Title of article :
TiO2-based sensor arrays modeled with nonlinear regression analysis for simultaneously determining CO and O2 concentrations at high temperatures
Author/Authors :
Frank ، نويسنده , , Marla L. and Fulkerson، نويسنده , , Matthew D. and Patton، نويسنده , , Bruce R. and Dutta، نويسنده , , Prabir K.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
Responses of TiO2-based sensor arrays were analyzed using kernel ridge regression modeling to determine the concentrations of CO and O2 in gas mixtures at 873 K. Two variations of a two-sensor combination were studied. In each array, a La2O3-doped TiO2 sensor was used, whereas the second sensor in the array was a CuO–La2O3-doped TiO2 sensor, doped with different levels of copper. In sensor array I, 2 wt.% CuO was used, while 8 wt.% CuO was used in the second. Sensor array I was used to demonstrate the kernel ridge regression methodology. The concept of orthogonality of sensors was developed, which is a quantitative measure of how well the sensor array can discriminate between the two gases of interest. This model was then used to extract the concentrations of CO and O2 in a gas mixture over ranges of 2–10% O2 and 250–1000 ppm CO using the second sensor array. Prediction ability was found to be reasonable over certain concentration ranges and was determined by the orthogonality of the sensor responses.
Keywords :
Anatase , Support Vector Machines , Combustion exhaust monitoring , Kernel regression , Emissions monitoring
Journal title :
Sensors and Actuators B: Chemical
Journal title :
Sensors and Actuators B: Chemical