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Real-Time Traffic Monitoring Systems Based on Magnetic Sensor Integration

  • Mohammed SarrabEmail author
  • Supriya Pulparambil
  • Naoufel Kraiem
  • Mohammed Al-Badawi
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 1122)

Abstract

Traffic management systems are one of the most significant components of any major city. Ease of use and effective connections are essential for sustainability and growth, impacting citizens, businesses, the environment, and the economy. Nevertheless, these systems represent a major challenge when it comes to digital renovation. This paper proposes a novel intelligent traffic monitoring system for a smart city after considering the research gaps, which are yet to be explored in the current scenario. Our proposed solution presents a system model to broadcast traffic congestion updates through roadside message units. The main objective of this research is to provide real-time traffic updates to users through message units installed at intersections specifically on collector roads to improve the mobility. The proposed system can be further enhanced to provide optimal re-route suggestions to the drivers. This effort is part of a funded research project that investigates Smart Streets: Real-Time Feedback for Adaptive Traffic Signals.

Keywords

Space occupancy RMU Vehicle classification Traffic monitoring Traffic congestion 

Notes

Acknowledgments

This article is based on the research work funded by The Research Council (TRC) of the Sultanate of Oman, under Grant No: RC/SR-SC/CIRC/19/01, (www.trc.gov.om).

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Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  • Mohammed Sarrab
    • 1
    Email author
  • Supriya Pulparambil
    • 1
  • Naoufel Kraiem
    • 2
  • Mohammed Al-Badawi
    • 2
  1. 1.Communication and Information Research Center, Sultan Qaboos UniversityMuscatSultanate of Oman
  2. 2.Department of Computer ScienceSultan Qaboos UniversityMuscatSultanate of Oman

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