食品科学 ›› 2024, Vol. 45 ›› Issue (18): 216-224.doi: 10.7506/spkx1002-6630-20240130-271

• 安全检测 • 上一篇    下一篇

基于近红外光谱-光纤液滴分析法检测蓝莓综合品质

冯国红, 周金东, 朱玉杰, 王甜甜   

  1. (东北林业大学机电工程学院,黑龙江 哈尔滨 150040)
  • 出版日期:2024-09-25 发布日期:2024-09-09
  • 基金资助:
    黑龙江省自然科学基金项目(LH2020C050)

Comprehensive Quality Evaluation of Blueberries Based on Near-infrared Spectroscopy and Fiber Optic Droplet Analysis

FENG Guohong, ZHOU Jindong, ZHU Yujie, WANG Tiantian   

  1. (College of Mechanical and Electrical Engineering, Northeast Forestry University, Harbin 150040, China)
  • Online:2024-09-25 Published:2024-09-09

摘要: 基于近红外光谱融合液滴分析技术进行蓝莓的二维相关分析,以实现蓝莓综合贮藏品质的检测。本研究采集8 个贮藏时间‘绿宝石’蓝莓的近红外光谱图和液滴指纹图,综合分析硬度、花青素、VC、固酸比等15 个理化指标,发现各指标之间有着密切的相关性,因此对15 个理化指标进行隶属函数联合主成分分析计算蓝莓的综合得分,以此划分综合贮藏品质的等级。对光谱数据进行Savitzky-Golay(SG)卷积平滑、标准正态变换、多元散射矫正和迭代自适应加权惩罚最小二乘预处理,经对比分析,SG卷积平滑预处理后所建立的模型预测精度最高,预测结果为82.67%。对液滴数据取平均进行数据降维后进行移动平均平滑、SG卷积平滑、高斯滤波和中值滤波预处理,经过对比分析,经SG卷积平滑预处理后所建立的模型预测精度最高,预测结果为86.67%。以蓝莓的综合得分作为外扰,对光谱数据和液滴数据分别进行二维相关分析,分别优选出879、1 019、1 220、1 636 nm波长和789、1 653、2 386、2 703 ms自相关峰所对应的位置作为特征变量,以光谱和液滴特征数据融合后作为输入建立支持向量机(support vector machine,SVM)和随机森林模型,模型预测准确率分别为100.00%和98.33%,均高于以单个特征作为输入的预测准确率,且SVM模型预测效果更优,之后用‘蓝宝石’‘莱克西’和‘蓝丰’等9 个蓝莓品种进行验证,采用相同的方法进行一系列数据处理建立SVM模型,结果表明模型对于不同品种蓝莓均表现出良好的预测效果。综上,利用可见-近红外光谱融合液滴分析技术可以实现蓝莓综合贮藏品质的预测,为蓝莓的品质检测提供新的方法。

关键词: 蓝莓;可见-近红外光谱;液滴分析;二维相关光谱;主成分分析

Abstract: Two-dimensional near-infrared (2D-NIR) correlation spectroscopy integrated with droplet analysis was used for comprehensive evaluation of the storage quality of blueberries. NIR spectra and droplet fingerprints of ‘Emerald’ blueberries with 8 storage periods were collected, and 15 physicochemical indexes such as hardness, anthocyanin content, VC content and solid/acid ratio were considered, among which a close correlation was found. Therefore, membership function analysis (MFA) combined with principal component analysis (PCA) was employed to calculate comprehensive scores for blueberries from the 15 physicochemical indexes, and based on the comprehensive scores, the storage quality of blueberries was graded. The spectral data were preprocessed by Savitzky-Golay (SG) convolutional smoothing, standard normal variate (SNV) transformation, multiple scattering correction (MSC) or adaptive iteratively reweighted penalized least squares (airPLS). After comparative analysis, it was found that SG convolutional smoothing yielded the highest predictive model accuracy of 82.67%. After averaging and dimensional reduction, the droplet data were preprocessed by SG convolutional smoothing, Gauss filtering or median filtering. SG convolutional smoothing was found to provide the highest predictive model accuracy of 86.67%. Using the comprehensive scores of blueberries as the external disturbance, two-dimensional correlation analysis was carried out on the spectral and droplet data, and the positions of the autocorrelation peaks at 879, 1 019, 1 220 and 1 636 nm and at 789, 1 653, 2 386 and 2 703 ms were selected as the feature variables, respectively. Support vector machine (SVM) and random forest (RF) models were established using the fusion of spectral and droplet feature data as the input, and the predictive accuracy of the models were 100.00% and 98.33%, respectively, which were higher than those obtained using the single features as the input; the SVM model had a better prediction effect than the RF model. Then, nine blueberry varieties such as ‘Sapphire’, ‘Legacy’ and ‘Bluecrop’ were used for validation of the SVM model established using a series of data processing methods. The results showed that the SVM model exhibited good predictive effects for all varieties. Therefore, visible/near-infrared spectroscopy combined with droplet analysis enables the prediction of the comprehensive storage quality of blueberries, providing a new method for the quality evaluation of blueberries.

Key words: blueberry; visible/near infrared spectroscopy; droplet analysis; two-dimensional correlation spectroscopy; principal component analysis

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