Design and Implementation of Smart Poles using Machine Learning and IOT

Abstract

In this age of change and technological growth, the traditional maintenance and control system for street lighting is still antiquated. For such ground-breaking online companies, the Internet of Things (IoT) evolution has been a helpful cornerstone. So, to support the upkeep and management of the street lighting system, we use this highly sought-after technology. The suggested approach makes it possible to maintain and manage street lighting and makes it simpler to keep an eye on and manage its operation. Street lights use a lot of energy every day that may be used for other essential purposes. Through the use of a Smart Pole System, this article seeks to overcome this problem. Various other modules, including LoRaWAN, GPRS, and a Smart Display to track the amount of air pollutants present, temperature, and humidity, have also been implemented on top of smart street lighting systems to create a "Smart Pole System," which goes beyond the auto-dimming and auto-turn on and off feature of the street lights.

Country : India

1 Ramya Shree L2 Niharika B G3 Rakesh K S4 Madhu V5 Shivaprasad B K

  1. UG Student, Department of Electronics and Communication Engineering, PESITM, Shivamogga, Karnataka, India
  2. UG Student, Department of Electronics and Communication Engineering, PESITM, Shivamogga, Karnataka, India
  3. UG Student, Department of Electronics and Communication Engineering, PESITM, Shivamogga, Karnataka, India
  4. UG Student, Department of Electronics and Communication Engineering, PESITM, Shivamogga, Karnataka, India
  5. Assistant Professor, Department of Electronics and Communication Engineering, PESITM, Shivamogga, Karnataka, India

IRJIET, Volume 6, Issue 5, May 2022 pp. 217-219

doi.org/10.47001/IRJIET/2022.605031

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