Deep Neural Network for Localizing Gas Source Based on Gas Distribution Map
2022-01-01,
Zaffry Hadi Mohd Juffry,
Kamarulzaman Kamarudin,
Abdul Hamid Adom,
Mao X.,
Latifah Munirah Kamarudin,
Ammar Zakaria,
Syed Muhammad Mamduh Syed Zakaria,
Abdullah A.N.
The dynamic characteristic of gas dispersal in uncontrolled environment always leads to inaccurate gas source localization prediction from gas distribution map. Gas distribution map is a representation of the gas distribution over an environment which helps human to observe the concentration of harmful gases at a contaminated area. This paper proposes the utilization of Deep Neural Network (DNN) to predict the gas source location in a gas distribution map. DNN learns from the previous gas distribution map data and patterns to generate a model that is able predict location of gas source. The results indicate that DNN is able to accurately predict the location within the range of 0.8 to 2 m from the actual gas source. This finding shows that DNN has a high potential for utilization in gas source localization application.
Deep Neural Network for Localizing Gas Source Based on Gas Distribution Map
2022-01-01,
Zaffry Hadi Mohd Juffry,
Kamarulzaman Kamarudin,
Abdul Hamid Adom,
Mao X.,
Latifah Munirah Kamarudin,
Ammar Zakaria,
Syed Muhammad Mamduh Syed Zakaria,
Abdulnasser Nabil Abdullah
The dynamic characteristic of gas dispersal in uncontrolled environment always leads to inaccurate gas source localization prediction from gas distribution map. Gas distribution map is a representation of the gas distribution over an environment which helps human to observe the concentration of harmful gases at a contaminated area. This paper proposes the utilization of Deep Neural Network (DNN) to predict the gas source location in a gas distribution map. DNN learns from the previous gas distribution map data and patterns to generate a model that is able predict location of gas source. The results indicate that DNN is able to accurately predict the location within the range of 0.8 to 2 m from the actual gas source. This finding shows that DNN has a high potential for utilization in gas source localization application.