TY - JOUR
T1 - Non-linear carbon dioxide determination using infrared gas sensors and neural networks with Bayesian regularization
AU - Lau, King Tong
AU - Guo, Weimin
AU - Kiernan, Breda
AU - Slater, Conor
AU - Diamond, Dermot
N1 - Funding Information:
This research is funded by the Environmental Protection Agency, Ireland grant code: 2005-AIC-MS-43-M4 and Science Foundation Ireland grant code: SFI 03/IN.3/1361. W.M. Guo and K.T. Lau express their gratitude to China-Ireland Collaboration Funding Program.
PY - 2009/2/2
Y1 - 2009/2/2
N2 - Carbon dioxide gas concentration determination using infrared gas sensors combined with Bayesian regularizing neural networks is presented in this work. Infrared sensor with a measuring range of 0-5% was used to measure carbon dioxide gas concentration within the range 0-15000 ppm. Neural networks were employed to fulfill the non-linear output of the sensor. The Bayesian strategy was used to regularize the training of the back propagation neural network with a Levenberg-Marquardt (LM) algorithm. By Bayesian regularization (BR), the design of the network was adaptively achieved according to the complexity of the application. Levenberg-Marquardt algorithm under Bayesian regularization has better generalization capability, and is more stable than the classical method. The results showed that the Bayesian regulating neural network was a powerful tool for dealing with the infrared gas sensor which has a large non-linear measuring range and provide precise determination of carbon dioxide gas concentration. In this example, the optimal architecture of the network was one neuron in the input and output layer and two neurons in the hidden layer. The network model gave a relationship coefficient of 0.9996 between targets and outputs. The prediction recoveries were within 99.9-100.0%.
AB - Carbon dioxide gas concentration determination using infrared gas sensors combined with Bayesian regularizing neural networks is presented in this work. Infrared sensor with a measuring range of 0-5% was used to measure carbon dioxide gas concentration within the range 0-15000 ppm. Neural networks were employed to fulfill the non-linear output of the sensor. The Bayesian strategy was used to regularize the training of the back propagation neural network with a Levenberg-Marquardt (LM) algorithm. By Bayesian regularization (BR), the design of the network was adaptively achieved according to the complexity of the application. Levenberg-Marquardt algorithm under Bayesian regularization has better generalization capability, and is more stable than the classical method. The results showed that the Bayesian regulating neural network was a powerful tool for dealing with the infrared gas sensor which has a large non-linear measuring range and provide precise determination of carbon dioxide gas concentration. In this example, the optimal architecture of the network was one neuron in the input and output layer and two neurons in the hidden layer. The network model gave a relationship coefficient of 0.9996 between targets and outputs. The prediction recoveries were within 99.9-100.0%.
KW - Bayesian regularization
KW - Carbon dioxide
KW - Infrared gas sensors
KW - Levenberg-Marquardt algorithm
KW - Neural networks
UR - http://www.scopus.com/inward/record.url?scp=58249131218&partnerID=8YFLogxK
U2 - 10.1016/j.snb.2008.11.030
DO - 10.1016/j.snb.2008.11.030
M3 - Article
AN - SCOPUS:58249131218
SN - 0925-4005
VL - 136
SP - 242
EP - 247
JO - Sensors and Actuators, B: Chemical
JF - Sensors and Actuators, B: Chemical
IS - 1
ER -