Prediction of Soluble Solids Content During Storage of Apples with Different Maturity Based on VIS / NIR Spectroscopy

Pub Date : 1900-01-01 DOI:10.13031/aim.202000943
Bo Zhang, Mengsheng Zhang, Maosheng Shen, Hao Li, Haihui Zhang, Juan Zhao
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Abstract

Abstract. The soluble solids content (SSC) is an important quality attribute to measure the eating quality of apples, and the apple SSC during storage period will change with the storage time. In order to increase the value of apple commodities, it is necessary to carry out SSC nondestructive testing on apples during storage. In this paper, we studied the predictability of Vis-Nir (Vis-Nir, 400-1100nm) and Long-Wave Near-Infrared (LWIR, 1100-2200nm) spectra for apple SSC during storage. Apples of different maturity harvested on three dates were stored in a cold store at 0°C (± 1). The SSC and diffuse reflectance data were measured after 0, 30, 80, 150, and 180 days of storage. Partial least squares (PLS) was used to establish the prediction model. The results show that the harvest period model cannot achieve the prediction of apple SSC during storage period, and the accuracy of the fusion model at different maturity storage periods is also poor. The reason is that starch is continuously hydrolyzed to soluble sugar during storage. Therefore, three SSC prediction models for individual maturity storage periods were established. The overall effect of the model is better, and the best one is the high-maturity-LWIR model (Rc = 0.8573, RMSEC = 0.5297, Rp = 0.8417, RMSEP = 0.5669). The overall high maturity of the model is better than medium and low maturity, and LWIR is better than Vis-Nir. This study provides an important theoretical basis for improving the quality of apple industrialization during storage.
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基于VIS / NIR光谱的不同成熟度苹果贮藏期可溶性固形物含量预测
摘要可溶性固形物含量(SSC)是衡量苹果食用品质的重要品质属性,苹果贮藏期的可溶性固形物含量会随着贮藏时间的变化而变化。为了提高苹果商品的价值,有必要对苹果在贮藏过程中进行SSC无损检测。本文研究了苹果SSC贮藏过程中可见光-近红外光谱(Vis-Nir, 400-1100nm)和长波近红外光谱(LWIR, 1100-2200nm)的可预测性。将3个日期收获的不同成熟度的苹果放入0°C(±1)的冷库中,在0、30、80、150和180天后测量SSC和漫反射数据。采用偏最小二乘法(PLS)建立预测模型。结果表明,收获期模型不能实现苹果贮藏期SSC的预测,不同成熟度贮藏期融合模型的准确性也较差。原因是淀粉在贮存过程中不断水解成可溶性糖。因此,建立了3种不同成熟度贮藏期的SSC预测模型。模型整体效果较好,其中以高成熟度- lwir模型效果最好(Rc = 0.8573, RMSEC = 0.5297, Rp = 0.8417, RMSEP = 0.5669)。模型整体高成熟度优于中、低成熟度,LWIR优于Vis-Nir。本研究为提高苹果产业化贮藏品质提供了重要的理论依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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