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利用可见/短波近红外光谱和声学测量,通过优化的线性和非线性化学计量学模型预测‘Calrico’桃的硬度

Firmness prediction in Prunus persica 'Calrico' peaches by visible/short-wave near infrared spectroscopy and acoustic measurements using optimised linear and non-linear chemometric models.

作者信息

Lafuente Victoria, Herrera Luis J, Pérez María del Mar, Val Jesús, Negueruela Ignacio

机构信息

Consejo Superior de Investigaciones Cientifcias (CSIC), Nutrición Vegetak, Zaragoza, Spain.

Departamento de Arquitectura y Tecnología de los computadores, Universidad de Granada, Granada, Spain.

出版信息

J Sci Food Agric. 2015 Aug 15;95(10):2033-40. doi: 10.1002/jsfa.6916. Epub 2014 Oct 14.

Abstract

BACKGROUND

In this work, near infrared spectroscopy (NIR) and an acoustic measure (AWETA) (two non-destructive methods) were applied in Prunus persica fruit 'Calrico' (n = 260) to predict Magness-Taylor (MT) firmness.

METHODS

Separate and combined use of these measures was evaluated and compared using partial least squares (PLS) and least squares support vector machine (LS-SVM) regression methods. Also, a mutual-information-based variable selection method, seeking to find the most significant variables to produce optimal accuracy of the regression models, was applied to a joint set of variables (NIR wavelengths and AWETA measure).

RESULTS

The newly proposed combined NIR-AWETA model gave good values of the determination coefficient (R(2)) for PLS and LS-SVM methods (0.77 and 0.78, respectively), improving the reliability of MT firmness prediction in comparison with separate NIR and AWETA predictions. The three variables selected by the variable selection method (AWETA measure plus NIR wavelengths 675 and 697 nm) achieved R(2) values 0.76 and 0.77, PLS and LS-SVM.

CONCLUSION

These results indicated that the proposed mutual-information-based variable selection algorithm was a powerful tool for the selection of the most relevant variables.

摘要

背景

在本研究中,近红外光谱法(NIR)和一种声学测量方法(AWETA)(两种无损检测方法)被应用于‘Calrico’品种的桃果实(n = 260),以预测其马格尼斯 - 泰勒(MT)硬度。

方法

使用偏最小二乘法(PLS)和最小二乘支持向量机(LS - SVM)回归方法,对这些测量方法单独使用和组合使用的情况进行了评估和比较。此外,一种基于互信息的变量选择方法被应用于一组联合变量(NIR波长和AWETA测量值),旨在找出最显著的变量,以实现回归模型的最佳精度。

结果

新提出的NIR - AWETA组合模型在PLS和LS - SVM方法中均给出了良好的决定系数(R²)值(分别为0.77和0.78),与单独的NIR和AWETA预测相比,提高了MT硬度预测的可靠性。通过变量选择方法选出的三个变量(AWETA测量值加上NIR波长675和697 nm)在PLS和LS - SVM方法中实现的R²值分别为0.76和0.77。

结论

这些结果表明,所提出的基于互信息的变量选择算法是选择最相关变量的有力工具。

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