Solar with IOT Enabled Charging Stations for Electrical Vehicle

Authors

  • Dhananjaya M. K. Assistant Professor, Department of Computer Science & Engineering, RRIT, Bangalore, India
  • Varsha S. UG Student, R.R Institute of Technology, Visvesvaraya Technological University, Bangalore, India

Keywords:

Arduino UNO R3, Solar panel, MPPT controller, DC-DC converter, Modem, Servo motor, Battery, GSM, LDR sensors

Abstract

The main idea of this paper is to reduce greenhouse gas emission and fossil fuel. This paper is about charging E-vehicle module using the Solar panel, availability of maximum power is viewed by IOT(internet of things) device and the maximum power generated by the solar is being tracked using the MPPT(maximum power point tracking) controller. The whole setup is connected to the Arduino uno, the battery level generated and distributed amount of the battery is viewed using an LCD (liquid crystal display). This set up can charge multiple vehicles using solar cell. GSM (global system for mobile) modem is used to get an alert message for any reduction and access of power occurred in the system. A web page is used to check the availability status of charge, keep track the power transferred to the charging module and also displays the available location of the charging station.

References

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Published

10-06-2019

How to Cite

Dhananjaya M. K., & Varsha S. (2019). Solar with IOT Enabled Charging Stations for Electrical Vehicle. International Journal of Management Studies (IJMS), 6(Spl Issue 8), 50–55. Retrieved from https://researchersworld.com/index.php/ijms/article/view/2190

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Articles