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Home / Archives / Volume-5 / Issue-3 / Article-1

Volume - 5 | Issue - 3 | september 2023

Green Lights Ahead: An IoT Solution for Prioritizing Emergency Vehicles Open Access
Soham Methul  , Saket Kaswa  273
Pages: 250-266
Cite this article
Methul, Soham, and Saket Kaswa. "Green Lights Ahead: An IoT Solution for Prioritizing Emergency Vehicles." Journal of Ubiquitous Computing and Communication Technologies 5, no. 3 (2023): 250-266.
Published
21 July, 2023
Abstract

An improvised solution for the impact of IoT-enabled real-time traffic management on emergency vehicle response times has been presented in this research. The study was conducted using real-time traffic data and IoT sensors to monitor the flow of traffic and the movement of emergency vehicles. The results show that the integration of IoT technology improve emergency response times by enabling more efficient navigation of traffic. The benefits of IoT-enabled traffic management for emergency services include reduced response times, improved safety, and a more efficient use of resources. The results of this study have implications for the wider adoption of IoT-enabled traffic management in cities and other areas and suggest the need for further research in this area to explore the potential benefits and limitations of this technology.

Keywords

Real-time traffic data response time optimization traffic flow improvement Internet of Things (IoT)

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