Abstract
1 min readAs urbanization accelerates and cities face increasing challenges in managing traffic congestion, the role of traffic prediction within Intelligent Transportation Systems (ITS) becomes paramount. This article explores the historical context of transportation systems, tracing the evolution from traditional methods to modern, technology-driven solutions. Emphasis is placed on the critical role of traffic prediction in addressing current transportation challenges, including congestion, inefficiency, and safety concerns. This study focuses on developing advancing tool for traffic density prediction by leveraging a comprehensive dataset that combines historical and real-time traffic information. Through the integration of these two data sources, the proposed model aims to provide more accurate and dynamic traffic density forecasts. The research explores the utilization of machine learning algorithms to analyze patterns embedded in historical data, facilitating the creation of a robust predictive model. Additionally, the inclusion of real-time data enhances the model’s adaptability to changing traffic conditions, making it a valuable tool for intelligent transportation systems. The study’s findings have the potential to significantly improve traffic management strategies, contributing to more efficient and responsive transportation networks. By enhancing the accuracy of traffic density predictions, the proposed approach addresses key challenges in urban mobility, ultimately promoting safer, more sustainable, and intelligent transportation systems.
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