Research Article
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Year 2025, Volume: 2 Issue: 1, 49 - 58, 30.06.2025

Abstract

References

  • Ghosh, S., Basu, B., O’Mahony, M. (2007). Bayesian Time-Series Model for Short-Term Traffic Flow Forecasting. ASCE Journal of Transportation Engineering, *133*(3), 180–189.
  • Han, X, Shi, X. (2015). Online Traffic Congestion Predicton Based on Random Forest. Proceedings of the IEEE International Conference on Intelligent Transportation Systems, 102–107.
  • Hong, W. (2011). Traffic Flow Forecasting by Seasonal SVR with Chaotic Simulated Annealing Algorithm. International Journal of Computational Intelligence Systems, *4*(4), 568–576.
  • Kumar, P., Vanajakshi, L. (2015). Short-Term Traffic Flow Prediction Using Seasonal ARIMA Model. IEEE Intelligent Transportation Systems Magazine, *7*(2), 45–55.
  • Liu, H., Wu, J. (2017). Prediction of Road Traffic Congestion Based on Random Forest. IEEE Transactions on Intelligent Transportation Systems, *18*(2), 377–385.
  • Wang, X., Liu, Y. (2018). Traffic Volume Prediction on Busy Road Junctions. Transportation Research Part C: Emerging Technologies, *95*, 21–36.
  • Zarei, M., Zarei, R., Sattari, A. (2013). Road Traffic Prediction Using Context-Aware Random Forest Based on Volatility Nature of Traffic Flows. Proceedings of the IEEE International Conference on Intelligent Transportation Systems, 175–180.
  • İstanbul Metropolitan Municipality. (2024). Hourly Traffic Density Data Set https://data.ibb.gov.tr/dataset/hourly-traffic-density-data-set/resource/914cb0b9-d941-4408-98eb-f378519c26f4

Stop-Based Time Series Traffic Change Analysis Using Data from Istanbul Metropolitan Municipality (IMM)

Year 2025, Volume: 2 Issue: 1, 49 - 58, 30.06.2025

Abstract

Traffic congestion is a critical urban issue that affects travel efficiency, air quality and public well-being. This study examines traffic density patterns in the coastal region of Beşiktaş¸, Istanbul, by analysing hourly vehicle counts from September 2024. The research identifies peak congestion during the morning (07:00-09:00) and evening (16:00-19:00) rush hours, with higher traffic density on weekdays compared to weekends. Ordinary least squares regression shows a weak inverse relationship between traffic density and average speed, highlighting the need for additional variables to increase explanatory power. Three predictive models - Seasonal ARIMA (SARIMA), Facebook Prophet and Random Forest - are evaluated for predictive accuracy. The results suggest that Random Forest provides superior short-term forecasting accuracy, while SARIMA and Prophet effectively capture seasonal trends. These findings provide a robust framework for urban traffic forecasting and management, supporting the development of informed strategies to reduce congestion in dense urban areas.

References

  • Ghosh, S., Basu, B., O’Mahony, M. (2007). Bayesian Time-Series Model for Short-Term Traffic Flow Forecasting. ASCE Journal of Transportation Engineering, *133*(3), 180–189.
  • Han, X, Shi, X. (2015). Online Traffic Congestion Predicton Based on Random Forest. Proceedings of the IEEE International Conference on Intelligent Transportation Systems, 102–107.
  • Hong, W. (2011). Traffic Flow Forecasting by Seasonal SVR with Chaotic Simulated Annealing Algorithm. International Journal of Computational Intelligence Systems, *4*(4), 568–576.
  • Kumar, P., Vanajakshi, L. (2015). Short-Term Traffic Flow Prediction Using Seasonal ARIMA Model. IEEE Intelligent Transportation Systems Magazine, *7*(2), 45–55.
  • Liu, H., Wu, J. (2017). Prediction of Road Traffic Congestion Based on Random Forest. IEEE Transactions on Intelligent Transportation Systems, *18*(2), 377–385.
  • Wang, X., Liu, Y. (2018). Traffic Volume Prediction on Busy Road Junctions. Transportation Research Part C: Emerging Technologies, *95*, 21–36.
  • Zarei, M., Zarei, R., Sattari, A. (2013). Road Traffic Prediction Using Context-Aware Random Forest Based on Volatility Nature of Traffic Flows. Proceedings of the IEEE International Conference on Intelligent Transportation Systems, 175–180.
  • İstanbul Metropolitan Municipality. (2024). Hourly Traffic Density Data Set https://data.ibb.gov.tr/dataset/hourly-traffic-density-data-set/resource/914cb0b9-d941-4408-98eb-f378519c26f4
There are 8 citations in total.

Details

Primary Language English
Subjects Machine Learning Algorithms
Journal Section Research Article
Authors

Musa Şervan Şahin 0000-0003-0088-083X

Kaan Çolakoğlu 0009-0004-5415-1231

Early Pub Date June 30, 2025
Publication Date June 30, 2025
Submission Date May 21, 2025
Acceptance Date June 21, 2025
Published in Issue Year 2025 Volume: 2 Issue: 1

Cite

APA Şahin, M. Ş., & Çolakoğlu, K. (2025). Stop-Based Time Series Traffic Change Analysis Using Data from Istanbul Metropolitan Municipality (IMM). Transactions on Computer Science and Applications, 2(1), 49-58.