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一种基于酿造工业样品近中红外光谱的多元校正多模型融合策略。

A multi-model fusion strategy for multivariate calibration using near and mid-infrared spectra of samples from brewing industry.

机构信息

Department of Chemistry and Chemical Engineering, Yibin University, Yibin, Sichuan 644007, PR China.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2013 Mar 15;105:1-7. doi: 10.1016/j.saa.2012.12.023. Epub 2012 Dec 14.

Abstract

Near and mid-infrared (NIR/MIR) spectroscopy techniques have gained great acceptance in the industry due to their multiple applications and versatility. However, a success of application often depends heavily on the construction of accurate and stable calibration models. For this purpose, a simple multi-model fusion strategy is proposed. It is actually the combination of Kohonen self-organizing map (KSOM), mutual information (MI) and partial least squares (PLSs) and therefore named as KMICPLS. It works as follows: First, the original training set is fed into a KSOM for unsupervised clustering of samples, on which a series of training subsets are constructed. Thereafter, on each of the training subsets, a MI spectrum is calculated and only the variables with higher MI values than the mean value are retained, based on which a candidate PLS model is constructed. Finally, a fixed number of PLS models are selected to produce a consensus model. Two NIR/MIR spectral datasets from brewing industry are used for experiments. The results confirms its superior performance to two reference algorithms, i.e., the conventional PLS and genetic algorithm-PLS (GAPLS). It can build more accurate and stable calibration models without increasing the complexity, and can be generalized to other NIR/MIR applications.

摘要

近红外/中红外(NIR/MIR)光谱技术由于其多种应用和多功能性,在工业界得到了广泛的认可。然而,应用的成功往往很大程度上取决于准确和稳定的校准模型的构建。为此,提出了一种简单的多模型融合策略。它实际上是科荷恩自组织映射(KSOM)、互信息(MI)和偏最小二乘(PLSs)的结合,因此命名为 KMICPLS。其工作原理如下:首先,将原始训练集输入 KSOM 进行无监督的样本聚类,在此基础上构建一系列训练子集。然后,在每个训练子集中,计算 MI 光谱,并仅保留 MI 值高于平均值的变量,基于这些变量构建候选 PLS 模型。最后,选择固定数量的 PLS 模型来生成共识模型。使用来自酿造行业的两个 NIR/MIR 光谱数据集进行实验。结果证实了它优于两个参考算法,即常规 PLS 和遗传算法-PLS(GAPLS)的性能。它可以在不增加复杂性的情况下构建更准确和稳定的校准模型,并可推广到其他 NIR/MIR 应用。

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