Survey on Energy Efficient Smart Street Light System

  • Sunayana S Badgelwar
  • Mrs.Himangi M Pande
Keywords: LED lamps, Raspberry Pi, Sensor, LDR

Abstract

This paper introduces a smart street light controlling system to boost energy efficiency of the city. Now a days people are so busy that they rarely find the time to switch OFF the light when it has no use. This results in consumption of lot of energy. This paper proposes the system where street light changed to ON state in the evening before sun sets and they are switched off in the morning after sunrise when there is enough light on the street. This leads to reduce of energy consumption. In this system the movement of vehicle and human is detected on highways to switch on a chunk of street light ahead of it and switch off the trailing lights. This is achieved by processing the image of the object and sending control message to the street light block. Additional feature of the system such as using a suitable sensors of the detection of failed street light and then sending the SMS to control authority using GSM mode to take appropriate action regarding failure

References

[1] J. Fan, A. K. Elmagarmid, X. Zhu, G. A. Walidand L. Wu. Classview: Hierarchical Video Shot Classification, Indexing and Accessing, IEEE Trans. on Multimedia, 6, pages 70-86, 2004.
[2] “Intelligent Smart Streetlight system In a Smart City” 2014 IEEE Emerging Technology and Factory Automation (ETFA) 978-1-4799- 4845-1/14/$31.00 c 2014 IEEE
[3] “Streetlight Intelligent Remote Control System based on Wireless
[4] U. Gargi, R. Kasturi and S. H. Strayer. “Performance Characterization of Video Shot-change Detection Methods”. IEEE Trans. on Circuits and Systems for Video Technology.
[5] R. Lienhart.” Comparison of Automatic Shot Storage and Retrieval for Image and Video Databases”, Boundary Detection Algorithms. Volume 3656.
[6] C.-W. Ngo, T.-C. Pong and H.-J. Zhang.” On Clustering And Retrieval of Video Shots through Temporal Slices Analysis”, IEEE Trans. On Multimedia, 4(4), pages 446- 458, 2002. [7] E. Sahouria and A. Zakhor.”Content Analysis of Video using Principal Components”. IEEE Trans. on Circuits and Systems for Video Technology , CSVT-9, pages 1290-1298, 1999 . [8] G. Stockman and L. Shapiro, Computer Vision. Prentice Hall, 2001.
[9] R. Zabih, J. Miller and K. Mai. “A Feature-based Algorithm for Detecting Cuts and Classifying Scene Breaks”. In Proc. ACM Multimedia, pages 189-200, 1995
[10] Thomas Novaks and Heimo Zeilinger ,“Intelligent Smart Streetlight system In a Smart City” 2014 IEEE Emerging Technology and Factory Automation (ETFA) 978-1-4799-4845-1/14/$31.00 c 2014 IEEE
[11] A New Streetlight Monitoring System Based On Wireless Sensor Networks” IEEE 2010.
[12] E. Sahouria and A. Zakhor. “Content Analysis of Video using Principal Component”s. IEEE Trans. on Circuits and Systems for Video Technology, CSVT-9, pages 1290-1298, 1999.
[13] “Automatic Street Light Intensity Control and Road Safety Module Using Embedded System” International Conference on Computing and Control Engineering (ICCCE 2012), 12 & 13 April,2012.
Published
2018-01-07
How to Cite
Badgelwar, S., & Pande, M. (2018). Survey on Energy Efficient Smart Street Light System. Asian Journal For Convergence In Technology (AJCT) ISSN -2350-1146, 3(3). Retrieved from http://www.asianssr.org/index.php/ajct/article/view/302
Section
Article

Most read articles by the same author(s)

Obs.: This plugin requires at least one statistics/report plugin to be enabled. If your statistics plugins provide more than one metric then please also select a main metric on the admin's site settings page and/or on the journal manager's settings pages.