Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
1513509 | Energy Procedia | 2012 | 7 Pages |
Abstract
Two kinds of methods of artificial neural network, which are used to recognized toxic gas, are presented and the effects of recognition are also compared. Firstly, the composition and principle of sensor array sensitive to toxic gas are introduced. Two kinds of neural network models, Back-Propagation Neural Network (BP) and Self-Organizing Feature Map (SOM), for qualitative analysis and recognition to three kinds of gas (CO, SO2, NO2) in sensor array system are utilized. The results show that preciseness rate of the two recognitions reaches 100%, but the identify capacity of SOM, such as study time and training epochs, is better than BP in entirety.
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