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首页> 外文期刊>Spectrochimica acta, Part A. Molecular and biomolecular spectroscopy >Chemometric assisted Fourier Transform Infrared (FTIR) Spectroscopic analysis of fruit wine samples: Optimizing the initialization and convergence criteria in the non-negative factor analysis algorithm for developing a robust classification model
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Chemometric assisted Fourier Transform Infrared (FTIR) Spectroscopic analysis of fruit wine samples: Optimizing the initialization and convergence criteria in the non-negative factor analysis algorithm for developing a robust classification model

机译:化学计量辅助傅立叶变换红外(FTIR)水果葡萄酒样品的光谱分析:优化非负因子分析算法中的初始化和收敛标准,开发鲁棒分类模型

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The present work proposes certain optimization in the non-negative factor analysis (NNFA) algorithm to ensure an efficient analysis of the Fourier transformation infrared (FTIR) spectral data sets of the fruit wine samples. The first optimization deals with initialization of the variables in a controlled fashion that would ensure a reasonably good quality initial estimate to implement NNFA algorithm. It prevents NNFA algorithm from itinerating with random numbers that essentially have no chemical relevance. The second implemented optimization involves eliminating the alternate least square of convergence and allowing the algorithm to iterate until the iteration limit is reached. This criterion avoids the algorithm to have premature convergence and ensures that model provide the solutions which corresponds to the global minima. The application of NNFA with suggested optimizations are found to capture the subtle differences in the spectral profiles and classify the fruit wine samples that are essentially complex mixtures of several chemicals in unknown proportions. The proposed approach is also found to perform better than principal component analysis on practical grounds. In summary, the current work provides a simple, sensitive and cost-effective approach using optimized NNFA and FTIR spectroscopy for classifying the fruit wine samples. (C) 2018 Elsevier B.V. All rights reserved.
机译:本工作提出了非负因子分析(NNFA)算法的某些优化,以确保傅立叶变换红外(FTIR)光谱数据组的果酒样品的高效分析。第一个优化处理以受控方式初始化变量,这将确保实现NNFA算法的合理初始估计。它可以通过基本上没有化学相关性的随机数来防止NNFA算法。第二实施优化涉及消除收敛的备用最小平方并允许算法在达到迭代限制之前迭代。该标准避免了算法具有过早的收敛性,并确保模型提供对应于全局最小值的解决方案。发现NNFA具有建议优化的应用捕获光谱谱的微妙差异,并将水果葡萄酒样品分类为本基本上复杂的几种化学品的混合物,以未知的比例。还发现所提出的方法比实际地面的主要​​成分分析更好。总之,目前的工作提供了一种使用优化的NNFA和FTIR光谱来分类水果葡萄酒样品的简单,灵敏和经济有效的方法。 (c)2018年elestvier b.v.保留所有权利。

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