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Classification and Quantitation of ↑(1)H NMR Spectra of Alditols Binary Mixtures Using Artificial Neural Networks

机译:使用人工神经网络对醛糖醇二元混合物的↑(1)H NMR光谱进行分类和定量

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摘要

A pattern recognition method based on artificial neural networks (ANNs) to analyze and quantify the components of six alditol binary mixtures is presented. This method is suitable to classify the spectra of the 15 mixtures obtained from the six alditols and to produce quantitative estimates of the component concentrations. The system is user-friendly and is helpful in solving the problem of greatly overlapping signals, often encountered in NMR spectroscopy of carbohydrates. A "classification" ANN uses 200 intensity values of the ↑(1)H NMR spectrum in the range 3.5-4 ppm. When the correct mixture is identified, the quantification is solved by assigning a specific ANN to each mixture. These ANNs use the same 200 values of the spectrum and output the values of the two concentrations. The error in the ANN responses is studied, and a method is developed to estimate the accuracy in determining the concentrations. The networks' abilities to recognize previously unseen mixtures are tested. When the classification ANN (trained on the 15 binary mixtures) Rinsed to complex (i.e., more than binary) mixtures of the six known alditols, it successfully identifies the components if their minimum concentration is 10%. Given the precision of the results and the small number of errors reported, we believe that the method can be used in all fields in which the recognition and quantification of components are necessary.
机译:提出了一种基于人工神经网络(ANN)的模式识别方法,用于分析和量化六种糖醇二元混合物的成分。该方法适用于对从六种糖醇得到的15种混合物的光谱进行分类,并能对组分浓度进行定量估计。该系统用户友好,有助于解决碳水化合物的NMR光谱中经常遇到的信号严重重叠的问题。 “分类”人工神经网络使用200个在3.5-4 ppm范围内的↑(1)H NMR光谱强度值。识别出正确的混合物后,通过为每种混合物分配特定的人工神经网络来解决定量问题。这些人工神经网络使用相同的200个光谱值,并输出两个浓度值。研究了人工神经网络响应中的误差,并开发了一种方法来估算确定浓度的准确性。测试了网络识别以前看不见的混合物的能力。当分类ANN(在15种二元混合物上进行训练)漂洗到六种已知糖醇的复杂混合物(即大于二元混合物)时,如果其最低浓度为10%,则可以成功识别组分。鉴于结果的准确性和所报告的少量错误,我们相信该方法可以用于需要识别和定量组分的所有领域。

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