28 datasets found
  1. w

    New heat-flow contour map of the conterminous United States

    • data.wu.ac.at
    Updated Apr 9, 2018
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    (2018). New heat-flow contour map of the conterminous United States [Dataset]. https://data.wu.ac.at/schema/geothermaldata_org/NmQzZDY5NDAtZDlkNS00MGFjLThlY2ItNWZiYzU0ZjlkNDcy
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    Dataset updated
    Apr 9, 2018
    Area covered
    United States
    Description

    No Publication Abstract is Available

  2. d

    Deer Spotkill Heat Map - Region 2 - 2013 [ds1066].

    • datadiscoverystudio.org
    Updated Apr 29, 2016
    + more versions
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    (2016). Deer Spotkill Heat Map - Region 2 - 2013 [ds1066]. [Dataset]. http://datadiscoverystudio.org/geoportal/rest/metadata/item/aa0fe280a5f6475e9a7af87adb971c13/html
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    Dataset updated
    Apr 29, 2016
    Description

    description: This is a heatmap (a graphical representation of data where the individual values contained in a matrix are represented as colors) of 2013 deer hunt kills within the California Department of Fish & Wildlife (CDFW) North Central Region (Region 2). The data was compiled from 2013 CDFW Automated Licensing Data System (ALDS) tables. Text descriptions from hunters were approximated and placed with geographic coordinates. The resulting point data was converted to a heatmap using Kernel Density Tool in ArcGIS 10.1; abstract: This is a heatmap (a graphical representation of data where the individual values contained in a matrix are represented as colors) of 2013 deer hunt kills within the California Department of Fish & Wildlife (CDFW) North Central Region (Region 2). The data was compiled from 2013 CDFW Automated Licensing Data System (ALDS) tables. Text descriptions from hunters were approximated and placed with geographic coordinates. The resulting point data was converted to a heatmap using Kernel Density Tool in ArcGIS 10.1

  3. G

    Heat islands

    • ouvert.canada.ca
    • canwin-datahub.ad.umanitoba.ca
    • +4more
    geojson, geotif, html +1
    Updated May 1, 2025
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    Government and Municipalities of Québec (2025). Heat islands [Dataset]. https://ouvert.canada.ca/data/dataset/dbdfbdba-0725-470d-a23e-da69dbedc4e6
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    html, geojson, shp, geotifAvailable download formats
    Dataset updated
    May 1, 2025
    Dataset provided by
    Government and Municipalities of Québec
    License

    Open Government Licence - Canada 2.0https://open.canada.ca/en/open-government-licence-canada
    License information was derived automatically

    Description

    Polygons representing heat islands on the ground surface. A heat island is defined as the difference in temperatures observed between two surrounding environments at the same time. The different temperature differences are mainly explained by the type of soil layout such as the vegetation cover, the impermeability of the materials and the thermal properties of the materials. This difference can reach more than 12°C. The 2020-2030 Montreal Climate Plan aims, among other things, to improve planning and regulatory tools in urban planning. Montréal has thus committed to updating the climate change vulnerability analysis, including the heat island map, carried out as part of the 2015-2020 Agglomération de Montréal Climate Change Adaptation Plan and to integrating it into the next urban and mobility plan. The urban heat island maps were produced in collaboration with the Department of Geography of the University of Quebec in Montreal (UQAM). The data can also be viewed on the interactive heat island map.**This third party metadata element was translated using an automated translation tool (Amazon Translate).**

  4. b

    CT Mean Heat Index

    • data.boston.gov
    • gis.data.mass.gov
    • +1more
    Updated May 12, 2021
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    BostonMaps (2021). CT Mean Heat Index [Dataset]. https://data.boston.gov/gl/dataset/ct-mean-heat-index/resource/93394e60-7076-46b7-a93b-e56279b7f3de?inner_span=True
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    Dataset updated
    May 12, 2021
    Dataset authored and provided by
    BostonMaps
    Area covered
    Description

    This dataset consists of summer temperature metrics for Boston, MA. These heat metrics summarize six CAPA Urban Heat Watch program temperature and heat index datasets using geographical boundaries from the Census Tract (CT) layer. Heat datasets were created by Museum of Science, Boston, and the Helmuth Lab at Northeastern University. Heat metrics are presented in the attribute table as mean values of each Heat Watch program dataset for all hexagon features. The six heat values included in this table are July 2019 temperature and heat index in degrees Fahrenheit for each of 3 1-hour periods -- 6 a.m., 3 p.m., and 7 p.m. EDT. The geographic boundaries used to summarize the heat metrics are current as of 2019.

  5. w

    Deer Spotkill Heat Map - Region 2 - 2013 [ds1066]

    • data.wu.ac.at
    zip
    Updated Jan 2, 2018
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    State of California (2018). Deer Spotkill Heat Map - Region 2 - 2013 [ds1066] [Dataset]. https://data.wu.ac.at/schema/data_gov/MmJjMTQzMTktODU5My00Y2IwLWExNjItMWEyZTU4YzRkY2Jj
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    zipAvailable download formats
    Dataset updated
    Jan 2, 2018
    Dataset provided by
    State of California
    Area covered
    1292107d5f0bc56f434aa28731c743bb1e23d1d2
    Description

    This is a heatmap (a graphical representation of data where the individual values contained in a matrix are represented as colors) of 2013 deer hunt kills within the California Department of Fish & Wildlife (CDFW) North Central Region (Region 2). The data was compiled from 2013 CDFW Automated Licensing Data System (ALDS) tables. Text descriptions from hunters were approximated and placed with geographic coordinates. The resulting point data was converted to a heatmap using Kernel Density Tool in ArcGIS 10.1

  6. ACS Median Household Income Variables - Boundaries

    • heat.gov
    • coronavirus-resources.esri.com
    • +10more
    Updated Oct 22, 2018
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    Esri (2018). ACS Median Household Income Variables - Boundaries [Dataset]. https://www.heat.gov/maps/45ede6d6ff7e4cbbbffa60d34227e462
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    Dataset updated
    Oct 22, 2018
    Dataset authored and provided by
    Esrihttp://esri.com/
    Area covered
    Description

    This layer shows median household income by race and by age of householder. This is shown by tract, county, and state boundaries. This service is updated annually to contain the most currently released American Community Survey (ACS) 5-year data, and contains estimates and margins of error. There are also additional calculated attributes related to this topic, which can be mapped or used within analysis. Median income and income source is based on income in past 12 months of survey. This layer is symbolized to show median household income. To see the full list of attributes available in this service, go to the "Data" tab, and choose "Fields" at the top right. Current Vintage: 2019-2023ACS Table(s): B19013B, B19013C, B19013D, B19013E, B19013F, B19013G, B19013H, B19013I, B19049, B19053Data downloaded from: Census Bureau's API for American Community Survey Date of API call: December 12, 2024National Figures: data.census.govThe United States Census Bureau's American Community Survey (ACS):About the SurveyGeography & ACSTechnical DocumentationNews & UpdatesThis ready-to-use layer can be used within ArcGIS Pro, ArcGIS Online, its configurable apps, dashboards, Story Maps, custom apps, and mobile apps. Data can also be exported for offline workflows. For more information about ACS layers, visit the FAQ. Please cite the Census and ACS when using this data.Data Note from the Census:Data are based on a sample and are subject to sampling variability. The degree of uncertainty for an estimate arising from sampling variability is represented through the use of a margin of error. The value shown here is the 90 percent margin of error. The margin of error can be interpreted as providing a 90 percent probability that the interval defined by the estimate minus the margin of error and the estimate plus the margin of error (the lower and upper confidence bounds) contains the true value. In addition to sampling variability, the ACS estimates are subject to nonsampling error (for a discussion of nonsampling variability, see Accuracy of the Data). The effect of nonsampling error is not represented in these tables.Data Processing Notes:This layer is updated automatically when the most current vintage of ACS data is released each year, usually in December. The layer always contains the latest available ACS 5-year estimates. It is updated annually within days of the Census Bureau's release schedule. Click here to learn more about ACS data releases.Boundaries come from the US Census TIGER geodatabases, specifically, the National Sub-State Geography Database (named tlgdb_(year)_a_us_substategeo.gdb). Boundaries are updated at the same time as the data updates (annually), and the boundary vintage appropriately matches the data vintage as specified by the Census. These are Census boundaries with water and/or coastlines erased for cartographic and mapping purposes. For census tracts, the water cutouts are derived from a subset of the 2020 Areal Hydrography boundaries offered by TIGER. Water bodies and rivers which are 50 million square meters or larger (mid to large sized water bodies) are erased from the tract level boundaries, as well as additional important features. For state and county boundaries, the water and coastlines are derived from the coastlines of the 2023 500k TIGER Cartographic Boundary Shapefiles. These are erased to more accurately portray the coastlines and Great Lakes. The original AWATER and ALAND fields are still available as attributes within the data table (units are square meters).The States layer contains 52 records - all US states, Washington D.C., and Puerto RicoCensus tracts with no population that occur in areas of water, such as oceans, are removed from this data service (Census Tracts beginning with 99).Percentages and derived counts, and associated margins of error, are calculated values (that can be identified by the "_calc_" stub in the field name), and abide by the specifications defined by the American Community Survey.Field alias names were created based on the Table Shells file available from the American Community Survey Summary File Documentation page.Negative values (e.g., -4444...) have been set to null, with the exception of -5555... which has been set to zero. These negative values exist in the raw API data to indicate the following situations:The margin of error column indicates that either no sample observations or too few sample observations were available to compute a standard error and thus the margin of error. A statistical test is not appropriate.Either no sample observations or too few sample observations were available to compute an estimate, or a ratio of medians cannot be calculated because one or both of the median estimates falls in the lowest interval or upper interval of an open-ended distribution.The median falls in the lowest interval of an open-ended distribution, or in the upper interval of an open-ended distribution. A statistical test is not appropriate.The estimate is controlled. A statistical test for sampling variability is not appropriate.The data for this geographic area cannot be displayed because the number of sample cases is too small.

  7. Hotterdam physical characteristics

    • search.datacite.org
    • figshare.com
    Updated Dec 11, 2015
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    Alexander Wandl; F. (Frank) van der Hoeven (2015). Hotterdam physical characteristics [Dataset]. http://doi.org/10.4121/uuid:8e68fa44-3265-4cc6-8255-20edc35aceb0
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    Dataset updated
    Dec 11, 2015
    Dataset provided by
    DataCitehttps://www.datacite.org/
    TU Delft
    Authors
    Alexander Wandl; F. (Frank) van der Hoeven
    License

    https://doi.org/10.4121/resource:terms_of_usehttps://doi.org/10.4121/resource:terms_of_use

    Area covered
    Description

    This dataset contains all variables that were used to calculate the physical heat cluster map of Hotterdam. Parent item: Hotterdam: Urban heat in Rotterdam and health effects Heat waves will occur in Rotterdam with greater frequency in the future. Those affected most will be the elderly – a group that is growing in size. In the light of the Paris heat wave of August 2003 and the one in Rotterdam in July 2006, mortality rates among the elderly in particular are likely to rise in the summer. The aim of the Hotterdam research project was to gain a better understanding of urban heat. Heat was measured and the surface energy balance modelled from that perspective. Social and physical features of the city were identified in detail with the help of satellite images, GIS and 3D models. The links between urban heat/surface energy balance and the social/physical features of Rotterdam were determined on the basis of multivariable regression analysis. The decisive features of the heat problem were then clustered and illustrated on a social and a physical heat map. The research project produced two heat maps, an atlas of underlying data.

  8. n

    Figures 10-18 : Estimation of Solar Resource Based on Meteorological and...

    • narcis.nl
    • data.mendeley.com
    Updated Sep 29, 2020
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    Enríquez Velásquez, E (via Mendeley Data) (2020). Figures 10-18 : Estimation of Solar Resource Based on Meteorological and Geographical Data: Sonora State in North-Western Territory of Mexico as Case of Study [Dataset]. http://doi.org/10.17632/6p2zzwh6gd.1
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    Dataset updated
    Sep 29, 2020
    Dataset provided by
    Data Archiving and Networked Services (DANS)
    Authors
    Enríquez Velásquez, E (via Mendeley Data)
    Description

    This data is a series of heat maps to analyze the solar resource available in the state of Sonora. Each figure has 3 heat maps, solar radiation, maximum and minimum temperatures for all the municipalities in the state. This allows to value the photovoltaic potential in the region and analyze the advantages and disadvantages of future solar projects for urban areas in the state. This data are part of the paper : Estimation of Solar Resource Based on Meteorological and Geographical Data: Sonora State in North-Western Territory of Mexico as Case of Study.

  9. 3

    3D Mapping Modelling Market Report

    • promarketreports.com
    doc, pdf, ppt
    Updated Feb 1, 2025
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    Pro Market Reports (2025). 3D Mapping Modelling Market Report [Dataset]. https://www.promarketreports.com/reports/3d-mapping-modelling-market-10299
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    doc, pdf, pptAvailable download formats
    Dataset updated
    Feb 1, 2025
    Dataset authored and provided by
    Pro Market Reports
    License

    https://www.promarketreports.com/privacy-policyhttps://www.promarketreports.com/privacy-policy

    Time period covered
    2025 - 2033
    Area covered
    Global
    Variables measured
    Market Size
    Description

    The global 3D mapping and modeling market is expected to grow significantly in the next few years as demand increases for detailed and accurate representations of physical environments in three-dimensional space. Estimated to be valued at USD 38.62 billion in the year 2025, the market was expected to grow at a CAGR of 14.5% from 2025 to 2033 and was estimated to reach an amount of USD 90.26 billion by the end of 2033. The high growth rate is because of improvement in advanced technologies with the development of high-resolution sensors and methods of photogrammetry that make possible higher-resolution realistic and immersive 3D models.Key trends in the market are the adoption of virtual and augmented reality (VR/AR) applications, 3D mapping with smart city infrastructure, and increased architecture, engineering, and construction utilization of 3D models. Other factors are driving the growing adoption of cloud-based 3D mapping and modeling solutions. The solutions promise scalability, cost-effectiveness, and easy access to 3D data, thus appealing to business and organizations of all sizes. Recent developments include: Jun 2023: Nomoko (Switzerland), a leading provider of real-world 3D data technology, announced that it has joined the Overture Maps Foundation, a non-profit organization committed to fostering collaboration and innovation in the geospatial domain. Nomoko will collaborate with Meta, Amazon Web Services (AWS), TomTom, and Microsoft, to create interoperable, accessible 3D datasets, leveraging its real-world 3D modeling capabilities., May 2023: The Sanborn Map Company (Sanborn), an authority in 3D models, announced the development of a powerful new tool, the Digital Twin Base Map. This innovative technology sets a new standard for urban analysis, implementation of Digital Cities, navigation, and planning with a fundamental transformation from a 2D map to a 3D environment. The Digital Twin Base Map is a high-resolution 3D map providing unprecedented detail and accuracy., Feb 2023: Bluesky Geospatial launched the MetroVista, a 3D aerial mapping program in the USA. The service employs a hybrid imaging-Lidar airborne sensor to capture highly detailed 3D data, including 360-degree views of buildings and street-level features, in urban areas to create digital twins, visualizations, and simulations., Feb 2023: Esri, a leading global provider of geographic information system (GIS), location intelligence, and mapping solutions, released new ArcGIS Reality Software to capture the world in 3D. ArcGIS Reality enables site, city, and country-wide 3D mapping for digital twins. These 3D models and high-resolution maps allow organizations to analyze and interact with a digital world, accurately showing their locations and situations., Jan 2023: Strava, a subscription-based fitness platform, announced the acquisition of FATMAP, a 3D mapping platform, to integrate into its app. The acquisition adds FATMAP's mountain-focused maps to Strava's platform, combining with the data already within Strava's products, including city and suburban areas for runners and other fitness enthusiasts., Jan 2023: The 3D mapping platform FATMAP is acquired by Strava. FATMAP applies the concept of 3D visualization specifically for people who like mountain sports like skiing and hiking., Jan 2022: GeoScience Limited (the UK) announced receiving funding from Deep Digital Cornwall (DDC) to develop a new digital heat flow map. The DDC project has received grant funding from the European Regional Development Fund. This study aims to model the heat flow in the region's shallower geothermal resources to promote its utilization in low-carbon heating. GeoScience Ltd wants to create a more robust 3D model of the Cornwall subsurface temperature through additional boreholes and more sophisticated modeling techniques., Aug 2022: In order to create and explore the system's possibilities, CGTrader worked with the online retailer of dietary supplements Hello100. The system has the ability to scale up the generation of more models, and it has enhanced and improved Hello100's appearance on Amazon Marketplace.. Key drivers for this market are: The demand for 3D maps and models is growing rapidly across various industries, including architecture, engineering, and construction (AEC), manufacturing, transportation, and healthcare. Advances in hardware, software, and data acquisition techniques are making it possible to create more accurate, detailed, and realistic 3D maps and models. Digital twins, which are virtual representations of real-world assets or systems, are driving the demand for 3D mapping and modeling technologies for the creation of accurate and up-to-date digital representations.

    . Potential restraints include: The acquisition and processing of 3D data can be expensive, especially for large-scale projects. There is a lack of standardization in the 3D mapping modeling industry, which can make it difficult to share and exchange data between different software and systems. There is a shortage of skilled professionals who are able to create and use 3D maps and models effectively.. Notable trends are: 3D mapping and modeling technologies are becoming essential for a wide range of applications, including urban planning, architecture, construction, environmental management, and gaming. Advancements in hardware, software, and data acquisition techniques are enabling the creation of more accurate, detailed, and realistic 3D maps and models. Digital twins, which are virtual representations of real-world assets or systems, are driving the demand for 3D mapping and modeling technologies for the creation of accurate and up-to-date digital representations..

  10. C

    Ambient heat potential map WMS

    • ckan.mobidatalab.eu
    wms
    Updated Jun 7, 2023
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    NationaalGeoregisterNL (2023). Ambient heat potential map WMS [Dataset]. https://ckan.mobidatalab.eu/dataset/potentialmap-ambientheat-wms
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    wmsAvailable download formats
    Dataset updated
    Jun 7, 2023
    Dataset provided by
    NationaalGeoregisterNL
    Description

    The Heat Atlas of the Netherlands is a digital, geographical map on which heat supply and demand in our country are indicated. On the supply side, this concerns (potentially) suitable locations for heat and cold storage (TES), deep geothermal energy, biomass and residual heat. These layers show the potential for ATES systems per neighborhood and per municipality.

  11. C

    Potential map Residual heat WMS

    • ckan.mobidatalab.eu
    wms
    Updated Jun 13, 2023
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    NationaalGeoregisterNL (2023). Potential map Residual heat WMS [Dataset]. https://ckan.mobidatalab.eu/dataset/potentialmap-residualheat-wms
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    wmsAvailable download formats
    Dataset updated
    Jun 13, 2023
    Dataset provided by
    NationaalGeoregisterNL
    Description

    The Heat Atlas of the Netherlands is a digital, geographical map on which heat supply and demand in our country are indicated. On the supply side, this concerns (potentially) suitable locations for heat and cold storage (TES), deep geothermal energy, biomass and residual heat. This layer shows the location of industry, their energy demand and CO2 emissions for the purpose of estimating the potential of using residual heat.

  12. g

    Potential map residual flows WMS | gimi9.com

    • gimi9.com
    Updated Dec 22, 2024
    + more versions
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    (2024). Potential map residual flows WMS | gimi9.com [Dataset]. https://gimi9.com/dataset/eu_ceda1b88-32ac-40b2-a841-71eb041c9427
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    Dataset updated
    Dec 22, 2024
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The Warmteatlas Nederland is a digital, geographical map on which heat supply and demand are indicated in our country. On the supply side, these are (potentially) suitable locations of heat and cold storage (WKO), deep geothermal energy, biomass and residual heat. These layers show the potential for biomass per municipality.

  13. ACS Poverty Status Variables - Boundaries

    • coronavirus-resources.esri.com
    • covid-hub.gio.georgia.gov
    • +13more
    Updated Oct 22, 2018
    + more versions
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    Esri (2018). ACS Poverty Status Variables - Boundaries [Dataset]. https://coronavirus-resources.esri.com/maps/0e468b75bca545ee8dc4b039cbb5aff6
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    Dataset updated
    Oct 22, 2018
    Dataset authored and provided by
    Esrihttp://esri.com/
    Area covered
    Description

    This layer shows poverty status by age group. This is shown by tract, county, and state boundaries. This service is updated annually to contain the most currently released American Community Survey (ACS) 5-year data, and contains estimates and margins of error. There are also additional calculated attributes related to this topic, which can be mapped or used within analysis. Poverty status is based on income in past 12 months of survey. This layer is symbolized to show the percentage of the population whose income falls below the Federal poverty line. To see the full list of attributes available in this service, go to the "Data" tab, and choose "Fields" at the top right. Current Vintage: 2019-2023ACS Table(s): B17020, C17002Data downloaded from: Census Bureau's API for American Community Survey Date of API call: December 12, 2024National Figures: data.census.govThe United States Census Bureau's American Community Survey (ACS):About the SurveyGeography & ACSTechnical DocumentationNews & UpdatesThis ready-to-use layer can be used within ArcGIS Pro, ArcGIS Online, its configurable apps, dashboards, Story Maps, custom apps, and mobile apps. Data can also be exported for offline workflows. For more information about ACS layers, visit the FAQ. Please cite the Census and ACS when using this data.Data Note from the Census:Data are based on a sample and are subject to sampling variability. The degree of uncertainty for an estimate arising from sampling variability is represented through the use of a margin of error. The value shown here is the 90 percent margin of error. The margin of error can be interpreted as providing a 90 percent probability that the interval defined by the estimate minus the margin of error and the estimate plus the margin of error (the lower and upper confidence bounds) contains the true value. In addition to sampling variability, the ACS estimates are subject to nonsampling error (for a discussion of nonsampling variability, see Accuracy of the Data). The effect of nonsampling error is not represented in these tables.Data Processing Notes:This layer is updated automatically when the most current vintage of ACS data is released each year, usually in December. The layer always contains the latest available ACS 5-year estimates. It is updated annually within days of the Census Bureau's release schedule. Click here to learn more about ACS data releases.Boundaries come from the US Census TIGER geodatabases, specifically, the National Sub-State Geography Database (named tlgdb_(year)_a_us_substategeo.gdb). Boundaries are updated at the same time as the data updates (annually), and the boundary vintage appropriately matches the data vintage as specified by the Census. These are Census boundaries with water and/or coastlines erased for cartographic and mapping purposes. For census tracts, the water cutouts are derived from a subset of the 2020 Areal Hydrography boundaries offered by TIGER. Water bodies and rivers which are 50 million square meters or larger (mid to large sized water bodies) are erased from the tract level boundaries, as well as additional important features. For state and county boundaries, the water and coastlines are derived from the coastlines of the 2023 500k TIGER Cartographic Boundary Shapefiles. These are erased to more accurately portray the coastlines and Great Lakes. The original AWATER and ALAND fields are still available as attributes within the data table (units are square meters).The States layer contains 52 records - all US states, Washington D.C., and Puerto RicoCensus tracts with no population that occur in areas of water, such as oceans, are removed from this data service (Census Tracts beginning with 99).Percentages and derived counts, and associated margins of error, are calculated values (that can be identified by the "_calc_" stub in the field name), and abide by the specifications defined by the American Community Survey.Field alias names were created based on the Table Shells file available from the American Community Survey Summary File Documentation page.Negative values (e.g., -4444...) have been set to null, with the exception of -5555... which has been set to zero. These negative values exist in the raw API data to indicate the following situations:The margin of error column indicates that either no sample observations or too few sample observations were available to compute a standard error and thus the margin of error. A statistical test is not appropriate.Either no sample observations or too few sample observations were available to compute an estimate, or a ratio of medians cannot be calculated because one or both of the median estimates falls in the lowest interval or upper interval of an open-ended distribution.The median falls in the lowest interval of an open-ended distribution, or in the upper interval of an open-ended distribution. A statistical test is not appropriate.The estimate is controlled. A statistical test for sampling variability is not appropriate.The data for this geographic area cannot be displayed because the number of sample cases is too small.

  14. e

    Potential card Ambient heat WFS

    • data.europa.eu
    Updated Jul 11, 2023
    + more versions
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    (2023). Potential card Ambient heat WFS [Dataset]. https://data.europa.eu/data/datasets/977bc81b-1f93-4911-b7e9-9f185eb4950c
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    inspire download serviceAvailable download formats
    Dataset updated
    Jul 11, 2023
    Description

    The WarmteAtlas Nederland is a digital, geographical map on which heat supply and demand in our country are indicated. On the supply side, these are (potentially) suitable locations for heat and cold storage (WKO), deep geothermal energy, biomass and residual heat. These layers show the potential for ATES systems per neighbourhood and per municipality.

  15. w

    Global Heat Maps Software Market Research Report: By Application (Business...

    • wiseguyreports.com
    Updated Mar 20, 2025
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    wWiseguy Research Consultants Pvt Ltd (2025). Global Heat Maps Software Market Research Report: By Application (Business Analysis, Web Analytics, Geographical Mapping, User Behavior Tracking), By Deployment Type (On-Premise, Cloud-Based), By End User (Retail, Healthcare, Education, Transportation, Finance), By Functionality (Data Visualization, Real-Time Analysis, Reporting, Predictive Analytics) and By Regional (North America, Europe, South America, Asia Pacific, Middle East and Africa) - Forecast to 2032. [Dataset]. https://www.wiseguyreports.com/cn/reports/heat-maps-software-market
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    Dataset updated
    Mar 20, 2025
    Dataset authored and provided by
    wWiseguy Research Consultants Pvt Ltd
    License

    https://www.wiseguyreports.com/pages/privacy-policyhttps://www.wiseguyreports.com/pages/privacy-policy

    Area covered
    Global
    Description
    BASE YEAR2024
    HISTORICAL DATA2019 - 2024
    REPORT COVERAGERevenue Forecast, Competitive Landscape, Growth Factors, and Trends
    MARKET SIZE 20232.58(USD Billion)
    MARKET SIZE 20242.82(USD Billion)
    MARKET SIZE 20325.8(USD Billion)
    SEGMENTS COVEREDApplication, Deployment Type, End User, Functionality, Regional
    COUNTRIES COVEREDNorth America, Europe, APAC, South America, MEA
    KEY MARKET DYNAMICSGrowing data visualization demand, Increasing usage in retail analytics, Rising integration with IoT, Enhanced analytical capabilities, Increasing adoption of AI technologies
    MARKET FORECAST UNITSUSD Billion
    KEY COMPANIES PROFILEDMaptitude, Microsoft, IBM, Google, Hexagon, D3.js, TIBCO Software, Oracle, MapInfo, Sisense, Alteryx, Tableau, Qlik, SAS, Esri
    MARKET FORECAST PERIOD2025 - 2032
    KEY MARKET OPPORTUNITIESIntegration with AI analytics, Expansion in e-commerce applications, Increased demand for mobile solutions, Adoption in urban planning, Growth in real-time data visualization
    COMPOUND ANNUAL GROWTH RATE (CAGR) 9.42% (2025 - 2032)
  16. g

    'Climate Just' data | gimi9.com

    • gimi9.com
    Updated Aug 27, 2015
    + more versions
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    (2015). 'Climate Just' data | gimi9.com [Dataset]. https://gimi9.com/dataset/london_climate-just-data
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    Dataset updated
    Aug 27, 2015
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The 'Climate Just' Map Tool shows the geography of England’s vulnerability to climate change at a neighbourhood scale. The Climate Just Map Tool shows which places may be most disadvantaged through climate impacts. It aims to raise awareness about how social vulnerability combined with exposure to hazards, like flooding and heat, may lead to uneven impacts in different neighbourhoods, causing climate disadvantage. Climate Just Map Tool includes maps on: Flooding (river/coastal and surface water) Heat Fuel poverty. The flood and heat analysis for England is based on an assessment of social vulnerability in 2011 carried out by the University of Manchester. This has been combined with national datasets on exposure to flooding, using Environment Agency data, and exposure to heat, using UKCP09 data. Data is available at Middle Super Output Area (MSOA) level across England. Summaries of numbers of MSOAs are shown in the file named Climate Just-LA_summaries_vulnerability_disadvantage_Dec2014.xls Indicators include: Climate Just-Flood disadvantage_2011_Dec2014.xlsx Fluvial flood disadvantage indexPluvial flood disadvantage index (1 in 30 years)Pluvial flood disadvantage index (1 in 100 years)Pluvial flood disadvantage index (1 in 1000 years) Climate Just-Flood_hazard_exposure_2011_Dec2014.xlsx Percentage of area at moderate and significant risk of fluvial floodingPercentage of area at risk of surface water flooding (1 in 30 years)Percentage of area at risk of surface water flooding (1 in 100 years)Percentage of area at risk of surface water flooding (1 in 1000 years) Climate Just-SSVI_indices_2011_Dec2014.xlsx Sensitivity - flood and heatAbility to prepare - floodAbility to respond - floodAbility to recover - floodEnhanced exposure - floodAbility to prepare - heatAbility to respond - heatAbility to recover - heatEnhanced exposure - heatSocio-spatial vulnerability index - floodSocio-spatial vulnerability index - heat Climate Just-SSVI_indicators_2011_Dec2014.xlsx % children < 5 years old% people > 75 years old% people with long term ill-health/disability (activities limited a little or a lot)% households with at least one person with long term ill-health/disability (activities limited a little or a lot)% unemployed% in low income occupations (routine & semi-routine)% long term unemployed / never worked% households with no adults in employment and dependent childrenAverage weekly household net income estimate (equivalised after housing costs) (Pounds)% all pensioner households% households rented from social landlords% households rented from private landlords% born outside UK and IrelandFlood experience (% area associated with past events)Insurance availability (% area with 1 in 75 chance of flooding)% people with % unemployed% in low income occupations (routine & semi-routine)% long term unemployed / never worked% households with no adults in employment and dependent childrenAverage weekly household net income estimate (equivalised after housing costs) (Pounds)% all pensioner households% born outside UK and IrelandFlood experience (% area associated with past events)Insurance availability (% area with 1 in 75 chance of flooding)% single pensioner households% lone parent household with dependent children% people who do not provide unpaid care% disabled (activities limited a lot)% households with no carCrime score (IMD)% area not roadDensity of retail units (count /km2)% change in number of local VAT-based units% people with % not home workers% unemployed% in low income occupations (routine & semi-routine)% long term unemployed / never worked% households with no adults in employment and dependent childrenAverage weekly household net income estimate (Pounds)% all pensioner households% born outside UK and IrelandInsurance availability (% area with 1 in 75 chance of flooding)% single pensioner households% lone parent household with dependent children% people who do not provide unpaid care% disabled (activities limited a lot)% households with no carTravel time to nearest GP by walk/public transport (mins - representative time)% of at risk population (no car) outside of 15 minutes by walk/public transport to nearest GP Number of GPs within 15 minutes by walk/public transport Number of GPs within 15 minutes by car Travel time to nearest hospital by walk/public transport (mins - representative time)Travel time to nearest hospital by car (mins - representative time)% of at risk population outside of 30 minutes by walk/PT to nearest hospitalNumber of hospitals within 30 minutes by walk/public transport Number of hospitals within 30 minutes by car % people with % not home workersChange in median house price 2004-09 (Pounds)% area not green space Area of domestic buildings per area of domestic gardens (m2 per m2)% area not blue spaceDistance to coast (m)Elevation (m)% households with the lowest floor level: Basement or semi-basement% households with the lowest floor level: ground floor% households with the lowest floor level: fifth floor or higher

  17. u

    Climate Change Pressures Plant Hardiness Zones (Map Service)

    • agdatacommons.nal.usda.gov
    • datasets.ai
    • +3more
    bin
    Updated Oct 1, 2024
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    U.S. Forest Service (2024). Climate Change Pressures Plant Hardiness Zones (Map Service) [Dataset]. https://agdatacommons.nal.usda.gov/articles/dataset/Climate_Change_Pressures_Plant_Hardiness_Zones_Map_Service_/25973164
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    binAvailable download formats
    Dataset updated
    Oct 1, 2024
    Dataset authored and provided by
    U.S. Forest Service
    License

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

    Description

    Evaluating multiple signals of climate change across the conterminous United States during three 30-year periods (2010�2039, 2040�2069, 2070�2099) during this century to a baseline period (1980�2009) emphasizes potential changes for growing degree days (GDD), plant hardiness zones (PHZ), and heat zones. These indices were derived using the CCSM4 and GFDL CM3 models under the representative concentration pathways 4.5 and 8.5, respectively, and included in Matthews et al. (2018). Daily temperature was downscaled by Maurer et al. (https://doi.org/10.1029/2007EO470006) at a 1/8 degree grid scale and used to obtain growing degree days, plant hardiness zones, and heat zones. Each of these indices provides unique information about plant health related to changes in climatic conditions that influence establishment, growth, and survival. These data and the calculated changes are provided as 14 individual IMG files for each index to assist with management planning and decision making into the future. For each of the four indices the following are included: two baseline files (1980�2009), three files representing 30-year periods for the scenario CCSM4 under RCP 4.5 along with three files of changes, and three files representing 30-year periods for the scenario GFDL CM3 under RCP 8.5 along with three files of changes.�Plant hardiness zones provide a general indication of the extent of overwinter stress experienced by plants. PHZ are based on the average annual extreme minimum temperatures and have been used by horticulturists to evaluate the cold hardiness of plants. Specifically, the value used here is the absolute minimum temperature achieved for each year and reported as the 30-year mean. Because they reflect cold tolerance for many plant species, including woody ones, hardiness zones are most likely to reflect plant range limits. The zonal variations caused by warming temperatures in the future will therefore be useful to approximately delineate niche constraints of many plant species and hence their future range potential. Plant hardiness zones and subzones were delineated according to the USDA definitions, which break the geography into zones by 10 �F (5.56 �C) increments from zone 1 (-55 to -45.6 �C) to zone 13 (15.7 to 22 �C) of annual extreme minimum temperature. To define the coldest day per year, daily minimum temperatures were identified within the period July 1 to June 30, with the nominal year assigned to the first 6 months of the 12-month period.�Original data and associated metadata can be downloaded from this website:�https://www.fs.usda.gov/rds/archive/Product/RDS-2019-0001This record was taken from the USDA Enterprise Data Inventory that feeds into the https://data.gov catalog. Data for this record includes the following resources: ISO-19139 metadata ArcGIS Hub Dataset ArcGIS GeoService For complete information, please visit https://data.gov.

  18. ACS Population Variables - Boundaries

    • heat.gov
    • opendata.suffolkcountyny.gov
    • +11more
    Updated Aug 16, 2022
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    Esri (2022). ACS Population Variables - Boundaries [Dataset]. https://www.heat.gov/maps/f430d25bf03744edbb1579e18c4bf6b8
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    Dataset updated
    Aug 16, 2022
    Dataset authored and provided by
    Esrihttp://esri.com/
    Area covered
    Description

    This layer shows total population count by sex and age group. This is shown by tract, county, and state boundaries. This service is updated annually to contain the most currently released American Community Survey (ACS) 5-year data, and contains estimates and margins of error. There are also additional calculated attributes related to this topic, which can be mapped or used within analysis. This layer is symbolized to show the percentage of the population that are considered dependent (ages 65+ and <18). To see the full list of attributes available in this service, go to the "Data" tab, and choose "Fields" at the top right. Current Vintage: 2019-2023ACS Table(s): B01001Data downloaded from: Census Bureau's API for American Community Survey Date of API call: December 12, 2024National Figures: data.census.govThe United States Census Bureau's American Community Survey (ACS):About the SurveyGeography & ACSTechnical DocumentationNews & UpdatesThis ready-to-use layer can be used within ArcGIS Pro, ArcGIS Online, its configurable apps, dashboards, Story Maps, custom apps, and mobile apps. Data can also be exported for offline workflows. For more information about ACS layers, visit the FAQ. Please cite the Census and ACS when using this data.Data Note from the Census:Data are based on a sample and are subject to sampling variability. The degree of uncertainty for an estimate arising from sampling variability is represented through the use of a margin of error. The value shown here is the 90 percent margin of error. The margin of error can be interpreted as providing a 90 percent probability that the interval defined by the estimate minus the margin of error and the estimate plus the margin of error (the lower and upper confidence bounds) contains the true value. In addition to sampling variability, the ACS estimates are subject to nonsampling error (for a discussion of nonsampling variability, see Accuracy of the Data). The effect of nonsampling error is not represented in these tables.Data Processing Notes:This layer is updated automatically when the most current vintage of ACS data is released each year, usually in December. The layer always contains the latest available ACS 5-year estimates. It is updated annually within days of the Census Bureau's release schedule. Click here to learn more about ACS data releases.Boundaries come from the US Census TIGER geodatabases, specifically, the National Sub-State Geography Database (named tlgdb_(year)_a_us_substategeo.gdb). Boundaries are updated at the same time as the data updates (annually), and the boundary vintage appropriately matches the data vintage as specified by the Census. These are Census boundaries with water and/or coastlines erased for cartographic and mapping purposes. For census tracts, the water cutouts are derived from a subset of the 2020 Areal Hydrography boundaries offered by TIGER. Water bodies and rivers which are 50 million square meters or larger (mid to large sized water bodies) are erased from the tract level boundaries, as well as additional important features. For state and county boundaries, the water and coastlines are derived from the coastlines of the 2023 500k TIGER Cartographic Boundary Shapefiles. These are erased to more accurately portray the coastlines and Great Lakes. The original AWATER and ALAND fields are still available as attributes within the data table (units are square meters).The States layer contains 52 records - all US states, Washington D.C., and Puerto RicoCensus tracts with no population that occur in areas of water, such as oceans, are removed from this data service (Census Tracts beginning with 99).Percentages and derived counts, and associated margins of error, are calculated values (that can be identified by the "_calc_" stub in the field name), and abide by the specifications defined by the American Community Survey.Field alias names were created based on the Table Shells file available from the American Community Survey Summary File Documentation page.Negative values (e.g., -4444...) have been set to null, with the exception of -5555... which has been set to zero. These negative values exist in the raw API data to indicate the following situations:The margin of error column indicates that either no sample observations or too few sample observations were available to compute a standard error and thus the margin of error. A statistical test is not appropriate.Either no sample observations or too few sample observations were available to compute an estimate, or a ratio of medians cannot be calculated because one or both of the median estimates falls in the lowest interval or upper interval of an open-ended distribution.The median falls in the lowest interval of an open-ended distribution, or in the upper interval of an open-ended distribution. A statistical test is not appropriate.The estimate is controlled. A statistical test for sampling variability is not appropriate.The data for this geographic area cannot be displayed because the number of sample cases is too small.

  19. g

    Potency card Residual heat WFS | gimi9.com

    • gimi9.com
    Updated Dec 22, 2024
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    (2024). Potency card Residual heat WFS | gimi9.com [Dataset]. https://gimi9.com/dataset/eu_972edbaa-f860-4c48-b449-4f238a263472
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    Dataset updated
    Dec 22, 2024
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The WarmteAtlas Nederland is a digital, geographical map on which heat supply and demand in our country are indicated. On the supply side, these are (potentially) suitable locations for heat and cold storage (WKO), deep geothermal energy, biomass and residual heat. This layer shows the location of industry, their energy demand and CO2 emissions in order to estimate the potential of using residual heat.

  20. C

    Potential map residual flows WMS

    • ckan.mobidatalab.eu
    wms
    Updated Jun 9, 2023
    + more versions
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    NationaalGeoregisterNL (2023). Potential map residual flows WMS [Dataset]. https://ckan.mobidatalab.eu/dataset/potentialmap-residualflows-wms
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    wmsAvailable download formats
    Dataset updated
    Jun 9, 2023
    Dataset provided by
    NationaalGeoregisterNL
    Description

    The Heat Atlas of the Netherlands is a digital, geographical map on which heat supply and demand in our country are indicated. On the supply side, this concerns (potentially) suitable locations for heat and cold storage (TES), deep geothermal energy, biomass and residual heat. These layers show the potential for biomass per municipality.

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(2018). New heat-flow contour map of the conterminous United States [Dataset]. https://data.wu.ac.at/schema/geothermaldata_org/NmQzZDY5NDAtZDlkNS00MGFjLThlY2ItNWZiYzU0ZjlkNDcy

New heat-flow contour map of the conterminous United States

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34 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Apr 9, 2018
Area covered
United States
Description

No Publication Abstract is Available

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