Difference between revisions of "Main Page"

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=== [[CityGML overview]] ===
 
=== [[CityGML overview]] ===
  
=== [[Other CityGML cross-disciplinary topics]] ===  
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=== [[Other CityGML cross-disciplinary topics]] ===
* Documentation and Schema
 
* Networks and Topology e.g. Utility Networks
 
* Metadata and Complex Attributes
 
* Material Module
 
* LoD Concept
 
* Versioning and Variants
 
* Volumetric Elements
 
* Time Series
 
* Parametric Prototypes
 

Revision as of 15:08, 1 July 2014

Welcome at the Wiki of the SIG3D Energy Working Group

Consult the SIG3D web site for further information about the SIG3D.


Note
This wiki consists of public and private parts. Private parts are only accessible by registered users.
To become a registered user, please contact Egbert Casper

ADE Energy Working groups

Group Building Physics and Materials (G1)

This group aims at developing the building physics modules of the CityGML ADE Energy: the building hull, the building thermal elements and their properties, the materials etc.

Group HVAC systems and Urban Energy Infrastructures (G2)

This group aims at developing the HVAC system module of the CityGML ADE Energy. Connection with centralised HVAC systems (District heating/cooling network) will be modelled their.

Group Building Occupants (G3)

This group aims at developing the Building occupants module of the CityGML ADE Energy. Building occupants are a important inputs of the building energy simulation. Standard parameters, statistical profiles and public database may have their place in the ADE Energy.

Group Metadata and scenarios (G4)

This group aims at developing the Metadata module of the CityGML Energy ADE, including the management of scenarios. Indeed, given the diversity of data quality/availability/sources in an urban energy analysis, data quality management is highly required.

Necessary information for CityGML ADE energy

Glossary of CityGML ADE Energy

CityGML overview

Other CityGML cross-disciplinary topics