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A procedure to facilitate the choice of the number of factors in multi-way data analysis applied to the natural samples: Application to monitoring the thermal degradation of oils using front-face fluorescence spectroscopy

机译:一种有助于选择应用于自然样品的多向数据分析中的因素数量的程序:应用在使用正面荧光光谱法监测油脂的热降解中

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摘要

Multi-way data analysis techniques are becoming ever more widely used to extract information from data, such as 3D excitation-emission fluorescence spectra, that are structured in (hyper-) cubic arrays. Parallel Factor Analysis (PARAFAC) is very commonly applied to resolve 3D-fluorescence data and to recover the signals corresponding to the various fluorescent constituents of the sample. The choice of the appropriate number of factors to use in PARAFAC is one of the crucial steps in the analysis. When the signals in the data come from a relatively small number of easily distinguished constituents, the choice of the appropriate number of factors is usually easy and the mathematical diagnostic tools such as the Core Consistency, in general give good results. However, when the data is from a set of natural samples, the core consistency may not be a good indicator for the choice of the appropriate number of factors. In this work, Multi-way Principal Component Analysis (MPCA) and the Durbin-Watson criterion (DW) are utilized to choose the number of factors to use in PARAFAC decomposition. This is demonstrated in a case where 3D-front-face fluorescence spectroscopy is used to monitor of the evolution of naturally occurring and neo-formed fluorescent components in oils during thermal treatment.
机译:多向数据分析技术正越来越广泛地用于从数据中提取信息,例如以(超)立方阵列构造的3D激发-发射荧光光谱。并行因子分析(PARAFAC)非常普遍地用于解析3D荧光数据并恢复与样品的各种荧光成分相对应的信号。选择在PARAFAC中使用的适当数量的因子是分析中的关键步骤之一。当数据中的信号来自相对少量的易于区分的成分时,通常很容易选择适当数量的因素,并且诸如核心一致性之类的数学诊断工具通常会产生良好的结果。但是,当数据来自一组自然样本时,核心一致性可能不是选择适当数量因素的良好指标。在这项工作中,多路主成分分析(MPCA)和Durbin-Watson准则(DW)用于选择PARAFAC分解中使用的因子数量。这在使用3D正面荧光光谱法监测热处理过程中油中天然存在的和新形成的荧光成分的演变的情况下得到了证明。

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