A Holistic and Interoperable Approach towards the Implementation of Services for the Digital Transformation of Smart Cities: The Case of Vitoria-Gasteiz (Spain)
Abstract
:1. Introduction
2. Background
2.1. European Framework for Smart Cities
- Management of volumes of data coming from multiple and heterogeneous sources;
- Improvement of health and well-being;
- Reduction of the energy consumption by promoting local low-carbon energy;
- Integration of joined-up and multi-purpose services and infrastructures.
- Cater for vertical interoperability (horizontal interoperability is not the priority);
- Enable replicability of the apps, services, and solutions;
- Reduce the management and maintenance costs;
- Enable real-time capabilities;
- Provide open APIs (Application Programming Interfaces) and SDKs (Software Development Toolkit) for data sharing.
ICT and Standardization Strategy for Smart Cities
- 0.
- Field equipment capabilities to connect the external environment (IoT, devices...);
- 1.
- Communication capabilities to enable the exchange of data;
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- Device asset capabilities to support device integration;
- 3.
- Data management capabilities to make use of the gathered data;
- 4.
- Integration and orchestration capabilities;
- 5.
- Generic city capabilities to enable the deployment of generic city services;
- 6.
- Specific city capabilities to enable the deployment of specific city services;
- 7.
- Stakeholders capabilities to collaborate and engage citizens.
2.2. Current Practices: Other Urban Platforms and Researches
2.3. Motivation: SmartEnCity CIOP beyond the State of the Art
- Making use of standard architecture for urban data platforms, which promotes re-usability and replicability;
- Providing a one-stop-shop concept for integrating the verticals of the city so that the city services could be accessed from a holistic and cross-domain perspective;
- Establishing standard and harmonised data models and data sharing mechanisms that ensure interoperability, not only between verticals of the city, but also with external tools making data available for entrepreneurship;
- Provide common architectures and reference models that support standardisation for smart cities;
- Incorporating AVSs, which allow better management of the city and provide additional value to the data obtained;
- Involving both citizens and other relevant stakeholders participants on the design of solutions, keeping them engaged in the digital transformation of the city;
- Assuring scalability, extensibility, and upgradeability of components and frameworks. This is essential for new deployments, enhancements, or seamless migrations of smart city platforms.
3. Sustainability Strategy in Vitoria-Gasteiz: The Role of Digitalisation
- Engage: Involving all the relevant stakeholders;
- Analyse: Gathering city information and indicators;
- Diagnose: Evaluate the indicators [35];
- Envision: Co-create the future vision of the city per domain (e.g., energy, mobility...);
- Plan: Planning strategic areas;
- Integrate: Cross-sectoral strategic plan.
- Monitoring of the performance of the systems, e.g., energy demand of buildings, and gathering data from IoT assets of the city;
- Evaluating through well-defined indicators in order to extract the impacts of the actions and the lessons learned;
- Integrating the multiple pillars (e.g., energy, mobility, etc.) of the city to make them “interoperable” and providing a holistic view;
- Managing assets to increase the performance of the systems.
3.1. Digital Vitoria-Gasteiz: Initial Situation
3.2. CIOP Reference Architecture
- Standard implementation of digital Smart Cities that fosters replicability;
- Interoperability through the corresponding layer to promote the holistic integration of verticals’;
- Flexibility in the data management, allowing multiple data repositories and data models to merge data-sets and extracting knowledge from data.
- Collection Systems layer, related to all the infrastructures that provide data, such as IoT sensors (SCADAs and PLCs), external information systems, social networks, etc;
- Acquisition/Interconnection layer, which implements the adapters for the protocols to collect the data from the sensor network and acquire the necessary information;
- Knowledge layer, where data models and management (repositories) are deployed for data analysis using ETL mechanisms (Extraction, Transformation, and Loading);
- Interoperability layer to facilitate the exchange of information between different parties through common representation models. This layer is related to the concept of Open Data;
- Intelligent services layer where AVSs are found, ranging from energy efficiency or mobility services to governance services. It is precisely in this last layer where the digital service is included and, in particular, within the energy efficiency vertical.
3.3. Engagement of Citizens: Co-Creation Strategy
- Phase 1—Conceptualization: It contextualises the problem to be solved, e.g., sizing the context and the objectives of the application, identifying the actors, proposing solutions, visualising technologies and channels to develop these solutions, etc. It includes a set of steps:
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- Identification of users and their profiles (e.g., consumption habits);
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- Brand value identification to establish the project’s identity;
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- Identification of the technological framework and the tools to be used;
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- Value proposition.
- Phase 2—Design: It identifies how and when the user will interact with the system, decision-making strategies, user-friendliness features, and data sources and information flow. The activities of this phase are:
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- Experience design: User stories describing the context and the steps the user will take when using the system;
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- Static design: Graphical interface, solution’s information architecture, etc.;
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- Analytical design: Identify the sources of data and the treatment of information by all the actors involved in the system;
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- User testing: Contrast the design with potential users of the system, identifying the weak points of the solutions before being implemented;
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- Technical requirements: Identify the technological solution in detail in order support developers in the implementation.
- Phase 3—Development: Implementation of the system, in terms of infrastructure and software. It translates the previous requirements to software assets. It includes the following items:
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- System and architecture;
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- Software development;
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- Integration and testing.
- Phase 4—Deployment: Make the solution available to stakeholders in a production environment. This stage also addresses the analysis and monitoring of the system created, with the aim of checking its operation and collecting information to determine the validity of the results. This phase covers the following tasks:
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- Deployment;
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- Monitoring of performance metrics.
4. CIOP Implementation and Deployment
4.1. User-Centred Design
- Who are the most relevant stakeholders?
- What information should be communicated to stakeholders?
- How should this information be presented?
- What is the best communication channel and where should it be located?
- What makes stakeholders interact with the solution?
- Residents as agents interested in their energy consumption and comfort conditions, which need to be informed about recommendations and good habits (awareness). To be successful with these stakeholders it is essential to create solutions that encourage them to participate and take part in cost-saving measures and sustainability activities (engagement);
- Energy Service COmpany (ESCO) as stakeholders interested in offering energy and comfort services to their clients (residents, communities, cities, etc.). These stakeholders demand information such energy demand, production forecast, energy ratings, building capacity and comfort conditions among other KPIs;
- Mobility managers, who are stakeholders working for transport companies that need dashboards to monitor the performance of their transportation fleets by measuring consumption, CO2 emissions, status of charging stations, location of vehicles, etc;
- City managers are agents that alike previous stakeholders, need dashboards to make decisions in relation to energy consumption of public buildings, status and performance of public transport or impact of sustainability measures in the environment.
4.2. Data Ingestion Mechanisms
- Thermal energy consumption of buildings;
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- Individual gas boilers measurements taken before the deployment of the district heating. Those data were acquired from Excel sheets provided by the gas network distributor (Nortegas). Mechanisms based on climate conditions were applied to reduce granularity up to daily energy consumption at building level (25 buildings) during 5 years, having 250 KB/year;
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- District heating data obtained by interfacing the Supervisory Control And Data Acquisition (SCADA) and Programmable Logic Controllers (PLC) in BACnet protocol with periodicity of 15 min. At the moment of writing this paper, the integration of the district heating in the 25 buildings just finished, without having historic data yet;
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- Energy demand as simulated energy for all non industrial buildings in the city, being theoretical energy that is needed for each building to comply with comfort parameters. It is obtained from a simulation tool software that generates data in csv format, including average results of heating and cooling demand and solar potential.
- Comfort (temperature, relative humidity and CO2) and electricity consumption parameters. 250 dwellings from 25 buildings in the lighthouse district of Coronación are monitored by means of sensors. In each dwelling we have installed the following sensors: 1 energy sensor, 1 temperature sensor and 1 humidity sensor. In 35 dwellings a CO2 sensor has been added. This sensor includes additionally a temperature sensor and a humidity sensor. Measures for each sensor are collected every 5 s. Hourly aggregates of all sensor measurements are made and the ASHRAE comfort values are calculated for each dwelling. See Section 4.5.3 for comfort calculation details. Sensors are deployed, taking advantage of the building’s infrastructure. This original architecture for data gathering is based on the TV distributed coaxial system. To achieve that, adapters are placed at the TV distribution system header and each of the dwellings. Figure 4 shows the infrastructure. Thus, the TV distributed system is used to direct that information to the CIOP platform without requiring an Internet connection from each of the dwellings residents. Internet connectivity is provided at building level to route data from each of the dwellings towards the CIOP platform. The network created by this infrastructure is bidirectional and enables the provision of other services to/from the dwellings.
- Electromobility.
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- Public eBuses. A REST-API (JSON format) is provided to collect data from the Web application where data are registered. Here, travelled distance, speed, used energy, regeneration and auxiliary systems’ parameters, among others, are collected from 13 eBuses of the public fleet. Different granularity is offered: activity (each time the eBus starts a trip), daily summary or total aggregation in the full operation period, accounting for 130 KB/day of data;
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- eCar fleet from the Municipality and the district heating operator in Excel format. From the municipal fleet, 2 eCars data are collected in a monthly basis, having only available energy usage, distance, bookings, and users, accounting for 28 KB/year. In the case of the district heating operator, a daily summary of the parameters: distance, energy usage and performance of the energy system is gathered, accounting for 113 KB/year;
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- Rental eBikes, which only gathers monthly summaries of the uses and distances in Excel format;
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- Charging stations associated to each of the EVs listed above. The format and granularity of the data follows the same structure as its associated EV.
- Geographical data represent the 2D and 3D geometry of the different city elements as well as their semantics. For the generation of the 3D urban model based on CityGML the following data sources were used:
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- Cadastral data: GIS file including dimensions and geo-referenced attributes of the city buildings and urban parcels (15,326 buildings);
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- Digital Surface Model (DSM): LiDAR file with elevation data of urban elements. This model contains elevation information of buildings and other constructions (1 m resolution);
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- Digital Terrain Model (DTM): LiDAR file with elevation data of the ground, representing the base level of urban elements (1 m resolution).
Buildings are generated in CityGML LoD2 (15,326 buildings), where DSM and DTM were used for estimating real heights of the buildings. Energy simulation results provide the semantic information of the 3D model. - Social aspects. Citizens should be continuously engaged with the different measures applied in the city. To gather data from them, questionnaires and surveys are used both in Web forms and hand-written.
4.3. Data Models for Interoperable and Holistic Data
- Time Series Data. This repository stores timeseries measurements coming directly from comfort sensors (5 s frequency). The repository uses InfluxDB, which is a open-source database oriented to IoT deployments. As of today, the repository hosts 2.3 GB of data;
- Structured/relational Data. Relational databases, such as MySQL, PostgreSQL, or MariaDB, are used to manage aggregated information related to dwellings, buildings, districts, mobility, social, and KPIs. Whereas data velocity and volume for dwellings, buildings, districts, and mobility were explained before, the case of KPIs saves daily calculations. At the moment of writing this paper, the repository stores 670 MB of structured/relational data. Among those data, 31 KPIs are being calculated in the pillars of energy, comfort and mobility. ICTs, Life Cycle Analysis and social aspects are not considered since the indicators for these verticals are static, calculated once, and updated many times afterwards;
- Historical data. Complementing the structured data, a historical repository is deployed to keep the persistence of all data-sets. This historical repository contains the structured data from cross-domain databases so as to store permanently in a common space. Two main advantages are addressed: historical data can be recovered in case necessary (data analysis, disaster recovery, etc.) and to release space in the main repositories. To store the historical data, Hadoop Distributed File System (HDFS) is selected, being a scalable, flexible and fast technology;
- Geographical Data. Geographical data about consumption points or vehicles distributed throughout the city are stored in geographic databases included in solutions such as ArcGIS Enterprise and other Environmental Systems Research Institute (ESRI) products;
- 3D Information. Virtual 3D city models are generated using Open Geospatial Consortium (OGC) standard CityGML [41] and stored in XML format. CityGML is an open data model and XML-based format for the storage and exchange of virtual 3D city models, which is interoperable with INSPIRE Building data theme [42]. As the model is very large, for visualization purposes the model is exported to 3DTiles. 3DTiles can be loaded by parts, allowing for faster model load, and not blocking the viewer.
4.4. Data Sharing APIs
- Loosely coupled with other services enabling a team to work independently for the majority of time on their service(s) without being impacted by changes to other services and without affecting other services;
- Highly maintainable and testable, enabling rapid and frequent development and deployment;
- Independently deployable, which enables a team to deploy their service without having to coordinate with other teams;
- Capable of being developed by a small team which is essential for high productivity by avoiding the high communication issues existing in large teams.
4.5. Added Value Services
4.5.1. Decision-Making Support Based on KPIs
4.5.2. Energy-Related Services
4.5.3. Comfort-Related Services
4.5.4. Mobility-Related Services
4.5.5. Social Awareness and Engagement Services
- Electricity consumption and comfort data collection at dwelling level (Section 4.2);
- Screens with data results and recommendations to the residents (visualization tool);
- Comparisons (before and after interventions) to learn about their performance;
- Usage of relevant indicators for the validation of interventions (KPIs, Section 4.5.1).
5. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
API | Application Programming Interfaces |
AVS | Added Value Services |
CIOP | City Information Open Platform |
CTN | Committee for Smart Cities |
DSM | Digital for Surface Model |
DTM | Digital for Terrain Model |
EC | European Commission |
EIP | European Innovation Partnership |
EIP-SCC | European Innovation Partnership on Smart Cities and Communities |
ESCO | Energy Service COmpany |
ETL | Extraction Transformation and Loading |
GDP | Gross Domestic Product |
GIS | Geographical Information System |
HDFS | Haddop Distributed File System |
ICT | Information and Communication Technology |
ITU-T | International Telecommunication Union of Telecommunications |
KPI | Key Performance Indicators |
OGC | Open Geospatial Consortium |
PLC | Programmable Logic Controllers |
PMV | Predicted Mean Vote |
PPD | Predicted Percentage of Dissatisfied |
SCADA | Supervisory Control And Data Acquisition |
SDK | Software Development Kits |
SZCC | Smart Zero Carbon City |
SoC | Status of Charge |
UCD | User Centered Design |
References
- Abu-Rayash, A.; Dincer, I. Development of integrated sustainability performance indicators for better management of smart cities. Sustain. Cities Soc. 2021, 67, 102704. [Google Scholar] [CrossRef]
- Transforming Our World: The 2030 Agenda for Sustainable Development. Available online: https://sdgs.un.org/2030agenda (accessed on 6 October 2021).
- EUROSTAT. Statistics on European Cities. Available online: https://ec.europa.eu/eurostat/statistics-explained/index.php?title=Statistics_on_European_cities (accessed on 2 October 2021).
- European Commission, Research and Innovation. Final Report of the High-Level Panel of the European Decarbonisation Pathways Initiative; Technical Report; Research and Innovation: Brussels, Belgium, 2018. [Google Scholar]
- Gross Domestic Product (GDP) at Current Market Prices by Metropolitan Regions. Available online: https://appsso.eurostat.ec.europa.eu/nui/show.do?dataset=met_10r_3gdp&lang=en (accessed on 2 October 2021).
- Muroishi, M.; Yakita, A. Agglomeration economies, congestion diseconomies, and fertility dynamics in a two-region economy. Lett. Spat. Resour. Sci. 2021, 14, 51–63. [Google Scholar] [CrossRef]
- Bibri, S. Chapter Transitioning from Smart Cities to Smarter Cities: The Future Potential of ICT of Pervasive Computing for Advancing Environmental Sustainability. In Smart Sustainable Cities of the Future; Springer: Berlin/Heidelberg, Germany, 2018. [Google Scholar]
- Petrova-Antonova, D.; Ilieva, S. Smart Cities Evaluation—A Survey of Performance and Sustainability Indicators. In Proceedings of the 44th Euromicro Conference on Software Engineering and Advanced Applications (SEAA), Prague, Czech Republic, 29–31 August 2018. [Google Scholar] [CrossRef]
- SmartEnCity Project (GA #691883): Towards Smart Zero CO2 Cities across Europe. Available online: https://smartencity.eu/ (accessed on 2 October 2021).
- SmartEnCity. CIOP Functional and Non-Functional Specifications. Technical Report, 2016. Available online: https://smartencity.eu/media/del6.1.pdf (accessed on 2 October 2021).
- UNE 178104:2017. Available online: https://www.une.org/encuentra-tu-norma/busca-tu-norma/norma?c=N0059471 (accessed on 2 October 2021).
- SmartEnCity. Interoperability Mechanisms. Technical Report, 2017. Available online: https://smartencity.eu/media/del6.4.pdf (accessed on 2 October 2021).
- Smart Cities Marketplace. Available online: https://smart-cities-marketplace.ec.europa.eu/ (accessed on 2 October 2021).
- Romualdo-Suzuki, L. Requirements Specification For Urban Platforms. Technical Report, 2016. Available online: https://smart-cities-marketplace.ec.europa.eu/sites/default/files/EIP_RequirementsSpecificationGLA_%20V2-5.pdf (accessed on 5 October 2021).
- Heuser, L.; Scheer, J.; den Hamer, P.; de Lathouwer, B. Reference Architecture and Design Principles. Technical Report, 2017. Available online: https://ec.europa.eu/research/participants/documents/downloadPublic?documentIds=080166e5b9a18c76&appId=PPGMS#:~:text=The%20intent%20of%20the%20Reference,based%20architecture%20and%20implementation%20which (accessed on 5 October 2021).
- Cox, A.; Parslow, P.; De Lathouwer, B.; Klien, E.; Kempen, B.; Lonien, J. Definition of Smart City Reference Architecture. Technical Report, 2016. Available online: http://espresso.espresso-project.eu/wp-content/uploads/2017/03/D4-17579.2-Smart-City-reference-architecture-report.pdf (accessed on 5 October 2021).
- DIN SPEC 91357. Available online: https://www.en-standard.eu/din-spec-91357-reference-architecture-model-open-urban-platform-oup-text-in-english/ (accessed on 3 October 2021).
- ISO, I. 37120: 2018 Sustainable Cities and Communities–Indicators for City Services and Quality of Life. 2018. Available online: https://www.iso.org/standard/68498.html (accessed on 12 October 2021).
- Batista e Silva, F.; Freire, S.; Schiavina, M.; Rosina, K.; Marin-Herrera, M.; Ziemba, L.; Craglia, M.; Koomen, E.; Lavalle, C. Uncovering temporal changes in Europe’s population density patterns using a data fusion approach. Nat. Commun. 2020, 11, 1–11. [Google Scholar] [CrossRef] [PubMed]
- Living-in.eu: The European Way of Digital Transformation in Cities and Communities. Available online: https://living-in.eu/groups/solutions/urban-data-platform (accessed on 15 October 2021).
- Hernández, J.; García, R.; Schonowski, J.; Atlan, D.; Chanson, G.; Ruohomäki, T. Interoperable Open Specifications Framework for the Implementation of Standardized Urban Platforms. Sensors 2020, 20, 2402. [Google Scholar] [CrossRef] [Green Version]
- Catania, V.; Ventura, D. An approach for monitoring and smart planning of urban solid waste management using smart-M3 platform. In Proceedings of the 15th Conference of Open Innovations Association FRUCT, Petersburg, Russia, 21–25 April 2014; pp. 24–31. [Google Scholar]
- Kumar, S.; Deshpande, A.; Ho, S.; Ku, J.; Sarma, S. Urban Street Lighting Infrastructure Monitoring Using a Mobile Sensor Platform. IEEE Sens. 2016, 4981–4994. [Google Scholar] [CrossRef]
- SCC1 2020 Info Day. Available online: https://ec.europa.eu/inea/sites/default/files/4._smart_cities_and_communities_j.bartholmes_k.maniatis.pdf (accessed on 15 October 2021).
- Ramírez-Moreno, M.; Keshtkar, S.; Padilla-Reyes, D.; Ramos-López, E.; García-Martínez, M.; Hernández-Luna, M.; Mogro, A.; Mahlknecht, J.; Huertas, J.; Peimbert-García, R. Sensors for Sustainable Smart Cities: A Review. Appl. Sci. 2021, 11, 8198. [Google Scholar] [CrossRef]
- Lu, D.; Tian, Y.; Liu, V.; Zhang, Y. The performance of the smart cities in China-A comparative study by means of self-organizing maps and social networks analysis. Sustainability 2015, 7, 7604–7621. [Google Scholar] [CrossRef] [Green Version]
- Pellicer, S.; Santa, G.; Bleda, A.; Maestre, R.; Jara, A.; Skarmeta, A.G. A global perspective of smart cities: A survey. In Proceedings of the IEEE 7th International Conference on Innovative Mobile and Internet Services in Ubiquitous Computing (IMIS), Fukuoka, Japan, 6–8 July 2013; pp. 439–444. [Google Scholar]
- Smart Valencia. Available online: https://smartcity.valencia.es/vlci/plataforma-vlci/ (accessed on 3 October 2021).
- OrganiCity. Available online: http://organicity.eu/ (accessed on 3 October 2021).
- Özdemir, O.; Cantera, J.; Maggio, M.; Muratore, N.; Arigliano, F.; Kim, E.; Muñoz, L.; Elicegui, E.; Gaglione, A.; Capossele, A. Reference Architecture for IoT Enabled Smart Cities. SynchroniCity Project. Technical Report. 2018. Available online: https://synchronicity-iot.eu/wp-content/uploads/2018/05/synchronicity_d2_1_reference_architecture_for_iot_enabled_smart_cities.pdf (accessed on 12 October 2021).
- Smart Santander. Available online: http://www.smartsantander.eu/ (accessed on 3 October 2021).
- Alexandru, A.; Ianculescu, M.; Marinescu, I.A.; Popescu, T.D. Shaping the digital citizen into a smart citizen on the basis of iot capabilities. In Proceedings of the 2019 22nd International Conference on Control Systems and Computer Science (CSCS), Bucharest, Romania, 28–30 May 2019; pp. 707–714. [Google Scholar]
- El Hilali, S.; Azougagh, A. A netnographic research on citizen’s perception of a future smart city. Cities 2021, 115, 103233. [Google Scholar] [CrossRef]
- Bardoutsos, A.; Filios, G.; Katsidimas, I.; Krousarlis, T.; Nikoletseas, S.; Tzamalis, P. A multidimensional human-centric framework for environmental intelligence: Air pollution and noise in smart cities. In Proceedings of the 2020 16th International Conference on Distributed Computing in Sensor Systems (DCOSS), Marina del Rey, CA, USA, 25–27 May 2020; pp. 155–164. [Google Scholar]
- Urrutia-Azcona, K.; Fontán, L.; Díez, F.; Rodíguez, F.; Vicente, J. Smart Zero carbon city readiness level: Indicator system for city diagnosis in the basque country moving towards decarbonization. DYNA 2018, 94, 332–338. [Google Scholar] [CrossRef] [Green Version]
- Urrutia-Azcona, K.; Molina-Costa, P.; Muñoz, I.; Maya-Drysdale, D.; Garcia-Madruga, C.; Flores-Abascal, I. Towards an Integrated Approach to Urban Decarbonisation in Practice: The Case of Vitoria-Gasteiz. Sustainability 2021, 13, 8836. [Google Scholar] [CrossRef]
- Hassan-Montero, Y.; Ortega-Santamaría, S. Informe APEI Sobre Usabilidad. 2009. Available online: http://eprints.rclis.org/13253/1/informeapeiusabilidad.pdf (accessed on 17 October 2021).
- ISO. ISO 9241-210:2010: Ergonomics of Human-System Interaction—Part 210: Human-Centred Design for Interactive Systems. Available online: https://www.iso.org/standard/52075.html (accessed on 18 October 2021).
- DBZ Mondragon Goi Eskola Politeknikoa. Metodología DBZ-MU: Metodología de Innovación Centrada en las Personas del Centro de Innovación en Diseño (DBZ) de Mondragon Unibertsitatea 2014. Available online: https://www.innobasque.eus/uploads/attachment_files/METODOLOGIA%20DBZ-MU_Castellano-20141112121319.pdf (accessed on 18 October 2021).
- Lützkendorf, T.; Platt, E.; Kleber, M.; McKenna, R.; Merkel, E.; Seitz, K.; Stengel, J.; Energy Solutions for Smart Evaluation of (Smart) Solutions—Guidebook for Assessment Part I–Methodology. Cerca con Google 2013. Available online: https://smart-cities-marketplace.ec.europa.eu/insights/publications/evaluation-smart-solutions-guidebook-assessment-part-i-methodology (accessed on 18 October 2021).
- OGC Standard CityGML. Available online: https://www.ogc.org/standards/citygml (accessed on 2 October 2021).
- INSPIRE Data Specification on Buildings. D2.8.III.2 Data Specifcation on Buildings—Technical Guidelines, 2013. Available online: https://inspire.ec.europa.eu/id/document/tg/bu (accessed on 18 October 2021).
- Richardson, C. Microservices patterns: With Examples in Java; Manning Publications: Shelter Island, NY, USA, 2018. [Google Scholar]
- Mulero, S.; Hernández, J.; Vicente, J.; de Viteri, P.S.; Larrinaga, F. Data-driven energy resource planning for Smart Cities. In Proceedings of the 2020 Global Internet of Things Summit (GIoTS), Dublin, Ireland, 3 June 2020. [Google Scholar] [CrossRef]
- Ashrae. Standard 55—Thermal Environmental Conditions for Human Occupancy. 2021. Available online: https://www.ashrae.org/technical-resources/bookstore/standard-55-thermal-environmental-conditions-for-human-occupancy (accessed on 14 October 2021).
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Larrinaga, F.; Pérez, A.; Aldalur, I.; Hernández, J.L.; Izkara, J.L.; Sáez de Viteri, P. A Holistic and Interoperable Approach towards the Implementation of Services for the Digital Transformation of Smart Cities: The Case of Vitoria-Gasteiz (Spain). Sensors 2021, 21, 8061. https://doi.org/10.3390/s21238061
Larrinaga F, Pérez A, Aldalur I, Hernández JL, Izkara JL, Sáez de Viteri P. A Holistic and Interoperable Approach towards the Implementation of Services for the Digital Transformation of Smart Cities: The Case of Vitoria-Gasteiz (Spain). Sensors. 2021; 21(23):8061. https://doi.org/10.3390/s21238061
Chicago/Turabian StyleLarrinaga, Félix, Alain Pérez, Iñigo Aldalur, José L. Hernández, José Luis Izkara, and Patxi Sáez de Viteri. 2021. "A Holistic and Interoperable Approach towards the Implementation of Services for the Digital Transformation of Smart Cities: The Case of Vitoria-Gasteiz (Spain)" Sensors 21, no. 23: 8061. https://doi.org/10.3390/s21238061