Experimental Study on the Performance of an Enhanced Smoke Detector
Authors
Jovelle Rein Priya S. Calderon
Computer Engineering Department, Eulogio “Amang” Rodriguez Institute of Science and Technology, Nagtahan Street, Sampaloc, Manila, 1008 (Philippines)
Computer Engineering Department, Eulogio “Amang” Rodriguez Institute of Science and Technology, Nagtahan Street, Sampaloc, Manila, 1008 (Philippines)
Computer Engineering Department, Eulogio “Amang” Rodriguez Institute of Science and Technology, Nagtahan Street, Sampaloc, Manila, 1008 (Philippines)
Computer Engineering Department, Eulogio “Amang” Rodriguez Institute of Science and Technology, Nagtahan Street, Sampaloc, Manila, 1008 (Philippines)
Computer Engineering Department, Eulogio “Amang” Rodriguez Institute of Science and Technology, Nagtahan Street, Sampaloc, Manila, 1008 (Philippines)
Article Information
DOI: 10.51244/IJRSI.2026.13010064
Subject Category: Engineering & Technology
Volume/Issue: 13/1 | Page No: 740-753
Publication Timeline
Submitted: 2026-01-10
Accepted: 2026-01-15
Published: 2026-01-30
Abstract
Fire accidents continue to pose significant risks to households, schools, and communities, making early detection essential for minimizing damage and saving lives. This study introduces an enhanced prototype smoke detector designed to integrate multiple sensing capabilities—smoke, gas, and fire detection—into a single unit. The system is equipped with LED indicators and sound alarms, providing both visual and auditory alerts to ensure timely awareness. By combining these features, the prototype offers a more affordable and comprehensive safety solution compared to conventional single-sensor devices.
Keywords
Smoke detector, fire safety, multi-sensor system
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References
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