Precision Gas Leakage Detection System with Integrated Sensors

Main Article Content

Vishnu Sakthi D, Karthikeyan A, Deanbeemarao B, Sharath Kumar S, Tharun Y, Vishal D

Abstract

Gas leaks pose significant safety risks in both residential and industrial settings, making gas leakage detectors essential safety devices for many years. These detectors serve the crucial function of identifying the presence of hazardous gases, such as carbon monoxide, and activating an alarm system to promptly alert occupants of the building. This innovative gas leak detection system leverages mobile technology, integrating phone calls, SMS, WhatsApp, and GPS location services. Additionally, it features a unique capability to shut off the power supply in the affected area, providing a real-time and effective means of gas leak detection and containment. This gas leakage detection system prototype has been successfully developed and tested with gases such as BUTANE and PROPENE. The experimental results demonstrate that the system can detect gas leaks in less than a minute. The primary objective of this gas detection project is to implement a security system for identifying gas leaks in closed environments. It utilizes MQ-2 sensors designed to function effectively within enclosed spaces. Furthermore, this system can be seamlessly integrated with other security and safety systems for enhanced overall protection.

Article Details

How to Cite
Vishnu Sakthi D, et al. (2023). Precision Gas Leakage Detection System with Integrated Sensors. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10), 39–43. https://doi.org/10.17762/ijritcc.v11i10.8462
Section
Articles
Author Biography

Vishnu Sakthi D, Karthikeyan A, Deanbeemarao B, Sharath Kumar S, Tharun Y, Vishal D

Vishnu Sakthi D1, Karthikeyan A2, Deanbeemarao B3, Sharath Kumar S4, Tharun Y5, Vishal D6

1Department of CSE, RMD Engineering College,

Kavaraipettai, Chennai-601206.

Mail ID: vishnu.cse@rmd.ac.in

2Department of CSE, Panimalar Engineering College,

Poonamallee, Chennai -600123.

Mail ID : keyanmailme@gmail.com

3Department of CSE, Panimalar Engineering College,

Poonamallee, Chennai -600123.

Mail ID : deanbeemarao2010@gmail.com

4Department of CSE, RMD Engineering College,

Kavaraipettai, Chennai-601206.

Mail ID:sharath88528@gmail.com

5Department of CSE, RMD Engineering College,

Kavaraipettai, Chennai-601206.

Mail ID:tharunyuva19@gmail.com

6Department of CSE, RMD Engineering College,

Kavaraipettai, Chennai-601206.

Mail ID:vishaldayalan1709@gmail.com

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