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