基于分数阶导数和最优波段组合算法的柑橘可溶性固体含量估算。

IF 3.2 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Shiqing Dou, Yuanxiang Deng, Wenjie Zhang, Jichi Yan, Zhengmin Mei, Minglan Li
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引用次数: 0

摘要

可溶性固形物含量(SSC)是评价柑橘类水果内部品质的主要特征指标。开发快速、无损的 SSC 检测技术有助于解决目前中国柑橘产业采后质量分级中存在的问题。本研究将 70 个墨角、91 个克莱门特和 100 个脐橙共 261 个实验样品按 7:3 的比例分为预测集和验证集。在获得反射光谱和 SSCs 后,使用 SNV-FOD(标准正态变分阶差)对光谱进行处理,并引入最优波段组合算法来选择 SSC 敏感波段。然后,将获得的最佳双波段组合输入八个回归模型进行比较,选出性能最佳的模型堆叠集合模型。最后,应用贝叶斯函数优化的 H-ELR(HyperOpt-optimized ensemble learning regression)模型,对广西三个常见柑橘品种墨橘、克莱门特橘和脐橙的 SSC 进行了有效估计。结果表明:(1) 与原始光谱相比,本研究提出的 SNV-FOD 预处理方法将与 SSC 的相关系数从 0.546 提高到 0.836;(2) 通过积分微分指数和 1.2 阶导数构建的最佳双波段组合(969 和 1069 nm)得到了最准确的结果(RPD = 2.13);(3) 基于 HyperOpt 优化的 H-ELR 模型取得了良好的估计性能(RPD = 2.46)。实际应用:这项研究有助于开发实用的 SSC 预测工具,它具有良好的通用性和易用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of the soluble solid content of citrus based on the fractional-order derivative and optimal band combination algorithm.

The soluble solid content (SSC) is a primary characteristic index for evaluating the internal quality of citrus fruits. The development of rapid and nondestructive SSC detection techniques can help address the current issues of postharvest quality grading in China's citrus industry. In this study, a total of 261 experimental samples, including 70 Murcott, 91 Clementine, and 100 Navel orange, were divided into prediction and validation sets in a 7:3 ratio. After obtaining the reflection spectra and SSCs, SNV-FOD (Standard Normal Variate-Fractional-Order Derivative) was used to process the spectra, and the optimal band combination algorithm was introduced to select SSC-sensitive bands. Then, the obtained optimal dual-band combination was input into eight regression models for comparison, and the best performing models stacked ensemble models was selected. Finally, the H-ELR (HyperOpt-optimized ensemble learning regression) model, optimized using a Bayesian function, was applied for the effective estimation of SSC for three common citrus varieties in Guangxi, Murcott, Clementine, and Navel oranges. The results show that (1) the SNV-FOD preprocessing method proposed in this study improved the correlation coefficient with the SSC from 0.546 to 0.836 compared to that of the original spectrum, (2) the optimal dual-band combination (969 and 1069 nm) constructed by integrating the differential index and 1.2-order derivative yielded the most accurate results (RPD = 2.13), and (3) the H-ELR model, based on HyperOpt optimization, achieved good estimated performance (RPD = 2.46). PRACTICAL APPLICATION: This research contributes to the development of practical SSC prediction instruments with excellent universality and ease of application.

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来源期刊
Journal of Food Science
Journal of Food Science 工程技术-食品科技
CiteScore
7.10
自引率
2.60%
发文量
412
审稿时长
3.1 months
期刊介绍: The goal of the Journal of Food Science is to offer scientists, researchers, and other food professionals the opportunity to share knowledge of scientific advancements in the myriad disciplines affecting their work, through a respected peer-reviewed publication. The Journal of Food Science serves as an international forum for vital research and developments in food science. The range of topics covered in the journal include: -Concise Reviews and Hypotheses in Food Science -New Horizons in Food Research -Integrated Food Science -Food Chemistry -Food Engineering, Materials Science, and Nanotechnology -Food Microbiology and Safety -Sensory and Consumer Sciences -Health, Nutrition, and Food -Toxicology and Chemical Food Safety The Journal of Food Science publishes peer-reviewed articles that cover all aspects of food science, including safety and nutrition. Reviews should be 15 to 50 typewritten pages (including tables, figures, and references), should provide in-depth coverage of a narrowly defined topic, and should embody careful evaluation (weaknesses, strengths, explanation of discrepancies in results among similar studies) of all pertinent studies, so that insightful interpretations and conclusions can be presented. Hypothesis papers are especially appropriate in pioneering areas of research or important areas that are afflicted by scientific controversy.
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