Smart Data Models
This Models describe the main entities involved with smart applications that deal with environmental issues.
https://github.com/smart-data-models/dataModel.Environment
Category: Sustainable Development
Sub Category: Data Catalogs and Interfaces
Keywords from Contributors
fiware tmforum data-models interoperability ngsi-ld reference-architecture agriculture
Last synced: about 9 hours ago
JSON representation
Repository metadata
Environment Data Model
- Host: GitHub
- URL: https://github.com/smart-data-models/dataModel.Environment
- Owner: smart-data-models
- License: other
- Created: 2019-06-06T14:59:48.000Z (almost 6 years ago)
- Default Branch: master
- Last Pushed: 2024-12-09T11:41:02.000Z (5 months ago)
- Last Synced: 2025-04-17T22:59:10.570Z (10 days ago)
- Language: Python
- Size: 4.12 MB
- Stars: 14
- Watchers: 3
- Forks: 14
- Open Issues: 0
- Releases: 0
-
Metadata Files:
- Readme: README.md
- License: LICENSE
README.md
dataModel.Environment
These data models describe the main entities involved with smart applications that deal with environmental issues.
List of data models
The following entity types are available:
-
AeroAllergenObserved. An observation of pollen levels at a certain place and time.
-
AirQualityForecast. A forecast of air quality conditions valid during a period
-
AirQualityObserved. An observation of air quality conditions at a certain place and time.
-
AirQualityMonitoring. Air Quality Monitoring (AQM) Data Model.
-
ElectroMagneticObserved. The Data Model is intended to measure excessive electric and magnetic fields (EMFs), or radiation in a work or public environment according to the level of exposure to electromagnetic fields on the air. The frequency of the hertzian waves is conventionally lower than 300 GHz, propagating in space without artificial guide. They are between 9 kHz and 300 GHz.
-
EnvironmentObserved. This entity contains a harmonised description of the environmental conditions observed at a particular location and time. This entity is primarily associated with the vertical segment of the environment and agriculture but may also be used in smart home, smart cities, industry and related IoT applications.
-
FloodMonitoring. Flood Sensor Data Model intended to represent the level of flooding w.r.t water flow/level at a certain water mass(river, lake,etc.)..
-
IndoorEnvironmentObserved. An observation of air and climate conditions for indoor environments.
-
MosquitoDensity. A Data Model for density of mosquitoes in cities.
-
NightSkyQuality. Data regarding the observed sky quality and the status of the measuring device.
-
NoiseLevelObserved. An observation of those acoustic parameters that estimate noise pressure levels at a certain place and time.
-
NoisePollution. Noise Pollution data model merges specific and punctual noise measurements (coming, e.g. from NoiseLevelObservation entities) into average parameters referred to city areas, providing a more city-related data about noise pollution status and evolution.
-
NoisePollutionForecast. Noise Pollution forecast stores the expectation about noise pollution based on some input elements and the noise elements present.
-
WaterObserved. Water observation data model is intended to represent the parameters of flow, level and volume of water observed, as well as the swell information, over a fixed or variable area. This observation also includes the masses of floating objects on this area. The data collected is provided by Sensors, Cameras,Water stations positioned at specific or sensitive locations for rivers, streams, torrent, lakes, seas, etc.
-
PhreaticObserved. The Data Model is intended to measure, observe and control the level and quality of groundwater at a given time (T), by a fixed or mobile monitoring system. Depending on the device used, it is also possible to measure the quality of water such as its electrical conductivity, its salt content, its temperature, etc. In this case, the values measured are processed by the Data Model
WaterObserved
andWaterQualityObserved
. Additional Information about Attributes: For attributes dedicated to water, a MetaData attribute can also be used. it contains theTimeStamp
in seconds, thequalification
and controlstatus
of the measurement. -
RainFallRadarObserved. The Data Model is intended to measure the water slides on a predefined area by a set of 4 Location represented by a Geo property format.
-
TrafficEnvironmentImpact. Environmental Impact of traffic based on the vehicles traffic and their emission characteristics
-
TrafficEnvironmentImpactForecast. Environmental Impact of traffic based on the vehicles traffic expectations and their emission characteristics
Contributors
Link to the 11 current contributors of the data models of this Subject.
Contribution
You can raise an issue or submit your PR on existing data models
Owner metadata
- Name: Smart Data Models
- Login: smart-data-models
- Email:
- Kind: organization
- Description: A program led by FIWARE, IUDX, TM Forum, OASC and others to support the adoption of common compatible data models in smart solutions
- Website: https://smartdatamodels.org
- Location:
- Twitter: smartdatamodels
- Company:
- Icon url: https://avatars.githubusercontent.com/u/44724489?v=4
- Repositories: 71
- Last ynced at: 2023-03-03T23:45:03.404Z
- Profile URL: https://github.com/smart-data-models
GitHub Events
Total
- Issues event: 2
- Issue comment event: 2
- Push event: 2
Last Year
- Issues event: 2
- Issue comment event: 2
- Push event: 2
Committers metadata
Last synced: 7 days ago
Total Commits: 11,831
Total Committers: 14
Avg Commits per committer: 845.071
Development Distribution Score (DDS): 0.009
Commits in past year: 387
Committers in past year: 3
Avg Commits per committer in past year: 129.0
Development Distribution Score (DDS) in past year: 0.054
Name | Commits | |
---|---|---|
Alberto Abella | a****a@f****g | 11727 |
Mohamed Sadiq | 4****2 | 31 |
JilinHe | 4****e | 27 |
Jason Fox | j****x@f****g | 11 |
Fan5Shi | 4****i | 8 |
Srikrishnan V | s****8@g****m | 7 |
Jose Manuel Cantera | j****a@f****g | 6 |
Daniel Villalba | d****a@f****e | 4 |
Massimo Gaggero | m****o@c****t | 3 |
Dmitrii Demin | d****n@f****g | 2 |
Jose M. Cantera | j****a@g****m | 2 |
audunvennesland | 5****n | 1 |
m-arun | m****n@g****m | 1 |
Anupam Kumar | a****r@i****m | 1 |
Committer domains:
- fiware.org: 4
- india.nec.com: 1
- crs4.it: 1
- fiware.zone: 1
Issue and Pull Request metadata
Last synced: 1 day ago
Total issues: 8
Total pull requests: 17
Average time to close issues: 18 days
Average time to close pull requests: 17 days
Total issue authors: 7
Total pull request authors: 10
Average comments per issue: 1.75
Average comments per pull request: 0.82
Merged pull request: 16
Bot issues: 0
Bot pull requests: 0
Past year issues: 3
Past year pull requests: 2
Past year average time to close issues: about 1 month
Past year average time to close pull requests: 2 months
Past year issue authors: 3
Past year pull request authors: 2
Past year average comments per issue: 2.67
Past year average comments per pull request: 1.5
Past year merged pull request: 1
Past year bot issues: 0
Past year bot pull requests: 0
Top Issue Authors
- bobokrut (2)
- balbert-etraid (1)
- rjfv (1)
- hdelva (1)
- flopezag (1)
- EliottPaillard (1)
- manurag1234 (1)
Top Pull Request Authors
- MohamedSadiq102 (5)
- danielvillalbamota (2)
- caa06d9c (2)
- shyam28598 (2)
- mgaggero (1)
- m-arun (1)
- feki-rihab (1)
- Anupamskd7 (1)
- audunven (1)
- JilinHe (1)
Top Issue Labels
- bug (1)
Top Pull Request Labels
Score: 5.278114659230517