Simultaneous and non-destructive prediction of multiple internal quality characteristics in mandarin citrus with near-infrared spectroscopy and ensemble learning strategy

IF 4 2区 农林科学 Q2 CHEMISTRY, APPLIED
Huizhen Tan , Yiqing Dong , Liwen Jiang , Wei Fan , Guorong Du , Pao Li
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引用次数: 0

Abstract

This study aimed to establish a simultaneous and non-destructive method for the prediction of multiple internal quality characteristics in mandarin citrus with near-infrared spectroscopy combined with ensemble learning strategy. 490 spectra were obtained over the whole picking period without destroying the citrus samples. The ensemble learning strategy was used to establish the quantitative models to simultaneously predict multiple internal quality characteristics, including soluble solids content (SSC), pH, and total acidity (TA), compared with partial least squares (PLS) method. Both validation set and independent test set obtained one month later were used to validate the models. The optimal collection points for the three characteristics were obtained. The ensemble learning strategy was better than PLS method, which can be used to improve the predictive accuracy. The best prediction models for SSC, pH, and TA were second-order derivatives (2nd)-consensus partial least squares (CPLS), 2nd-boosting-PLS (BPLS), and continuous wavelet transform-BPLS. The root mean square errors of prediction (RMSEPs) for validation set were 1.0117, 0.1924, and 0.2408, respectively, while the RMSEPs for independent test set were 1.1067, 0.2647, and 0.2563, respectively. Besides, the long-wave NIR light was more suitable for the quantitative analysis of multiple internal quality characteristics in mandarin citrus than short-wave NIR light.
利用近红外光谱和集合学习策略同时非破坏性地预测柑橘的多种内部质量特性
本研究旨在利用近红外光谱结合集合学习策略,建立一种同步、非破坏性的方法,用于预测柑橘的多种内部质量特征。在不破坏柑橘样品的情况下,在整个采摘期获得了 490 个光谱。与偏最小二乘法(PLS)相比,利用集合学习策略建立了定量模型,可同时预测多种内部质量特性,包括可溶性固形物含量(SSC)、pH 值和总酸度(TA)。验证模型时使用了验证集和一个月后获得的独立测试集。得出了三种特征的最佳采集点。集合学习策略优于偏最小二乘法,可用于提高预测精度。SSC、pH 和 TA 的最佳预测模型是二阶导数(2nd)-共识偏最小二乘法(CPLS)、二阶提升-PLS(BPLS)和连续小波变换-BPLS。验证集的预测均方根误差分别为 1.0117、0.1924 和 0.2408,独立测试集的预测均方根误差分别为 1.1067、0.2647 和 0.2563。此外,长波近红外光比短波近红外光更适合柑橘多种内部品质特征的定量分析。
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来源期刊
Journal of Food Composition and Analysis
Journal of Food Composition and Analysis 工程技术-食品科技
CiteScore
6.20
自引率
11.60%
发文量
601
审稿时长
53 days
期刊介绍: The Journal of Food Composition and Analysis publishes manuscripts on scientific aspects of data on the chemical composition of human foods, with particular emphasis on actual data on composition of foods; analytical methods; studies on the manipulation, storage, distribution and use of food composition data; and studies on the statistics, use and distribution of such data and data systems. The Journal''s basis is nutrient composition, with increasing emphasis on bioactive non-nutrient and anti-nutrient components. Papers must provide sufficient description of the food samples, analytical methods, quality control procedures and statistical treatments of the data to permit the end users of the food composition data to evaluate the appropriateness of such data in their projects. The Journal does not publish papers on: microbiological compounds; sensory quality; aromatics/volatiles in food and wine; essential oils; organoleptic characteristics of food; physical properties; or clinical papers and pharmacology-related papers.
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