Iot Based Automatic Breaking Control System For Ev Vehicle And Monitoring System

Authors

  • Zohaib Hasan B.E.Student; Department of ECE ISL Engineering College Hyderabad-500059, India Author
  • Syed Musharaf Uddin B.E.Student; Department of ECE ISL Engineering College Hyderabad-500059, India Author
  • Shaik Anwar Pasha B.E.Student; Department of ECE ISL Engineering College Hyderabad-500059, India Author
  • Mr. K Suresh Assistant Professor; Department of ECE ISL Engineering College Hyderabad-500059, India Author

DOI:

https://doi.org/10.63665/k94z4q29

Keywords:

Electric Vehicle (EV), IoT, Automated Braking System, Ultrasonic Sensor, Battery Monitoring, Blynk Application, Obstacle Detection, Real-Time Monitoring, Embedded Systems, Smart Safety System.

Abstract

Electric vehicles (EV) are getting more and more popular in today’s society as a result of rising petrol prices. An IoT based automated breaking Control system for EV vehicles is proposed in this paper, together with a monitoring system. An EV’s battery monitoring and control system measures the battery’s voltage and temperature. Sensors, a microprocessor, a Wi-Fi module, and a battery make up this system. It is built using the affordable microcontroller. It has an ultrasonic sensor and works as an automated braking system. The controller receives the data sent by the ultrasonic sensor, which is used to identify obstacles, and uses them to regulate the brake mechanism. Voltage, temperature, and battery data are passed to the microcontroller, which subsequently sends them over Wi-Fi to the Blynk application. It is suggested that the parameters of the EV be monitored immediately using a Blynk app.

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References

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Published

2026-04-28

How to Cite

Iot Based Automatic Breaking Control System For Ev Vehicle And Monitoring System. (2026). International Journal of Multidisciplinary Engineering In Current Research, 11(4s), 341-345. https://doi.org/10.63665/k94z4q29