Smart Helmet Driven by Arduino Features Adaptive Sensors and Wireless Communication Technology

Year : 2024 | Volume :14 | Issue : 01 | Page : –
By

K Kazi

  1. Professor and Head Brahmdevdada Mane Institute of Technology, Solapur (MS), India

Abstract

Equipped with wireless communication technology, sensors, and a microprocessor, the Arduino-Futured Smart Helmet constitutes an incredibly powerful and efficient device. The microcontroller serves as the brains of the helmet, receiving and processing data from the sensors and guiding the other components as necessary. This technology allows the helmet to monitor its surroundings and respond to them immediately. The integrated sensors in the helmet measure temperature, humidity, and fluctuations in the state of the air, among other things. They can also measure the wearer’s heart rate and body temperature, which provides vital information about their overall health. The wearer then receives an in-depth understanding of how they are doing via a mobile app that receives this data wirelessly. One of the most crucial aspects of the Arduino-Futured Smart Helmet is its capacity to recognise and avoid collisions. When the sensors, which are designed to detect such situations, detect any unexpected impact or fall, an emergency signal is sent to the chosen emergency contact. This feature makes the helmet an essential piece of safety gear for activities like motorcycling, skiing, and cycling wherein accidents are common. The smart helmet’s built-in GPS allows for the wearer’s location to be traced in an emergency. This function may be especially useful to outdoor recreation aficionados who often engage in activities in distant and unknown locales. In addition to providing turn-by-turn directions, the helmet’s GPS can be utilised for navigation, making it a useful tool for both safety as well as convenience.

Keywords: Arduino, GPS, GSM, SIM, Helmet System,

[This article belongs to Journal of Materials & Metallurgical Engineering(jomme)]

How to cite this article: K Kazi. Smart Helmet Driven by Arduino Features Adaptive Sensors and Wireless Communication Technology. Journal of Materials & Metallurgical Engineering. 2024; 14(01):-.
How to cite this URL: K Kazi. Smart Helmet Driven by Arduino Features Adaptive Sensors and Wireless Communication Technology. Journal of Materials & Metallurgical Engineering. 2024; 14(01):-. Available from: https://journals.stmjournals.com/jomme/article=2024/view=151463

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Regular Issue Subscription Review Article
Volume 14
Issue 01
Received March 17, 2024
Accepted May 17, 2024
Published June 15, 2024