用分果机获取的可见近红外光谱预测“富士”苹果内部褐变

Q4 Engineering Japan Journal of Food Engineering Pub Date : 2019-03-15 DOI:10.11301/JSFE.18530
Mizuki Tsuta, M. Yoshimura, S. Kasai, Kazuya Matsubara, Yuji Wada, A. Ikehata
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引用次数: 1

摘要

用苹果分选机采集了2015年和2016年收获的576个“富士”苹果的可见光近红外光谱。光谱采集一个月后,对每个样品的切割表面进行扫描,并评估内部新鲜褐变的发生情况。将各种预处理方法,包括新提出的蛮力差分吸收法,应用于安装在分拣机中的顶部和底部光谱仪获得的光谱,并通过偏最小二乘判别分析建立了内部褐变发生的预测模型。当通过组合顶部和底部光谱仪的错误识别率最低的模型来开发“元模型”时,可以预测内部褐变的发生,分类误差为19.8%,灵敏度为88.6%,特异性为78.1%。在本研究中,使用了一台安装在实际苹果分拣工厂的分拣机。因此,本研究的结果可以很容易地应用于苹果分拣现场,有望为提高“富士”苹果的附加值做出贡献。
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Prediction of Internal Flesh Browning of “Fuji” Apple Using Visible-Near Infrared Spectra Acquired by a Fruit Sorting Machine
Visible-near infrared spectra of 576 “Fuji” apples harvested in 2015 and 2016 were acquired with an apple sorting machine. One month after the spectral acquisition, the cut surface of each samples was scanned, and the occurrence of internal fresh browning was assessed. Various preprocessing methods, including newly proposed brute force differential absorbance, were applied to spectra acquired by the top and bottom spectrometer installed in the sorting machine, and models for the prediction of the occurrence of internal browning were built by partial least squares discriminant analysis. When a “metamodel” was developed by combining models with the lowest error discrimination rate for each of the top and bottom spectrometer, it was possible to predict the occurrence of internal browning with 19.8% classification error, 88.6% sensitivity and 78.1% specificity. In this research, a sorting machine which is installed in actual apple sorting factories was used. Therefore, the results of this research can be easily applied to the apple sorting sites, and it is expected to contribute to the added value improvement of “Fuji” apples.
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来源期刊
Japan Journal of Food Engineering
Japan Journal of Food Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
0.50
自引率
0.00%
发文量
7
期刊介绍: The Japan Society for Food Engineering (the Society) publishes "Japan Journal of Food Engineering (the Journal)" to convey and disseminate information regarding food engineering and related areas to all members of the Society as an important part of its activities. The Journal is published with an aim of gaining wide recognition as a periodical pertaining to food engineering and related areas.
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