ARTIFICAL INTELLIGENCE ENABLED FIRE SAFETY FOR INDUSTRTY
M. BALAJI NAIK1, R. SHANKAR SURYA2, P. M. V. V. MANIKANTA3, G. VASU DEVA RAO4, M. UJWAL BHARATH5
1M. BALAJI NAIK, ME & UNIVERSITY COLLEGE OF ENGINEERING, JNTUK
2R. SHANKAR SURYA, ME & UNIVERSITY COLLEGE OF ENGINEERING, JNTUK
3P. M. V. V. MANIKANTA, ME & UNIVERSITY COLLEGE OF ENGINEERING, JNTUK
4G. VASU DEVA RAO, ME & UNIVERSITY COLLEGE OF ENGINEERING, JNTUK
5M. UJWAL BHARATH, ME & UNIVERSITY COLLEGE OF ENGINEERING, JNTUK
---------------------------------------------------------------------***---------------------------------------------------------------------
Abstract - This project focuses on the development of a wall-mounted automated fire extinguishing system, aiming to enhance fire safety in indoor environments. The prototype involves the design and construction of a model capable of swiftly detecting and extinguishing fires by pumping water through a nozzle to the specified location. The system integrates sensors for fire detection and a responsive mechanism that triggers the release of pressurized water upon detection of flames or a sudden increase in temperature. Through a combination of sensors and a central control unit, the device swiftly identifies the location of the fire and directs the water flow precisely to the affected area. The design emphasizes simplicity, efficiency, and rapid response, intending to minimize the spread and impact of fires in enclosed spaces. By employing a wall-mounted setup, the prototype maximizes accessibility and ease of deployment in various indoor settings. The project's evaluation involves testing the prototype's effectiveness in extinguishing controlled fires within a controlled environment. The results aim to demonstrate the system's ability to promptly detect and suppress fires, showcasing its potential as an innovative solution for fire safety in indoor spaces. This project seeks to offer a reliable and efficient alternative to traditional fire extinguishing methods, emphasizing proactive fire prevention and swift response to enhance safety measures in enclosed environments.
Key Words: Raspberry pi, Arduino UNO, IR/Thermal camera, Stepper Motor, Micro step driver, Pillow block bearing.