Smart City Gnosys

Smart city article details

Title Breaking Through The Traffic Congestion: Asynchronous Time Series Data Integration And Xgboost For Accurate Traffic Density Prediction
ID_Doc 12845
Authors Garcia E.; Serrat C.; Xhafa F.
Year 2023
Published Proceedings - Winter Simulation Conference
DOI http://dx.doi.org/10.1109/WSC60868.2023.10408652
Abstract The proliferation of data collection from smart cities has resulted in an exponential growth in the volume of measurements available for analysis. However, collecting all parameters concurrently at the same location is not feasible due to the complex nature of the real world. We present an innovative methodology that enriches asynchronous time series data from a variety of sources to facilitate data enrichment and city-wide behaviour simulation. A case study on OpenDataBCN attests to the efficacy of this approach via an XGBoost model, predicated on geographical coordinates and timestamp disparities. The consolidation of data from different sources improves the richness and granularity of information at disposal for analysis, thereby revealing previously hidden patterns and relationships, exhibiting new insights and underscoring the potential of this methodology for sustainable and efficient data enrichment processes as well as new possibilities for simulation based on smart city datasets. © 2023 IEEE.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
46591 View0.887Deveshwar P.; Singh T.; Sharma Y.; Bidwe R.V.; Hiremani V.; Devadas R.; Shah K.Revolutionizing Smart Cities: A Data-Driven Traffic Monitoring System For Real-Time Traffic Density Estimation And VisualizationLecture Notes in Networks and Systems, 1075 LNNS (2025)
51109 View0.883Tanberk S.; Can M.; Helli S.S.Smart Journey In Istanbul: A Mobile Application In Smart Cities For Traffic Estimation By Harnessing Time Series2023 Innovations in Intelligent Systems and Applications Conference, ASYU 2023 (2023)
34325 View0.88Garcia E.; Peyman M.; Serrat C.; Xhafa F.Join Operation For Semantic Data Enrichment Of Asynchronous Time Series DataAxioms, 12, 4 (2023)
58586 View0.869Alvi M.; Minerva R.; Rajapaksha P.; Crespi N.; Alvi U.Traffic Flow Prediction In Sensor-Limited Areas Through Synthetic Sensing And Data FusionIEEE Sensors Letters, 8, 4 (2024)
8060 View0.869Shouaib M.; Metwally K.; Badran K.An Enhanced Time-Dependent Traffic Flow Prediction In Smart CitiesAdvances in Electrical and Computer Engineering, 23, 3 (2023)
17495 View0.868Padmaja C.V.R.; Sadasivuni S.T.Data-Driven Urban Mobility - Comprehensive Predictive Modeling For Traffic CongestionProceedings - 2024 IEEE International Conference on Intelligent Systems, Smart and Green Technologies, ICISSGT 2024 (2024)
44462 View0.866Chawla P.; Hasurkar R.; Bogadi C.R.; Korlapati N.S.; Rajendran R.; Ravichandran S.; Tolem S.C.; Gao J.Z.Real-Time Traffic Congestion Prediction Using Big Data And Machine Learning TechniquesWorld Journal of Engineering, 21, 1 (2024)
60223 View0.866Tsalikidis N.; Mystakidis A.; Koukaras P.; Ivaškevičius M.; Morkūnaitė L.; Ioannidis D.; Fokaides P.A.; Tjortjis C.; Tzovaras D.Urban Traffic Congestion Prediction: A Multi-Step Approach Utilizing Sensor Data And Weather InformationSmart Cities, 7, 1 (2024)
10165 View0.864Zafar N.; Haq I.U.; Chughtai J.-U.-R.; Shafiq O.Applying Hybrid Lstm-Gru Model Based On Heterogeneous Data Sources For Traffic Speed Prediction In Urban AreasSensors, 22, 9 (2022)
35078 View0.863Alabi O.O.; Ajagbe S.A.; Kuti O.; Afe O.F.; Ajiboye G.O.; Adigun M.O.Leveraging Environmental Data For Intelligent Traffic Forecasting In Smart CitiesCommunications in Computer and Information Science, 2159 CCIS (2024)