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Simultaneous measurement of soluble solid content, pH, firmness and density of #x2018;Dangshan#x2019; pear using FT-NIR spectrometry

机译:使用FT-NIR光谱法同时测量可溶性固体含量,pH,坚固度和“Dangshan”梨的密度

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This research aims to investigate the feasibility to rapidly and simultaneously determine the quality characteristics of Chinese ‘Dangshan’ pear by using near infrared (NIR) spectroscopy. A total of 151 ‘Dangshan’ pears with various ripen stages were used in this study. The NIR spectrum from each fresh intact sample was calibrated against four major physiological properties: soluble solid content (SSC), pH, firmness and density. The calibration models for these parameters were developed using the partial least square (PLS) based on the original and the four preprocessed spectra, respectively. The optimum spectral regions, the best pretreatment method and the fewest number of regression factors in the PLS-models were decided according to the minimum standard error in cross-validation (SECV). Finally, the proposed calibration models were validated using an independent sample set to evaluate their predicting ability. The best models for SSC, pH and firmness showed good predictability with the lowest standard error of prediction (SEP) of 0.3490Brix, 0.081 and 0.310N, and corresponding correlation coefficients of 0.985, 0.910 and 0.905, respectively, indicating that it is possible to simultaneously measure SSC, pH and firmness of Chinese ‘Dangshan’ pear by using NIR spectroscopy with the satisfactory accuracy. However, validation results also showed that no satisfactory NIR calibration equation for the density could be obtained.
机译:本研究旨在通过使用近红外(NIR)光谱来探讨快速,同时确定中国'Dangshan'梨的质量特征的可行性。在本研究中使用了具有各种成熟阶段的151个“当山山”梨。来自每个新鲜完整样品的NIR光谱校准针对四个主要的生理特性:可溶性固体含量(SSC),pH,坚固度和密度。这些参数的校准模型分别基于原始和四个预处理光谱使用部分最小二乘(PL)开发。根据交叉验证(SECV)的最小标准误差,确定PLS模型中最佳预处理方法,最佳预处理方法和最少的回归因子数。最后,使用独立的样本集进行验证所提出的校准模型以评估其预测能力。 SSC,pH和坚固性的最佳模型显示出良好的可预测性,其预测标准误差为0.3490纤轴,0.081和0.310n,以及0.985,0.910和0.905的相应相关系数,表明它是可能的通过使用NIR光谱法以满意的精度同时测量中文'Dangshan'梨的SSC,pH和坚固性。然而,验证结果也表明,可以获得密度的令人满意的纽尔校准方程。

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