Development and Experiment of a Handheld Visible/Near Infrared Device for Nondestructive Determination of Fruit Sugar Content
文献类型: 外文期刊
作者: Fan Shu-xiang 1 ; Wang Qing-yan 1 ; Yang Yu-sen 2 ; Li Jiang-bo 1 ; Zhang Chi 1 ; Tian Xi 1 ; Huang Wen-qian 1 ;
作者机构: 1.Beijing Res Ctr Informat Technol Agr, Beijing 100097, Peoples R China
2.Southwest Jiaotong Univ Univ Leeds Joint Sch, Chengdu 611731, Peoples R China
关键词: Nondestructive detection; Fruit; Visible-near infrared spectrum; Spectral analysis; Sugar content; Model transfer
期刊名称:SPECTROSCOPY AND SPECTRAL ANALYSIS ( 影响因子:0.589; 五年影响因子:0.504 )
ISSN: 1000-0593
年卷期: 2021 年 41 卷 10 期
页码:
收录情况: SCI
摘要: A handheld portable device for fruit sugar content was developed based on visible/near-infrared spectral analysis. The device consists of a micro-spectrometer, halogen lamps, OLED screen and microcontroller. The real-time analysis and control software of the microcontroller was written in C language with the help of the Keil 5 development tool. Combined with the spectrum acquisition program written by LabView, the spectra of fruit samples were collected by the developed device. Apples and big peaches were used to explore the detection accuracy of the device and the transfer of the model between two devices (master and slave). The visible-near infrared spectra of the apple and peach were collected in the spectral range of 600 similar to 950 nm under laboratory conditions and in the field. The spectral data of calibration set collected by the master device under laboratory conditions were preprocessed by smoothing, maximum normalization, second derivative and other preprocessing methods, followed by the sugar content models developed using partial least squares algorithm for apples and peaches respectively. The models were then imported to the custom software, making it possible for the master device to predict the sugar content of apples or peaches directly. The correlation coefficient and the root mean square error of the prediction set were 0. 925, 0. 587% and 0. 821, 0. 613% for apples and peaches, respectively. The models were transferred from the master device to the slave device by using the piecewise direct standardization (PDS) and canonical Correlation Analysis (CCA) algorithm. After comparison, it was found that better model transfer results were achieved based on the CCA algorithm. The correlation coefficient and root mean square error of the prediction set were 0. 883, 0. 641% and 0. 805, 0. 626% for apples and peaches, respectively. The model established under laboratory conditions was used to analyze the fruit spectral data collected on the tree, the correlation coefficient and root mean square error of the prediction set were 0. 866, 0. 741% and 0. 816 , 0. 627% for apples and peaches, respectively. The results showed that the developed device had considerable potential to detect fruit sugar content under lab conditions, and in the field. With the help of the model transfer algorithm, the model can be shared and effectively transferred between different devices. The developed device could meet the demand for rapid, non-destructive, and on-site detection of internal fruit quality.
- 相关文献
作者其他论文 更多>>
-
Online Detection of Sugar Content in Watermelon Based on Full-Transmission Visible and Near-Infrared Spectroscopy
作者:Wang He-gong;Wang He-gong;Huang Wen-qian;Cai Zhong-lei;Yan Zhong-wei;Li Sheng;Li Jiang-bo
关键词:Full-transmittance spectrum; Online detection; Watermelon; Sugar content; Modeling
-
Online Detection of Soluble Solids Content in Different Parts of Watermelons Based on Full Transmission Near Infrared Spectroscopy
作者:Yan Zhong-Wei;Liu San-Ging;Yan Zhong-Wei;Tian Xi;Zhang Yi-Fei;Li Lian-Jie;Liu San-Ging;Huang Wen -Giat;Yan Zhong-Wei;Tian Xi;Zhang Yi-Fei;Li Lian-Jie;Liu San-Ging;Huang Wen -Giat
关键词:Near infrared spectroscopy; Watermelon; Soluble solids content; Online detection; Model optimization
-
Classification Method of Coal and Gangue Based on Hyperspectral Imaging Technology
作者:Li Lian-jie;Fan Shu-xiang
关键词:Hyperspectral image; Coal; Gangue; Black background; Nondestructive detection
-
Optimization of Online Determination Model for Sugar in a Whole Apple Using Full Transmittance Spectrum
作者:Tian Xi;Tian Xi;Chen Li-ping;Wang Qing-yan;Li Jiang-bo;Yang Yi;Fan Shu-xiang;Huang Wen-qian;Tian Xi;Chen Li-ping;Wang Qing-yan;Li Jiang-bo;Yang Yi;Fan Shu-xiang;Huang Wen-qian
关键词:Online detection; Full transmittance spectrum; Universal prediction model; Apple; Sugar content
-
A Classification Method of Coal and Gangue Based on XGBoost and Visible-Near Infrared Spectroscopy
作者:Li Rui;Li Bo;Wang Xue-wen;Liu Tao;Li Lian-jie;Li Lian-jie;Fan Shu-xiang
关键词:XGBoost; Visible and near-infrared; Coal and gangue separation; Black background; Nondestructive detection
-
Application of Near Infrared Hyperspectral Imaging for Detection of Azodicarbonamidein Flour
作者:Wang Xiao-bin;Zhao Chun-jiang;Wang Xiao-bin;Huang Wen-qian;Wang Qing-yan;Li Jiang-bo;Wang Chao-peng;Zhao Chun-jiang;Wang Xiao-bin;Huang Wen-qian;Wang Qing-yan;Li Jiang-bo;Wang Chao-peng;Zhao Chun-jiang;Wang Xiao-bin;Huang Wen-qian;Wang Qing-yan;Li Jiang-bo;Wang Chao-peng;Zhao Chun-jiang;Wang Xiao-bin;Huang Wen-qian;Wang Qing-yan;Li Jiang-bo;Wang Chao-peng;Zhao Chun-jiang
关键词:Hyperspectral imaging technology; Flour; Azodicarbonamide; Spectral similarity analysis; Classification
-
Measurement of Light Penetration Depth through Milk Powder Layer in Raman Hyperspectral Imaging System
作者:Liu Chen;Chen Li-ping;Liu Chen;Wang Qing-yan;Huang Wen-qian;Chen Li-ping;Yang Gui-yan;Wang Xiao-bin;Liu Chen;Wang Qing-yan;Huang Wen-qian;Chen Li-ping;Yang Gui-yan;Wang Xiao-bin;Liu Chen;Wang Qing-yan;Huang Wen-qian;Chen Li-ping;Yang Gui-yan;Wang Xiao-bin
关键词:Raman spectroscopy;Hyperspectral imaging;Milk powder;Penetration depth;Melamine