Nonlinear Correction of Methane Sensor Based on Functional Link Neural Network

Information Technology and Computer Science, 2009. ITCS 2009. International Conference(2009)

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摘要
The nonlinear relation between methane concentration and the output voltage of the sensor is indicated by analysis of detection principle of catalytic methane sensor. This paper proposes a nonlinear correction model based on functional link neural network (FLNN) with the output voltage of methane sensor as input and the methane concentration as output to eliminate the nonlinear errors in methane detection. By adding some high-order terms, the model applies the single-layer network to realize the network supervised learning. The approach has advantages of nonlinear approach ability and independent on accurate mathematical model, it can improve network learning speed and simplify the network structure. The experimental result shows that the maximum relative error of simulation curves is reduced to 0.86%, which is much smaller than that of piecewise linear fitting curve with 3.09%. The detection accuracy of methane sensor is improved.
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关键词
nonlinear approach ability,network structure,single-layer network,functional link neural network(flnn),methane detection,nonlinear correction model,nonlinear correction,methane concentration,methane sensor,catalytic methane sensor,functional link neural network,output voltage,neural network,voltage,nonlinear equations,coal,neural nets,relative error,curve fitting,production,fitting,neural networks,coal mine,methane,piecewise linear,mathematical model,learning artificial intelligence,mining industry,face detection,artificial neural networks,catalysts,resistance,supervised learning
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