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Highly Sensitive Sensors Based on Metal-Oxide Nanocolumns for Fire Detection

Authors
Lee, KwangjaeShim, Young-SeokSong, Young GeunHan, Soo DeokLee, Youn-SungKang, Chong-Yun
Issue Date
2월-2017
Publisher
MDPI
Keywords
fire detection; gas sensor; nanostructures
Citation
SENSORS, v.17, no.2
Indexed
SCIE
SCOPUS
Journal Title
SENSORS
Volume
17
Number
2
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/84836
DOI
10.3390/s17020303
ISSN
1424-8220
Abstract
A fire detector is the most important component in a fire alarm system. Herein, we present the feasibility of a highly sensitive and rapid response gas sensor based on metal oxides as a high performance fire detector. The glancing angle deposition (GLAD) technique is used to make the highly porous structure such as nanocolumns (NCs) of various metal oxides for enhancing the gas-sensing performance. To measure the fire detection, the interface circuitry for our sensors (NiO, SnO2, WO3 and In2O3 NCs) is designed. When all the sensors with various metal-oxide NCs are exposed to fire environment, they entirely react with the target gases emitted from Poly(vinyl chlorides) (PVC) decomposed at high temperature. Before the emission of smoke from the PVC (a hot-plate temperature of 200 degrees C), the resistances of the metal-oxide NCs are abruptly changed and SnO2 NCs show the highest response of 2.1. However, a commercial smoke detector did not inform any warning. Interestingly, although the NiO NCs are a p-type semiconductor, they show the highest response of 577.1 after the emission of smoke from the PVC (a hot-plate temperature of 350 degrees C). The response time of SnO2 NCs is much faster than that of a commercial smoke detector at the hot-plate temperature of 350 degrees C. In addition, we investigated the selectivity of our sensors by analyzing the responses of all sensors. Our results show the high potential of a gas sensor based on metal-oxide NCs for early fire detection.
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Graduate School > KU-KIST Graduate School of Converging Science and Technology > 1. Journal Articles

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