ENER-BI: Integrating Energy and Spatial Data for Cities’ Decarbonisation Planning
Abstract
:1. Introduction
2. Materials and Methods
2.1. Identifying Requisites and Functionalities from a DSS Perspective
2.2. Literature Review for a Conceptual Framework
2.2.1. Regulatory Framework
2.2.2. City Decarbonisation Planning Framework
- Inventory and characterisation of the city (ANALYSE—Step 2 from [4]); mainly focusing on providing and integrating data of the most CO2 contributing sectors (building stock, mobility, and public lighting).
- City diagnosis in decarbonisation terms (DIAGNOSE—Step 3 from [4]); identifying the key local strengths and weaknesses, as well as the main opportunities and threats, for the future, integrating spatial quantitative and qualitative data in the development of such city diagnosis.
- Generation of future scenarios and consensus on city visioning (ENVISION—Step 4 from [4]); generating urban energy models to study and discuss the future implications of present decisions.
- Strategic planning (PLAN CITY LEVEL—Step 5 from [4]); enriching with spatial and quantitative data the impacts forecasted for the actions to be developed, described in the current plans.
- Follow-up, assessment, review, and potential up-scale of actions and plans developed in the city (ASSESS; VALIDATE; UP-SCALE—Steps 14, 15 and 16 from [4]); ensuring a close commissioning and post-intervention development, exploring potential replication of successful actions in other areas of the city.
2.2.3. Urban Energy Planning Tools
3. Results
3.1. ENER-BI DSS for Urban Decarbonisation Planning: Main Requisites
3.1.1. Information-Gathering as Input for ENER-BI DSS
3.1.2. Information Storage
Static Information
Dynamic Information
3.1.3. Data Integration, Treatment and KPI Calculations
- By sharing IDs between sensor and elements (i.e., building/public lamppost); hence, the sensor detects the element is connected to via ID and vice versa.
- By the location, the elements in the model are georeferenced, so they can be retrieved when selecting an area of interest.
- Define the area of interest.
- Set-up the scenario data.
- Select the structural elements inside the area of interest through the WFS 3D City Model published on degree and retrieve geometric information, as well as the useful metadata, such as rooftop area, building orientation, or shading grade.
- Get context data associated with the calculation scenario connecting to the PostgreSQL database (e.g., climatic zone, usage rate).
- Collect sensor data using the InfluxAPI to obtain solar irradiance.
- Process the data, with the defined procedures for each KPI, based on a service implemented specifically via REST API.
- Return the data via service, to be loaded on a map or dashboard.
3.1.4. DSS Outputs for Decision-Makers
3.1.5. Representation/Visualisation
3.2. ENER-BI DSS for Urban Decarbonisation Planning: Functionalities
3.2.1. Module 0—Inventory, Characterisation, and Monitoring
3.2.2. Module 1—Scenarios Generation for Decarbonisation Planning
3.2.3. Module 2—Decarbonisation Follow Up
- The automatization of the updating process of the inventory of Module 0 is a significant asset within this follow-up process of Module 2, as it always provides city planners with updated information.
- If corrective mechanisms are needed over time, the calculation processes of Module 1 for generating scenarios are also valid in the follow-up process, recalculating the potential impact of those corrections.
4. Discussion
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Decarbonisation Target | Information | Disaggregation Degree | Format | Periodicity |
---|---|---|---|---|
Public buildings | Building characteristics (i.e., age, indoor area, typology, energy certification) | Building | Georeferenced database | Yearly, at least |
Electricity consumption | Electricity meter/supply point | .txt, .csv or database | Monthly/hourly 1 | |
Gas consumption | Gas meter/supply point | .txt, .csv or database | Monthly | |
Other energy carriers’ consumption (i.e., District Heating) | Meter/supply point | .txt, .csv or database | Monthly | |
Public facilities | Electricity consumption | Electricity meter/supply point | .txt, .csv or database | Monthly/hourly 1 |
Public lighting | Electricity consumption | Lamppost/ node of lampposts | .txt, .csv or database | Monthly |
Public transport and fleets | Fuel consumption and Kms | Vehicle by type of fuel | .csv or database | Monthly |
Private buildings | Geometry of buildings | Building | Georeferenced (.shp, .gml, etc.) | Yearly |
Characteristics: use, no. of floors and dwellings, effective m2, year of construction, inhabitants | Building | Georeferenced database | Yearly, at least |
Topic | Information | Disaggregation Degree | Format | Periodicity |
---|---|---|---|---|
Ageing population | % Population >79 years [20] | Census track | Georeferenced (.shp) | Annually |
Socio-economic deprivation | % low-income population | Census track | Georeferenced (.shp) | Annually |
Unemployment | Unemployment rate | Census track | Georeferenced (.shp) | Annually |
Living conditions [21] | Average of occupants per dwelling | Census track | Georeferenced (.shp) | Annually |
% of rented dwellings | Census track | Georeferenced (.shp) | 2, 5, or 10 years (depending on the availability) | |
% of dwellings without heating system | Census track | Georeferenced (.shp) | ||
% of dwellings with bad conservation status | Census track | Georeferenced (.shp) |
Decarbonisation Target | Main Elements |
---|---|
Public buildings | Georeferenced inventory and characterisation (geometry and characteristics of public building stock) Energy consumption (monitoring) Energy audits (study results) |
Private buildings | Georeferenced inventory and characterisation (geometry and characteristics of private building stock) |
Public lighting | Georeferenced inventory Energy consumption (monitoring) Energy audits (study results) |
Mobility | Public fuel consumption (monitoring of public transport and fleets) Private mobility (studies and estimations) Active mobility (study results) |
Socio-economic/socio-demographic (urban analysis) | Vulnerability (index monitoring) |
Decarbonisation Target | Calculation Processes |
---|---|
Public buildings | |
Private buildings |
|
Public lighting |
|
Mobility |
|
Socioeconomic |
|
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Urrutia-Azcona, K.; Usobiaga-Ferrer, E.; De Agustín-Camacho, P.; Molina-Costa, P.; Benedito-Bordonau, M.; Flores-Abascal, I. ENER-BI: Integrating Energy and Spatial Data for Cities’ Decarbonisation Planning. Sustainability 2021, 13, 383. https://doi.org/10.3390/su13010383
Urrutia-Azcona K, Usobiaga-Ferrer E, De Agustín-Camacho P, Molina-Costa P, Benedito-Bordonau M, Flores-Abascal I. ENER-BI: Integrating Energy and Spatial Data for Cities’ Decarbonisation Planning. Sustainability. 2021; 13(1):383. https://doi.org/10.3390/su13010383
Chicago/Turabian StyleUrrutia-Azcona, Koldo, Elena Usobiaga-Ferrer, Pablo De Agustín-Camacho, Patricia Molina-Costa, Mauricia Benedito-Bordonau, and Iván Flores-Abascal. 2021. "ENER-BI: Integrating Energy and Spatial Data for Cities’ Decarbonisation Planning" Sustainability 13, no. 1: 383. https://doi.org/10.3390/su13010383
APA StyleUrrutia-Azcona, K., Usobiaga-Ferrer, E., De Agustín-Camacho, P., Molina-Costa, P., Benedito-Bordonau, M., & Flores-Abascal, I. (2021). ENER-BI: Integrating Energy and Spatial Data for Cities’ Decarbonisation Planning. Sustainability, 13(1), 383. https://doi.org/10.3390/su13010383