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Generalization Analysis of Neural Networks for Gas Impurity in Air

机译:空气中气体杂质神经网络的概括分析

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The support vector machine was adopted to recognize the nonlinear fluorescence spectrum after compressed by wavelets transform. In order to investigate the generalization capability of neural network more roundly, a model for the testing data is proposed. The generalization capability of the support vector machine (SVM) network of this work and that of the probabilistic neural network (PNN) of a previous work are compared with the data produced by the model. The simulation results show that the SVM network provides better generalization capability than that of the PNN network for either laboratory data or changes data in experimental conditions.
机译:采用支撑载体机器识别通过小波变换压缩后的非线性荧光光谱。为了更全面地研究神经网络的泛化能力,提出了一种用于测试数据的模型。将此工作的支持向量机(SVM)网络的泛化能力与先前工作的概率神经网络(PNN)的概括能力与模型产生的数据进行比较。仿真结果表明,SVM网络提供比实验室数据的PNN网络的更好的泛化能力,或者在实验条件下改变数据。

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