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Use of Wavelet Neural Networks to Solve Inverse Problems in Spectroscopy of Multi-component Solutions

机译:小波神经网络的使用解决多组分解决方案光谱的逆问题

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Wavelet neural networks (WNN) are a family of approximation algorithms that use wavelet functions to decompose the approximated function. They are more flexible than conventional multi-layer perceptrons (MLP), but they are more computationally expensive, and require more effort to find optimal parameters. In this study, we solve the inverse problems of determination of concentrations of components in multi-component solutions by their Raman spectra. The results demonstrated by WNN are compared to those obtained by MLP and by the linear partial least squares (PLS) method. It is shown that properly used WNN are a powerful method to solve multi-parameter inverse problems.
机译:小波神经网络(WNN)是一种近似算法,其使用小波函数来分解近似函数。它们比传统的多层的Perceptrons(MLP)更灵活,但它们更加计算昂贵,并且需要更多的努力来找到最佳参数。在本研究中,我们通过拉曼光谱解决了多组分溶液中组分浓度的逆问题。通过MLP和通过线性局部最小二乘(PLS)方法进行比较WNN所示的结果。结果表明,适当使用的WNN是解决多参数逆问题的强大方法。

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