Smart Vehicle Tracking with Anti-Theft and Accident Detection System

Year : 2024 | Volume :11 | Issue : 01 | Page : 1-8
By

Vijay Diwan

Vikas Sangappa Birajdar

Bholanath Mahadeorao Bahur

N.V. Kale

  1. Student Department of Electronics & Telecommunication, Sinhgad College of Engineering, Savitribai Phule University Maharashtra India
  2. Student Department of Electronics & Telecommunication, Sinhgad College of Engineering, Savitribai Phule University Maharashtra India
  3. Student Department of Electronics & Telecommunication, Sinhgad College of Engineering, Savitribai Phule University Maharashtra India
  4. Professor Department of Electronics & Telecommunication, Sinhgad College of Engineering, Savitribai Phule University Maharashtra India

Abstract

This paper introduces a comprehensive Smart Vehicle Tracking System equipped with advanced functionalities such as live vehicle tracking, real-time fuel monitoring, anti-theft measures, and accident detection systems. Transportation systems have been completely transformed by the incorporation of cutting-edge technologies into automobiles, which have increased efficiency, safety, and security. Due to their ability to reduce the risks associated with auto theft and accidents, smart vehicle tracking systems with anti-theft and accident detection features have attracted a lot of attention among these technologies. The anti-theft and accident detection features of smart car tracking systems are the main topics of this research paper’s thorough analysis of the body of knowledge and cutting-edge technologies. The study looks at the fundamental ideas, essential elements, and working mechanisms of these kinds of systems, as well as the advantages and disadvantages of them. In addition, it addresses current developments, new trends, and potential paths in this area with the goal of providing understanding for scholars, professionals, and decision-makers who are engaged in automotive security and safety. The primary goal of this system is to enhance the security and safety of vehicles while providing owners with valuable insights into their vehicle’s status.

Keywords: ESP 32 microcontroller, Ultrasonic sensor, Neo-6M GPS module, MPU 6050 gyroscope and accelerometer sensor, Relay, motor, Power supply.

[This article belongs to Journal of Automobile Engineering and Applications(joaea)]

How to cite this article: Vijay Diwan, Vikas Sangappa Birajdar, Bholanath Mahadeorao Bahur, N.V. Kale. Smart Vehicle Tracking with Anti-Theft and Accident Detection System. Journal of Automobile Engineering and Applications. 2024; 11(01):1-8.
How to cite this URL: Vijay Diwan, Vikas Sangappa Birajdar, Bholanath Mahadeorao Bahur, N.V. Kale. Smart Vehicle Tracking with Anti-Theft and Accident Detection System. Journal of Automobile Engineering and Applications. 2024; 11(01):1-8. Available from: https://journals.stmjournals.com/joaea/article=2024/view=147607

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Regular Issue Subscription Original Research
Volume 11
Issue 01
Received April 25, 2024
Accepted May 3, 2024
Published May 24, 2024