Please use this identifier to cite or link to this item: http://dspace.unimap.edu.my:80/xmlui/handle/123456789/44067
Title: Classification of domestic burning smell using covariance k-nearest neighbour algorithm for early fire detection application
Authors: Allan Melvin, Andrew
Kamarulzaman, Kamarudin
Syed Muhammad, Mamduh
Ali Yeon, Md Shakaff
Ammar, Zakaria
Abdul Hamid, Adom
David Lorater, Ndzi
Ragunathan, Santiagoo
raguna@unimap.edu.my
Keywords: Accidents
Alarm systems
Algorithms
Chemical sensors
Experiments
Fire detectors
Smoke Classification system
Humidity and temperatures
K-nearest neighbour algorithms
K-nearest neighbours
Mean classification
Measurement device
Motor vehicle crashes
Portable electronic nose
Issue Date: 2014
Publisher: Italian Association of Chemical Engineering (AIDIC)
Citation: Chemical Engineering Transactions, vol. 40, 2014, pages 271-276
Abstract: Fire is one of the most common hazards in households. It is the fifth leading unintentional cause of injury and death, behind motor vehicle crashes, falls, poisoning by solids or liquids, and drowning. It also ranks as the first cause of death for children under the age of 15 at home. Roughly, 80 percent of all fire deaths occur in places where people sleep, such as in homes, dormitories, barracks, or hotels. 74% of the deaths result from fires in homes with no smoke alarms or no working smoke alarms while surveys report that 96% of all homes have at least one smoke alarm. Nearly all home and other building fires are preventable. No fire is inevitable. Determination of burning smell is important because it can help in early fire detection and prevention. This preliminary study discusses the development of a fire sensing system that is not only capable of detecting fire in its early stage but also of classifying the fire based on the smell of the smoke in the environment. A domestic burning smell classification system for early fire detection application has been proposed using new covariance k-nearest neighbour (Ck-NN) algorithm. The experiments were performed on recorded smell samples from combustion of ten different commonly available domestic odour sources, including candle, joss sticks, air freshener, mosquito coil, newspaper, card board, plastic materials, Styrofoam and wood. All the experiments were done in a test chamber with humidity and temperature sensors. Portable Electronic Nose (PEN3) from AirSense Analytics is used as the measurement device. The smell source is placed 0.3m from the PEN3 and the time-series signal is measured for two minutes. The odour metrics consist of 66000 odour samples are modelled using Ck-NN algorithm. It is found that the average mean classification accuracy for the model is 99.63%.
Description: Link to publisher’s homepage at http://www.aidic.it/cet/
URI: http://www.aidic.it/cet/14/40/046.pdf
http://dspace.unimap.edu.my:80/xmlui/handle/123456789/44067
ISBN: 978-88-95608-31-0
ISSN: 2283-9216
Appears in Collections:Ragunathan, Santiagoo, Assoc. Prof. Ts. Dr.
Ali Yeon Md Shakaff, Dato' Prof. Dr.

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