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Comparing success levels of different neural network structures in extracting discriminative information from the response patterns of a temperature-modulated resistive gas sensor

机译:从温度调制电阻式气体传感器的响应模式中提取判别信息时,比较不同神经网络结构的成功水平

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摘要

Performances of three neural networks, consisting of a multi-layer perceptron, a radial basis function, and a neuro-fuzzy network with local linear model tree training algorithm, in modeling and extracting discriminative features from the response patterns of a temperature-modulated resistive gas sensor are quantitatively compared. For response pattern recording, a voltage staircase containing five steps each with a 20s plateau is applied to the micro-heater of the sensor, when 12 different target gases, each at 11 concentration levels, are present. In each test, the hidden layer neuron weights are taken as the discriminatory feature vector of the target gas. These vectors are then mapped to a 3D feature space using linear discriminant analysis. The discriminative information content of the feature vectors are determined by the calculation of the Fisher's discriminant ratio, affording quantitative comparison among the success rates achieved by the different neural network structures. The results demonstrate a superior discrimination ratio for features extracted from local linear neuro-fuzzy and radial-basis-function networks with recognition rates of 96.27% and 90.74%, respectively.
机译:由多层感知器,径向基函数和带有局部线性模型树训练算法的神经模糊网络组成的三个神经网络在对温度调制的电阻性气体的响应模式进行建模和提取判别特征时的性能传感器进行定量比较。对于响应模式记录,当存在12种不同目标气体(每种浓度为11种浓度)时,将包含五个阶梯的电压阶梯(每个阶梯具有20秒的平稳期)应用于传感器的微型加热器。在每个测试中,将隐层神经元权重作为目标气体的区分特征向量。然后使用线性判别分析将这些向量映射到3D特征空间。特征向量的判别信息内容是通过计算Fisher判别比来确定的,可以对不同神经网络结构所获得的成功率进行定量比较。结果表明,从局部线性神经模糊和径向基函数网络提取的特征具有较高的识别率,识别率分别为96.27%和90.74%。

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