Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights

This study presents the indoor occupancy estimation using carbon dioxide concentration and neural network with random weights (NNRW). The utilization of carbon dioxide concentration is as an alternative to overcome the limitation of existing techniques, such as dependency to favourable lighting cond...

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Main Authors: Muhammad Faris, Ramli, Kishendran, Muniandy, Asrul, Adam, Ahmad Fakhri, Ab. Nasir, Mohd Ibrahim, Shapiai
Format: Conference or Workshop Item
Language:English
Published: IOP Publishing 2020
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/27768/13/Indoor%20occupancy%20estimation%20using%20carbon%20dioxide.pdf
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author Muhammad Faris, Ramli
Kishendran, Muniandy
Asrul, Adam
Ahmad Fakhri, Ab. Nasir
Mohd Ibrahim, Shapiai
author_facet Muhammad Faris, Ramli
Kishendran, Muniandy
Asrul, Adam
Ahmad Fakhri, Ab. Nasir
Mohd Ibrahim, Shapiai
author_sort Muhammad Faris, Ramli
collection UMP
description This study presents the indoor occupancy estimation using carbon dioxide concentration and neural network with random weights (NNRW). The utilization of carbon dioxide concentration is as an alternative to overcome the limitation of existing techniques, such as dependency to favourable lighting condition and camera position. Whereas, NNRW provides a generalized and fast learning speed classification. In this study, MH-Z19 sensor is used to acquire carbon dioxide concentration and the NNRW is a multiclass estimation method. The numbers of the occupants are divided into three different classes, which are 15 occupants, 30 occupant and 50 occupant classes. Result indicates that the NNRW classifier has obtained training and testing accuracy, about 100 percent and 52 percent, respectively.
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spelling UMPir277682020-12-23T02:53:12Z http://umpir.ump.edu.my/id/eprint/27768/ Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights Muhammad Faris, Ramli Kishendran, Muniandy Asrul, Adam Ahmad Fakhri, Ab. Nasir Mohd Ibrahim, Shapiai QA76 Computer software This study presents the indoor occupancy estimation using carbon dioxide concentration and neural network with random weights (NNRW). The utilization of carbon dioxide concentration is as an alternative to overcome the limitation of existing techniques, such as dependency to favourable lighting condition and camera position. Whereas, NNRW provides a generalized and fast learning speed classification. In this study, MH-Z19 sensor is used to acquire carbon dioxide concentration and the NNRW is a multiclass estimation method. The numbers of the occupants are divided into three different classes, which are 15 occupants, 30 occupant and 50 occupant classes. Result indicates that the NNRW classifier has obtained training and testing accuracy, about 100 percent and 52 percent, respectively. IOP Publishing 2020 Conference or Workshop Item PeerReviewed pdf en cc_by http://umpir.ump.edu.my/id/eprint/27768/13/Indoor%20occupancy%20estimation%20using%20carbon%20dioxide.pdf Muhammad Faris, Ramli and Kishendran, Muniandy and Asrul, Adam and Ahmad Fakhri, Ab. Nasir and Mohd Ibrahim, Shapiai (2020) Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights. In: IOP Conference Series: Materials Science and Engineering, The 6th International Conference on Software Engineering & Computer Systems , 25-27 September 2019 , Pahang, Malaysia. pp. 1-9., 769 (012011). ISSN 1757-899X https://doi.org/10.1088/1757-899X/769/1/012011
spellingShingle QA76 Computer software
Muhammad Faris, Ramli
Kishendran, Muniandy
Asrul, Adam
Ahmad Fakhri, Ab. Nasir
Mohd Ibrahim, Shapiai
Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
title Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
title_full Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
title_fullStr Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
title_full_unstemmed Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
title_short Indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
title_sort indoor occupancy estimation using carbon dioxide concentration and neural network with random weights
topic QA76 Computer software
url http://umpir.ump.edu.my/id/eprint/27768/13/Indoor%20occupancy%20estimation%20using%20carbon%20dioxide.pdf
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AT ahmadfakhriabnasir indooroccupancyestimationusingcarbondioxideconcentrationandneuralnetworkwithrandomweights
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