Tang Yan-Feng, Zhang Zhuo-Yong, Fan Guo-Qiang, Zhu Hui-Ju, Wang Xin-Yue
Department of Chemistry, Resources Environment and GIS Key Lab of Beijing, Capital Normal University, Beijing 100037, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2005 May;25(5):715-8.
The Fourier transform infrared (IR) spectrometry and neural networks have been used to identification of official and un-official rhubarb samples in the present work. The IR spectra were compressed by using wavelet transform and then were normalized prior to network training. Spectra with 700 data points were compressed to 44 variables, therefore, the training process of neural networks were speed up. 52 rhubarb samples in which 25 official and 27 unofficial rhubarb samples are included have been used to network modeling. The effects of neuron number in hidden layer and momentum parameter on classification have been investigated. Results showed that about 98% rhubarb samples could be identified correctly when optimized parameters were used. This method can be useful for quality control in rhubarb-contained Chinese medicine production.
在本研究中,傅里叶变换红外(IR)光谱法和神经网络已被用于正品和非正品大黄样品的鉴别。通过小波变换对红外光谱进行压缩,然后在网络训练前进行归一化处理。具有700个数据点的光谱被压缩为44个变量,从而加快了神经网络的训练过程。52个大黄样品(包括25个正品大黄样品和27个非正品大黄样品)被用于网络建模。研究了隐藏层神经元数量和动量参数对分类的影响。结果表明,使用优化参数时,约98%的大黄样品能够被正确鉴别。该方法可用于含大黄中药生产的质量控制。