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Fluorescence spectrum recognition of pesticides based on wavelet neural network

机译:基于小波神经网络的农药荧光光谱识别

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The fluorescence spectrum of pesticides whose structures are very similar overlap in a certain wavelength range. To the classification and recognition of overlapping fluorescence spectrum, BP network has the shortcomings of slow training speed and high error rate. An improved wavelet neural network (WNN) is presented in this paper. The network topology is given, wavelet basis is selected and its network algorithm is designed to carry out the design of experimental system. By using the WNN and BP network separately, the simulation research of fluorescence spectrum classification of carbofuran and carbaryl has been done. The results show that WNN has a higher resolution. To minor structural differences of spectrum, it has a better recognition capability and higher measuring accuracy.
机译:结构非常相似的农药的荧光光谱在一定波长范围内重叠。对于重叠荧光光谱的分类和识别,BP网络具有训练速度慢,错误率高的缺点。本文提出了一种改进的小波神经网络(WNN)。给出了网络拓扑结构,选择了小波基,并设计了其网络算法进行实验系统的设计。通过分别使用WNN和BP网络,对呋喃丹和西维因的荧光光谱分类进行了模拟研究。结果表明,WNN具有更高的分辨率。对于光谱的微小结构差异,它具有更好的识别能力和更高的测量精度。

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