Traffic Congestion Detection and Alternative Route Provision Using Machine Learning and IoT-Based Surveillance

Sujatha A, Suguna R, Jothilakshmi R, Kavitha Rani R, Riyajuddin Yakub Mujawar, Prabagaran S
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Abstract

The Automated Dynamic Traffic Assignment (ADTA) system introduces a novel approach to urban traffic management, merging the power of IoT with machine learning. This research assessed the system's performance in comparison to traditional traffic management strategies across various real-world scenarios. Findings consistently showcased the ADTA's superior efficiency: during peak traffic, it reduced vehicle wait times by half, and in scenarios with unexpected road closures, congestion detection was almost five times quicker, rerouting traffic with a remarkable 95% efficiency. The system's adaptability was further highlighted during weather challenges, ensuring safer vehicle speeds and substantially reducing weather-induced incidents. Large-scale public events, known disruptors of traffic flow, witnessed significantly reduced backlogs under the ADTA. Moreover, emergency situations benefitted from the system's rapid response, ensuring minimal delays for critical vehicles. This research underscores the potential of the ADTA system as a transformative solution for urban traffic woes, emphasizing its scalability and real-world applicability. With its integration of innovative technology and adaptive mechanisms, the ADTA offers a blueprint for the future of intelligent urban transport management.
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使用机器学习和物联网监控的交通拥堵检测和替代路由提供
自动动态交通分配(ADTA)系统为城市交通管理引入了一种新的方法,将物联网的力量与机器学习相结合。本研究评估了该系统在不同现实场景下与传统交通管理策略的性能。研究结果一致显示了ADTA的卓越效率:在交通高峰期间,它将车辆等待时间减少了一半,在意外道路封闭的情况下,拥堵检测速度几乎提高了五倍,交通改道效率达到了惊人的95%。该系统的适应性在恶劣天气条件下得到了进一步的强调,确保了车辆更安全的行驶速度,并大大减少了天气导致的事故。大型公共活动,众所周知的交通流量破坏者,在ADTA下,大大减少了积压。此外,紧急情况得益于系统的快速反应,确保关键车辆的延误最小。这项研究强调了ADTA系统作为城市交通困境的变革性解决方案的潜力,强调了其可扩展性和现实世界的适用性。ADTA将创新技术与自适应机制相结合,为未来智慧城市交通管理提供了蓝图。
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