similar charts of all kinds,...

    • app.indexbox.io
    Updated Feb 23, 2024
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    IndexBox AI Platform (2024). Eastern Europe: Maps and hydrographic or similar charts of all kinds, including atlases, wall maps, topographical plans and globes, printed 2007-2024 [Dataset]. https://app.indexbox.io/table/4905/150/
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    Dataset updated
    Feb 23, 2024
    Dataset provided by
    IndexBox
    Authors
    IndexBox AI Platform
    License

    Attribution-NoDerivs 3.0 (CC BY-ND 3.0)https://creativecommons.org/licenses/by-nd/3.0/
    License information was derived automatically

    Time period covered
    Jan 1, 2007 - Dec 31, 2024
    Area covered
    Eastern Europe, Europe
    Description

    Statistics illustrates consumption, production, prices, and trade of Maps and hydrographic or similar charts of all kinds, including atlases, wall maps, topographical plans and globes, printed in Eastern Europe from 2007 to 2024.

  2. a

    Data from: EU DEM

    • hub.arcgis.com
    • maps.opendata.opt.nc
    Updated Apr 11, 2016
    + more versions
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    Universidade de Lisboa (2016). EU DEM [Dataset]. https://hub.arcgis.com/maps/ulisboa::eu-dem-1
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    Dataset updated
    Apr 11, 2016
    Dataset authored and provided by
    Universidade de Lisboa
    Area covered
    Description

    A 'Digital Elevation Model (DEM)' is a 3D approximation of the terrain's surface created from elevation data. The term 'Digital Surface Model (DSM)' represents the earth's surface and includes all objects including e.g. forests, buildings. The Digital Elevation Model over Europe from the GMES Reference Data Access project (EU-DEM) is a Digital Surface Model (DSM) representing the first surface as illuminated by the sensors. EU-DEM covers the 39 member and cooperating countries of EEA. The EU-DEM is a hybrid product based on SRTM and ASTER GDEM data fused by a weighted averaging approach. Different products have been derived from the EU-DEM, including raster’s of the slope, terrain aspect and hillshade. The different products are made available in both full-European coverage as in a set of 25 tiles covering 1000x1000km each. The EU-DEM map shows a colour shaded relief image over Europe, which has been created by EEA using a hillshade dataset derived from the ETRS89-LAEA version of EU-DEM. As this data cannot be used for analysis purposes (and that there are some known artefacts West of Norway), the downloadable data are single band raster’s with values relating to the actual elevation. The datasets are encoded as GeoTIFF with LZW compression (tiles) or DEFLATE compression (European mosaics as single files). The Web maps include WFS, WMS and WCS services. The EU-DEM statistical validation documents a relatively unbiased (-0.56 meters) overall vertical accuracy of 2.9 meters RMSE, which is fully within the contractual specification of 7m RMSE and the full report can be found at [1].

    [1] https://cws-download.eea.europa.eu/in-situ/eudem/Report-EU-DEM-statistical-validation-August2014.pdf

  3. Harmonized Tree Species Occurrence Points for Europe

    • zenodo.org
    application/gzip, bin +1
    Updated Jul 19, 2024
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    Johannes Heisig; Johannes Heisig; Tomislav Hengl; Tomislav Hengl (2024). Harmonized Tree Species Occurrence Points for Europe [Dataset]. http://doi.org/10.5281/zenodo.4068253
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    bin, png, application/gzipAvailable download formats
    Dataset updated
    Jul 19, 2024
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Johannes Heisig; Johannes Heisig; Tomislav Hengl; Tomislav Hengl
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Europe
    Description

    This data set is a harmonized collection of existing data from GBIF, the EU-Forest project and the LUCAS survey. It has about 3 million observations and is supplemented by variables (e.g. location accuracy, land cover type, canopy height, etc.) which enable precise filtering for specific user applications.

    The RDS file is created from an sf-object and suitable for fast reading in the R-programming environment. The CSV.GZ file contains records as a table with Easting and Northing in Coordinate Reference System ETRS89 / LAEA Europe (= EPSG code 3035) and can be fed in a GIS after being unzipped.

    The code producing this data set is publicly available on GitLab.

    Variables:

    • id = unique point identifier
    • easting = x coordinate
    • northing = y coordinate
    • country = ISO country code
    • species = Latin species name
    • genus = genus name
    • scientific_name = long species name
    • gbif_taxon_key = taxon key from GBIF
    • gbif_genus_key = genus key from GBIF
    • taxon_rank = species or genus
    • year = year of observation
    • accessed_through = database through which data was accessed (GBIF, LUCAS, EU-Forest)
    • dataset_info = data set name (individual sub-data-set)
    • citation = DOI citation of the individual data set
    • license = distribution license
    • location_accuracy = spatial accuracy of observation (meters)
    • flag_location_issue = known location issues present
    • flag_date_issue = known date issues present
    • eoo = Extent of occurrence (applying the concept of natural geographical range used for the EU-Forest data set (Mauri et al., 2017) to all other data points. 1 = point inside species range; 0 = point outside; NA = EOO polygon not available for this species)
    • dbh = Diameter Breast Height (only recorded for observations from the EU-Forest data set (Mauri et al., 2017))
    • lc1 = LUCAS land cover type 1 (only recorded for observations from LUCAS data)
    • lc2 = LUCAS land cover type 2 (only recorded for observations from LUCAS data)
    • landmask_country = land mask overlay 30 meters (NA = not on land)
    • corine = CORINE 2018 land cover type (extracted from the 100 meter raster data set)
    • nightlights = light pollution observed by VIIRS (proxy for remoteness / distance to human structures)
    • canopy_height = canopy height derived from GEDI waveform LiDAR point data
    • natura_2000 = Natura 2000 site code (if a point falls inside a protected area (GIS-layer) this variable contains the site identification code; all sites can be explored on an interactive map)
    • freq_location = number of points with identical location (in some cases one location has multiple observation, differing in species and/or year. This may lead to difficulties in certain modeling tasks)
    • geometry = point geometry in ETRS89 / LAEA Europe

    See this detailed documentation for more insights into each variable.

    If you would like to know more about the creation of this data set, see

    1. the R-Markdown documenting the process (GitLab repository)
    2. the talk at OpenGeoHub Summer School 2020 (Youtube)

    Some advice: This data set is a puzzle with pieces from many different sources. Take some time to explore before including it in your work. Use summary statistics to see which variables have NAs and how many. Choose your filtering criteria wisely. For example, some points with the highest location accuracy have no record for the year of observations. You would exclude these, if "year > 1990" was your criteria.

    This work has received funding from the European Union's the Innovation and Networks Executive Agency (INEA) under Grant Agreement Connecting Europe Facility (CEF) Telecom project 2018-EU-IA-0095 (https://ec.europa.eu/inea/en/connecting-europe-facility/cef-telecom/2018-eu-ia-0095).

  4. Data Bundle for PyPSA-Eur: An Open Optimisation Model of the European...

    • zenodo.org
    • data.niaid.nih.gov
    xz, zip
    Updated Jul 17, 2024
    + more versions
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    Jonas Hörsch; Fabian Hofmann; David Schlachtberger; Philipp Glaum; Fabian Neumann; Fabian Neumann; Tom Brown; Iegor Riepin; Bobby Xiong; Jonas Hörsch; Fabian Hofmann; David Schlachtberger; Philipp Glaum; Tom Brown; Iegor Riepin; Bobby Xiong (2024). Data Bundle for PyPSA-Eur: An Open Optimisation Model of the European Transmission System [Dataset]. http://doi.org/10.5281/zenodo.12760663
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    zip, xzAvailable download formats
    Dataset updated
    Jul 17, 2024
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Jonas Hörsch; Fabian Hofmann; David Schlachtberger; Philipp Glaum; Fabian Neumann; Fabian Neumann; Tom Brown; Iegor Riepin; Bobby Xiong; Jonas Hörsch; Fabian Hofmann; David Schlachtberger; Philipp Glaum; Tom Brown; Iegor Riepin; Bobby Xiong
    Description

    PyPSA-Eur is an open model dataset of the European power system at the transmission network level that covers the full ENTSO-E area. It can be built using the code provided at https://github.com/PyPSA/PyPSA-eur.

    It contains alternating current lines at and above 220 kV voltage level and all high voltage direct current lines, substations, an open database of conventional power plants, time series for electrical demand and variable renewable generator availability, and geographic potentials for the expansion of wind and solar power.

    Not all data dependencies are shipped with the code repository, since git is not suited for handling large changing files. Instead we provide separate data bundles to be downloaded and extracted as noted in the documentation.

    This is the full data bundle to be used for rigorous research. It includes large bathymetry and natural protection area datasets.

    While the code in PyPSA-Eur is released as free software under the MIT, different licenses and terms of use apply to the various input data, which are summarised below:

    corine/*

    Access to data is based on a principle of full, open and free access as established by the Copernicus data and information policy Regulation (EU) No 1159/2013 of 12 July 2013. This regulation establishes registration and licensing conditions for GMES/Copernicus users and can be found here. Free, full and open access to this data set is made on the conditions that:

    • When distributing or communicating Copernicus dedicated data and Copernicus service information to the public, users shall inform the public of the source of that data and information.

    • Users shall make sure not to convey the impression to the public that the user's activities are officially endorsed by the Union.

    • Where that data or information has been adapted or modified, the user shall clearly state this.

    • The data remain the sole property of the European Union. Any information and data produced in the framework of the action shall be the sole property of the European Union. Any communication and publication by the beneficiary shall acknowledge that the data were produced “with funding by the European Union”.

    eez/*

    Marine Regions’ products are licensed under CC-BY-NC-SA. Please contact us for other uses of the Licensed Material beyond license terms. We kindly request our users not to make our products available for download elsewhere and to always refer to marineregions.org for the most up-to-date products and services.

    natura/*

    EEA standard re-use policy: unless otherwise indicated, re-use of content on the EEA website for commercial or non-commercial purposes is permitted free of charge, provided that the source is acknowledged (https://www.eea.europa.eu/legal/copyright). Copyright holder: Directorate-General for Environment (DG ENV).

    naturalearth/*

    All versions of Natural Earth raster + vector map data found on this website are in the public domain. You may use the maps in any manner, including modifying the content and design, electronic dissemination, and offset printing. The primary authors, Tom Patterson and Nathaniel Vaughn Kelso, and all other contributors renounce all financial claim to the maps and invites you to use them for personal, educational, and commercial purposes.

    No permission is needed to use Natural Earth. Crediting the authors is unnecessary.

    NUTS_2013_60M_SH/*

    In addition to the general copyright and licence policy applicable to the whole Eurostat website, the following specific provisions apply to the datasets you are downloading. The download and usage of these data is subject to the acceptance of the following clauses:

    1. The Commission agrees to grant the non-exclusive and not transferable right to use and process the Eurostat/GISCO geographical data downloaded from this page (the "data").

    2. The permission to use the data is granted on condition that: the data will not be used for commercial purposes; the source will be acknowledged. A copyright notice, as specified below, will have to be visible on any printed or electronic publication using the data downloaded from this page.

    gebco/GEBCO_2014_2D.nc

    The GEBCO Grid is placed in the public domain and may be used free of charge. Use of the GEBCO Grid indicates that the user accepts the conditions of use and disclaimer information given below.

    Users are free to:

    • Copy, publish, distribute and transmit The GEBCO Grid

    • Adapt The GEBCO Grid

    • Commercially exploit The GEBCO Grid, by, for example, combining it with other information, or by including it in their own product or application

    Users must:

    • Acknowledge the source of The GEBCO Grid. A suitable form of attribution is given in the documentation that accompanies The GEBCO Grid.

    • Not use The GEBCO Grid in a way that suggests any official status or that GEBCO, or the IHO or IOC, endorses any particular application of The GEBCO Grid.

    • Not mislead others or misrepresent The GEBCO Grid or its source.

    je-e-21.03.02.xls

    Information on the websites of the Federal Authorities is accessible to the public. Downloading, copying or integrating content (texts, tables, graphics, maps, photos or any other data) does not entail any transfer of rights to the content.

    Copyright and any other rights relating to content available on the websites of the Federal Authorities are the exclusive property of the Federal Authorities or of any other expressly mentioned owners.

    Any reproduction requires the prior written consent of the copyright holder. The source of the content (statistical results) should always be given.

  5. Share of cash according to payment diary studies held in 27 countries...

    • statista.com
    • flwrdeptvarieties.store
    Updated Dec 20, 2023
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    Statista (2023). Share of cash according to payment diary studies held in 27 countries worldwide 2023 [Dataset]. https://www.statista.com/statistics/1055618/cash-payment-transactions-by-country/
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    Dataset updated
    Dec 20, 2023
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Jun 2023
    Area covered
    Spain, Greece, South Korea, Slovakia, Austria, Belgium, Luxembourg, Poland, Thailand, Ireland
    Description

    Cash usage by country varied significantly — even within Europe — according to various payment diary studies held all over the world. The numbers provided here all stem from domestically held payment diary surveys, where consumers had to record how often and by how much they used certain payment methods. In the Euro area, for instance, Malta led the group of countries in proportion of cash to non-cash transactions in 2021, with 77 percent of all transactions carried out in cash. Other Mediterranean countries also saw high cash transaction rates. This contrasted with Canada and the United States, where their surveys suggested a far lower market share of cash. Cash usage is a relatively new field of Payments research Tracking the use of paper money or coins for most countries only began in the mid to late 2010s, and was especially adopted following the coronavirus pandemic. Central banks increasingly wanted to map out whether cash was declining in favor of digital payment methods, but no official means of tracking cash use was available. As this is based on domestically held surveys, data availability and data frequency varies significantly. This overview tries to collect all research done so far. It should be noted that all surveys are conducted separately from one another, so they might not be comparable. Another less reliable, but more easily available way to calculate the share of cash in a country is currency in circulation or CIC. This is a comparatively easy figure to research and calculate, but experts question its reliability. Digital payments expected to keep on growing Cashless payments are forecast to double between 2022 and 2027. Over 1.1 trillion non-cash transactions were carried out in the world, with the highest number being recorded in Asia-Pacific. The number of cashless payments in Asia-Pacific is forecast to be higher than transactions in Europe and North America combined. A significant growth in Latin America — consisting of Brazil, Peru, and Colombia in this particular ranking — is also expected, as they continue to implement real-time payments across the region.

  6. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

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IndexBox AI Platform (2024). Eastern Europe: Maps and hydrographic or similar charts of all kinds, including atlases, wall maps, topographical plans and globes, printed 2007-2024 [Dataset]. https://app.indexbox.io/table/4905/150/
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Eastern Europe: Maps and hydrographic or similar charts of all kinds, including atlases, wall maps, topographical plans and globes, printed 2007-2024

Explore at:
Dataset updated
Feb 23, 2024
Dataset provided by
IndexBox
Authors
IndexBox AI Platform
License

Attribution-NoDerivs 3.0 (CC BY-ND 3.0)https://creativecommons.org/licenses/by-nd/3.0/
License information was derived automatically

Time period covered
Jan 1, 2007 - Dec 31, 2024
Area covered
Eastern Europe, Europe
Description

Statistics illustrates consumption, production, prices, and trade of Maps and hydrographic or similar charts of all kinds, including atlases, wall maps, topographical plans and globes, printed in Eastern Europe from 2007 to 2024.

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