Smart Traffic Management has emerged as a critical component in addressing the growing problem of urban congestion as cities expand rapidly in population, vehicle density, and mobility demands. Conventional traffic control systems often fail to adapt to real-time variations, resulting in increased travel delays, fuel consumption, and pollution. This research explores the technological landscape of intelligent traffic systems designed to optimize urban transportation using advanced digital solutions. The study analyzes key challenges such as uneven traffic flow, incident response delays, inefficient signal timing, and limited data integration across city networks. It further examines modern approaches including AI-driven traffic prediction, IoT-enabled sensor infrastructure, adaptive signal control algorithms, vehicle- to-infrastructure communication, and cloud-based traffic analytics platforms. Field observations across multiple urban corridors highlight recurring issues such as sensor deployment gaps, data inaccuracies, heterogeneous road usage patterns, and limited interoperability in existing city systems. The research proposes a comprehensive roadmap featuring policy improvements, scalable architectures, real-time monitoring frameworks, multimodal integration, and collaborative governance models essential for building resilient, efficient, and sustainable smart mobility ecosystems.
GL et al. (Tue,) studied this question.