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Residential Heat Demand - Baden Württemberg, Germany


DLR
EOC
heat demand
residential buildings
LoD2
INSPIRE
building type
building age

Information about residential heat demand is crucial for sustainable climate mitigation and adaptation as approximately 30% of the heat demand stem from residential heating which contribute to one third of the nationwide CO2 emissions. This service provides information on heat demand in kWh/a based on three different refurbishment scenarios (no refurbishment, advanced refurbishment, usual refurbishment).

Residential heat demand is calculated based on a method using the constructional elements of the buildings, as well as on building type and construction period and climatic properties. The constructional elements (exterior wall surface, roof surface, ground surface and volume) are extracted from LoD2 data, whereas building type (single-family house, terraced house or multi-family house) and construction period are predicted using the machine learning algorithm Random Forest. For the climatic properties degree days are used from the German Weather Service stations and are derived area-wide using a linear regression. Three different heat demand scenarios, differing based on the assumed amount of refurbishment conducted are calculated. The three heat demand scenarios are referred to as: no refurbishment, usual refurbishment and advanced refurbishment. The building-specific heat demand is aggregated to a 100x100 m grid and due to privacy protection, cells containing less than 3 residential buildings are not depicted.

This is a product of the project "Entwicklung eines standardisierten Analyse- und Ergebnisrasters für Wärmepläne zur Umsetzung der Energiewende im kommunalen Bereich" (ANSWER-Kommunal) funded by the Federal Ministry for Economic Affairs and Climate Action (Bundesministerium für Wirtschaft und Klimaschutz (BMWK)). Grant number: 020E-SY 48192

References:

  • Wurm M, Droin A, Stark T, Geiß C, Sulzer W, Taubenböck H (2021): Deep Learning-Based Generation of Building Stock Data from Remote Sensing for Urban Hear Demand Modeling. ISPRS Int. J. Geo-Inf. 10, 23. DOI: 10.3390/ijgi10010023
  • Garbasevschi OM, Estevam Schmiedt J, Verma T, Lefter I, Korthals Altes W, Droin A, Schiricke B & Wurm M (2021): Spatial factors influencing building age prediction and implications for urban energy modelling. Computers, Environment and Urban Systems 88. DOI: 10.1016/j.compenvurbsys.2021.101637
  • Droin A, Wurm M, Sulzer, W (2020). Semantic labelling of building types. A comparison of two approaches using Random Forest and Deep Learning. Wissenschaftlich-Technische Jahrestagung der DGPF, Band 29.
  • Wurm, M, Schmitt, A, Taubenböck, H (2015): Building Types' Classification Using Shape-Based Features and Linear Discriminant Functions. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 9 (5). DOI: 10.1109/JSTARS.2015.2465131

Contacts:

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Items:

Residential heat demand - Usual Refurbishment

This layer contains the residential heat demand scenario 'usual refurbishment' for the area of Baden Wuerttemberg at a spatial resolution of 100m x 100m.

Title: EOC Demo Map Service
Endpoint: https://geoservice.dlr.de/eoc/demo/wms
Layer: HD_USUAL_RF
Capabilities: GetCapabilities (XML)
Preview: GetMap (Openlayers)

Residential heat demand - No Refurbishment

This layer contains the residential heat demand scenario 'no refurbishment' for the area of Baden Wuerttemberg at a spatial resolution of 100m x 100m.

Title: EOC Demo Map Service
Endpoint: https://geoservice.dlr.de/eoc/demo/wms
Layer: HD_NO_RF
Capabilities: GetCapabilities (XML)
Preview: GetMap (Openlayers)

Residential heat demand - Advanced Refurbishment

This layer contains the residential heat demand scenario 'advanced refurbishment' for the area of Baden Wuerttemberg at a spatial resolution of 100m x 100m.

Title: EOC Demo Map Service
Endpoint: https://geoservice.dlr.de/eoc/demo/wms
Layer: HD_ADV_RF
Capabilities: GetCapabilities (XML)
Preview: GetMap (Openlayers)