Synapse : Towards Linked Data for Smart Cities using a Semantic Annotation Framework

Author(s):  
JongGwan An ◽  
Sunil Kumar ◽  
Jieun Lee ◽  
SeungMyeong Jeong ◽  
JaeSeung Song
2020 ◽  
Vol 10 (17) ◽  
pp. 5882
Author(s):  
Federico Desimoni ◽  
Sergio Ilarri ◽  
Laura Po ◽  
Federica Rollo ◽  
Raquel Trillo-Lado

Modern cities face pressing problems with transportation systems including, but not limited to, traffic congestion, safety, health, and pollution. To tackle them, public administrations have implemented roadside infrastructures such as cameras and sensors to collect data about environmental and traffic conditions. In the case of traffic sensor data not only the real-time data are essential, but also historical values need to be preserved and published. When real-time and historical data of smart cities become available, everyone can join an evidence-based debate on the city’s future evolution. The TRAFAIR (Understanding Traffic Flows to Improve Air Quality) project seeks to understand how traffic affects urban air quality. The project develops a platform to provide real-time and predicted values on air quality in several cities in Europe, encompassing tasks such as the deployment of low-cost air quality sensors, data collection and integration, modeling and prediction, the publication of open data, and the development of applications for end-users and public administrations. This paper explicitly focuses on the modeling and semantic annotation of traffic data. We present the tools and techniques used in the project and validate our strategies for data modeling and its semantic enrichment over two cities: Modena (Italy) and Zaragoza (Spain). An experimental evaluation shows that our approach to publish Linked Data is effective.


2014 ◽  
Vol 55 ◽  
pp. 29-42 ◽  
Author(s):  
Juan C. Vidal ◽  
Manuel Lama ◽  
Estefanía Otero-García ◽  
Alberto Bugarín

Author(s):  
Michel Gagnon ◽  
Amal Zouaq ◽  
Francisco Aranha ◽  
Faezeh Ensan ◽  
Ludovic Jean Louis

2020 ◽  
Vol 2020 ◽  
pp. 1-8
Author(s):  
Arnaldo Pereira ◽  
Rui Pedro Lopes ◽  
José Luís Oliveira

The Semantic Web and Linked Data concepts and technologies have empowered the scientific community with solutions to take full advantage of the increasingly available distributed and heterogeneous data in distinct silos. Additionally, FAIR Data principles established guidelines for data to be Findable, Accessible, Interoperable, and Reusable, and they are gaining traction in data stewardship. However, to explore their full potential, we must be able to transform legacy solutions smoothly into the FAIR Data ecosystem. In this paper, we introduce SCALEUS-FD, a FAIR Data extension of a legacy semantic web tool successfully used for data integration and semantic annotation and enrichment. The core functionalities of the solution follow the Semantic Web and Linked Data principles, offering a FAIR REST API for machine-to-machine operations. We applied a set of metrics to evaluate its “FAIRness” and created an application scenario in the rare diseases domain.


2019 ◽  
Author(s):  
Tales Nogueira ◽  
Hervé Martin ◽  
Rossana Andrade

Smart cities are characterized by providing new services through Information and Communications Technologies. However, it is important to gather data from citizens to discover new knowledge about certain aspects of a city. One example of a rich domain for collecting data in a smart city is exploring the use of mobile fitness applications. Users usually record outdoor activities in the form of trajectories, which can later be acquired for further analysis. In this work, we leverage Semantic Web technologies to propose an annotation algorithm that segments trajectories according to their spatial context. We demonstrate how the method works and the impact of OpenStreetMap related ontologies in the annotation process.


2017 ◽  
Vol 7 ◽  
pp. 1-15 ◽  
Author(s):  
Sergio Consoli ◽  
Valentina Presutti ◽  
Diego Reforgiato Recupero ◽  
Andrea G. Nuzzolese ◽  
Silvio Peroni ◽  
...  
Keyword(s):  

Sign in / Sign up

Export Citation Format

Share Document