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Robust PLS models for soluble solids content and firmness determination in low chilling peach using near-infrared spectroscopy (NIR)

机译:使用近红外光谱(NIR)的可溶性固体含量和硬度测定的鲁棒PLS模型(NIR)

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The objectives of this study was to develop partial least square (PLS) models using NIR spectroscopy for the determination of SSC and firmness in intact low chilling 'Aurora-1' peach fruit, and verify the influence of maturity stage and harvest season on the models to be developed (robustness). FT-NIR spectra were obtained as log 1/R with fruit harvested in 2013 at 3 maturity stages and in 2014. The spectra were collected on the background and blush colour skin areas of the each fruit. Model performance was evaluated based on the values of root mean square error for prediction (RMSEP) and coefficient of determination (RP2) obtained from validation fruit set (Kennard-Stone), and prediction fruit set (2014). PCA could not group the fruit based on blush and background skin colour, maturity stages, and harvest season. The model constructed using the external validation method obtained a RMSEVE of 1.08 % with 11 latent variables (LVS) and a R-VE(2) of 0.59. The prediction set, independent data, resulting in a less accurate model (RMSEP 1.04 %, R-p(2) 0.45 and 11 LVS). The same trend happened for determining firmness with the external validation resulting in better model with RMSEVE 9.51 N and R-VE(2) of 0.40 and the prediction set with RMSEP of 13.2 N, RP2 0.40 with 7 LVS. The NIR spectroscopy showed to be a potential analytical method to determine SSC and firmness of intact low chilling 'Aurora 1' cultivar. However, it is necessary to optimize the models in other to reduce the prediction errors. (C) 2015 Elsevier B.V. All rights reserved.
机译:本研究的目的是利用NIR光谱开发部分最小二乘(PLS)模型,用于确定SSC和坚定的温度,在完整的低冷却'Aurora-1'桃果实中,并验证成熟阶段和收获季节对模型的影响开发(鲁棒性)。获得FT-NIR光谱作为LOG 1 / R,在3 2013年以3至成熟阶段收获的水果,在2014年,在每个果实的背景和腮红色皮肤区域上收集光谱。基于针对预测(RMSEP)的根均方误差的值和从验证水果集(Kennard-Stone)获得的确定系数(RP2)和预测水果集(2014)的确定系数来评估模型性能。 PCA不能根据腮红和背景肤色,成熟阶段和收获季节对水果进行分组。使用外部验证方法构造的模型获得1.08%的RmseVe,11个潜在变量(LV)和0.59的R-VE(2)。预测集,独立数据,导致较低的模型(RMSEP 1.04%,R-P(2)0.45和11 LV)。确定具有与外部验证的坚定性的相同趋势,导致具有0.40的Rmseve 9.51 N和R-VE(2)的更好模型,并将预测设置为RMSEP,RP2 0.40,具有7 LV。 NIR光谱显示是一种测定完整低冷冻'Aurora 1'品种的SSC和坚固性的潜在分析方法。但是,有必要优化模型以减少预测误差。 (c)2015 Elsevier B.v.保留所有权利。

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