Abstract:
The Traffic Management Dashboard System is planned for implementation in Islamabad and features an innovative solution to handle urban congestion, a growing problem. This report provides a comprehensive view of the system’s development, including conceptualization and design, testing, and future development approaches. The dashboard takes advantage of historical traffic data, presents users with visual congestion analysis, and features optimized routing capabilities for commuters and traffic authorities. First, we looked at the challenges of urban traffic and other technological solutions that were already available. Based on this information, the architecture combines Python Flask for backend operations, Tailwind CSS for frontend design, and OpenStreetMap for geospatial visualizations. Functional, integration, performance, and usability testing on the system ensured its reliability and scalability, and the system was successfully deployed in a controlled environment. The report also outlines future enhancements to make the dashboard an accurate time-traffic management tool. Its key improvements are integrating real-time APIs for live traffic updates, combining AI and machine learning using predictive analytics and incident detection, and developing a mobile application to increase accessibility. Features, such as an emergency vehicle priority system and public feedback mechanisms, are proposed to make the application more functional and interactive. A phased action plan for these developments stresses research, testing, and collaborative partnerships. In conclusion, this report shows that the Traffic Management Dashboard System solves current challenges and creates a replicable model for other urban centers. By embracing recent technologies and collaborating with users, this system helps to achieve progress towards sustainable urban mobility and better living quality for commute.