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Chapter

IoT-Enabled Smart Traffic Control System for Congestion Control

Chapter

IoT-Enabled Smart Traffic Control System for Congestion Control

DOI link for IoT-Enabled Smart Traffic Control System for Congestion Control

IoT-Enabled Smart Traffic Control System for Congestion Control book

IoT-Enabled Smart Traffic Control System for Congestion Control

DOI link for IoT-Enabled Smart Traffic Control System for Congestion Control

IoT-Enabled Smart Traffic Control System for Congestion Control book

ByA. Suresh, Malarvizhi Nandagopal, Pethuru Raj, E. A. Neeba, Jenn-Wei Lin
BookIndustrial IoT Application Architectures and Use Cases

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Edition 1st Edition
First Published 2020
Imprint Auerbach Publications
Pages 22
eBook ISBN 9781003028741

ABSTRACT

The Level of Service (LOS) measure has demonstrated to be the most complete proportion of traffic congestion because of use of various parameters. The parameters that are utilized to quantify LOS incorporate vehicle thickness, volume to limit proportion, normal vehicle speed, and postponement at intersections. Smart traffic lights have been set up to oversee a stream of traffic; however, these are ending up progressively wasteful because of their structure. Furthermore, the absence of hardware that can furnish drivers with data about winning street conditions further expands the probability of one being trapped in traffic. To make traffic management increasingly effective at flagged intersections, the execution of the Internet of Things (IoT) worldview is utilized to make traffic management systems. For example, Wireless Sensor Networks (WSN) and fuzzy algorithms, to choose the periods of traffic lights. Street thickness and vehicles rates are gathered from the street framework utilizing cameras and are passed to a fuzzy algorithm to decide the congestion of a street. Reliant on these parameters, the algorithm will likewise figure out which streets ought to be given most elevated need while keeping up a level of decency, thus advancing traffic stream.

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