IoT-Enabled Smart Transportation: Optimizing Mobility and Reducing Traffic Congestion

Authors

  • Vaibhav Kumar

Abstract

The implementation of IoT in transportation is improving traffic efficiency, reducing emissions, and enhancing commuter experiences. This paper examines IoT applications in smart traffic lights, connected vehicles, and intelligent public transportation systems. It discusses the role of AI in predictive maintenance, accident prevention, and route optimization. Challenges such as cybersecurity threats, data privacy, and regulatory compliance are addressed. Case studies highlight successful smart transportation projects, concluding with strategies for scaling IoT in urban mobility solutions.

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Published

2024-01-31

How to Cite

Kumar, V. (2024). IoT-Enabled Smart Transportation: Optimizing Mobility and Reducing Traffic Congestion. Indonasian Journal of Advanced Research & Technology , 6(6). Retrieved from https://scholarlyarticle.vncinstitute.com/index.php/IJART/article/view/16

Issue

Section

Articles