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Articles

Vol. 1 No. 3 (2023):

A smart IOT based black-box system for automobiles

  • Vanitha M1
  • Arunkumar K1
  • Hemamalini A1
  • Alam Yaswanth1
Submitted
December 1, 2023
Published
2023-12-02

Abstract

The combination of computer technology and cars has resulted in the creation of a new level of knowledge services in vehicles. The capabilities that the car recorder has are quite similar to those of a heavier-than-aircraft recorder. It is used to study the causes of automobile accidents and to avoid the loss of life and property that occurs from the collisions. In this study, a paradigm for an associate Automobile Recording System that will be installed inside automobiles is proposed. The purpose of the system is to conduct an investigation into the occurrence of accidents by searching for the reason in an objective manner and monitoring what takes place within the cars. The method also includes enhancing safety by prohibiting tampering with the recorder’s information in order to make it more foolproof. 

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