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Independent components analysis as a means to have initial estimates for multivariate curve resolution-alternating least squares

机译:独立分量分析作为对多元曲线分辨率进行初步估计的一种方法-交替最小二乘法

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Multivariate Curve Resolution with Alternating Least Squares (MCR-ALS) is a curve resolution method based on a bilinear model which assumes that the observed spectra are a linear combination of the spectra of the pure components in the system. The algorithm steps include the determination of the number of components by rank analysis methods, initial estimates for the concentrations and/or spectra and an iterative optimization. Sometimes, suitable results may not be achieved when MCR-ALS is applied. One reason for this is the importance of the initial estimates of the spectral profiles. In that case, the MCR-ALS algorithm may reach a local minimum instead of a global minimum and this can result in ineffective curve resolution. The most popular algorithm used to find the initial estimates (PURE derived from SIMPLISMA) suffers from an essential drawback, which is the necessity to have ''pure'' variables related to a single spectral component, which cannot be expected in all cases because of the strong signal overlapping as in the Ultraviolet-Visible (UV-Vis) spectroscopy. This work summarizes this problem, presenting a case study based on UV-Vis spectroscopy of heated olive oil. To solve the problems of the need for ''pure'' variables and to avoid local minima with MCR-ALS, Independent Components Analysis (ICA) was used to calculate initial estimates for MCR-ALS. The results from this study suggest that this use of ICA prior to MCR-ALS improves the resolution for UV-Vis data and provides acceptable resolution results when compared to the most used method, PURE.
机译:具有交替最小二乘的多元曲线分辨率(MCR-ALS)是基于双线性模型的曲线分辨率方法,该方法假定观察到的光谱是系统中纯组分光谱的线性组合。算法步骤包括通过等级分析方法确定组分数,浓度和/或光谱的初始估计以及迭代优化。有时,应用MCR-ALS可能无法获得合适的结果。造成这种情况的一个原因是光谱轮廓的初始估计的重要性。在这种情况下,MCR-ALS算法可能会达到局部最小值,而不是全局最小值,这可能导致无效的曲线分辨率。用于查找初始估计值的最流行的算法(源自SIMPLISMA的PURE)具有一个基本缺点,即必须具有与单个频谱分量相关的“纯”变量,由于以下原因,在所有情况下都无法预期此变量如紫外可见(UV-Vis)光谱中的强信号重叠。这项工作总结了这个问题,提出了一个基于加热橄榄油的UV-Vis光谱的案例研究。为了解决需要“纯”变量的问题并避免使用MCR-ALS进行局部最小值处理,使用了独立成分分析(ICA)来计算MCR-ALS的初始估算值。这项研究的结果表明,与最常用的方法PURE相比,在MCR-ALS之前使用ICA可以提高UV-Vis数据的分辨率,并提供可接受的分辨率结果。

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