Smart City Gnosys

Smart city article details

Title Join Operation For Semantic Data Enrichment Of Asynchronous Time Series Data
ID_Doc 34325
Authors Garcia E.; Peyman M.; Serrat C.; Xhafa F.
Year 2023
Published Axioms, 12, 4
DOI http://dx.doi.org/10.3390/axioms12040349
Abstract In this paper, we present a novel framework for enriching time series data in smart cities by supplementing it with information from external sources via semantic data enrichment. Our methodology effectively merges multiple data sources into a uniform time series, while addressing difficulties such as data quality, contextual information, and time lapses. We demonstrate the efficacy of our method through a case study in Barcelona, which permitted the use of advanced analysis methods such as windowed cross-correlation and peak picking. The resulting time series data can be used to determine traffic patterns and has potential uses in other smart city sectors, such as air quality, energy efficiency, and public safety. Interactive dashboards enable stakeholders to visualize and summarize key insights and patterns. © 2023 by the authors.
Author Keywords data standardization; join operation; lagged cross-correlations; Open Data Barcelona; semantic data enrichment; Smart City; spatial data distribution; time series data


Similar Articles


Id Similarity Authors Title Published
12845 View0.88Garcia E.; Serrat C.; Xhafa F.Breaking Through The Traffic Congestion: Asynchronous Time Series Data Integration And Xgboost For Accurate Traffic Density PredictionProceedings - Winter Simulation Conference (2023)
45970 View0.857González V.; Martín L.; Santana J.R.; Sotres P.; Lanza J.; Sánchez L.Reshaping Smart Cities Through Ngsi-Ld EnrichmentSensors, 24, 6 (2024)
48008 View0.852Lymperis D.; Goumopoulos C.Sedia: A Platform For Semantically Enriched Iot Data Integration And Development Of Smart City ApplicationsFuture Internet, 15, 8 (2023)