Prediction of prunoideae fruit quality characteristics based on machine learning and spectral characteristic acquisition optimization

被引:3
作者
Liu, Xuan [1 ]
Wang, Juan [1 ]
Wang, Hao [1 ]
Huang, Yirui [2 ]
Ren, Zhenhui [1 ]
机构
[1] Hebei Agr Univ, Coll Mech & Elect Engn, Baoding, Peoples R China
[2] Hebei GEO Univ, Coll Informat & Engn, Shijiazhuang, Peoples R China
关键词
Prunoideae fruit; Quality prediction; Machine learning algorithm; Spectral data in different forms; SOLUBLE SOLIDS CONTENT; MEASUREMENT POSITION; NIR SPECTROSCOPY; CONTENT SSC; TRANSFORM; REGIONS; APPLES;
D O I
10.1016/j.foodcont.2024.110627
中图分类号
TS2 [食品工业];
学科分类号
0832 ;
摘要
Machine learning algorithms have been widely used in the estimation and prediction of various quality characteristics of food and agricultural products. The purpose of this study is to study the availability and accuracy of the prediction model of Prunoideae fruit quality characteristics based on machine learning algorithms. XGBoost, LightGBM, CatBoost, and Random Forest (RF) are the four machine learning algorithms used in this work to create prediction models for the soluble solids content (SSC) and titratable acidity (TA) of peach, apricot, and cherry. The study investigated three hyperspectral denoising methods and used two feature extraction techniques to lower the dimensionality of hyperspectral data. The models ' accuracy was further improved by adding multiple types of spectral data. Based on opposite spectral data input, the MLP-SG-XGBoost model produced the best SSC predictions for peach and apricot, with R 2 values of 0.9162 and 0.9251, respectively, according to experimental results. When inputting opposite spectral data, the LGR-SG-LightGBM model showed the highest accuracy in predicting TA for peach and apricot, with R 2 values of 0.9193 and 0.9206, respectively. The outcomes imply that the models can accurately forecast the qualities of Prunoideae fruit.
引用
收藏
页数:10
相关论文
共 32 条
[1]   Machine learning for classifying and predicting grape maturity indices using absorbance and fluorescence spectra [J].
Armstrong, Claire E. J. ;
Gilmore, Adam M. ;
Boss, Paul K. ;
Pagay, Vinay ;
Jeffery, David W. .
FOOD CHEMISTRY, 2023, 403
[2]   Gradient Boosting Machine and Object-Based CNN for Land Cover Classification [J].
Bui, Quang-Thanh ;
Chou, Tien-Yin ;
Hoang, Thanh-Van ;
Fang, Yao-Min ;
Mu, Ching-Yun ;
Huang, Pi-Hui ;
Pham, Vu-Dong ;
Nguyen, Quoc-Huy ;
Do Thi Ngoc Anh ;
Pham, Van-Manh ;
Meadows, Michael E. .
REMOTE SENSING, 2021, 13 (14)
[3]   Spectral analysis for the early detection of anthracnose in fruits of Sugar Mango (Mangifera indica) [J].
Cabrera Ardila, Carlos Eduardo ;
Alberto Ramirez, Leonardo ;
Prieto Ortiz, Flavio Augusto .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2020, 173
[4]   Non-destructive assessment of apricot fruit quality by portable visible-near infrared spectroscopy [J].
Camps, C. ;
Christen, D. .
LWT-FOOD SCIENCE AND TECHNOLOGY, 2009, 42 (06) :1125-1131
[5]   Rapid detection of total phenolics, antioxidant activity and ascorbic acid of dried apples by chemometric algorithms [J].
Cetin, Necati ;
Saglam, Cevdet .
FOOD BIOSCIENCE, 2022, 47
[6]   Estimating the Ripeness of Hass Avocado Fruit Using Deep Learning with Hyperspectral Imaging [J].
Davur, Yazad Jamshed ;
Kamper, Wiebke ;
Khoshelham, Kourosh ;
Trueman, Stephen J. ;
Bai, Shahla Hosseini .
HORTICULTURAE, 2023, 9 (05)
[7]   Discrimination of gluten-free oats from contaminants using near infrared hyperspectral imaging technique [J].
Erkinbaev, Chyngyz ;
Henderson, Kelly ;
Paliwal, Jitendra .
FOOD CONTROL, 2017, 80 :197-203
[8]   Effect of spectrum measurement position variation on the robustness of NIR spectroscopy models for soluble solids content of apple [J].
Fan, Shuxiang ;
Zhang, Baohua ;
Li, Jiangbo ;
Huang, Wenqian ;
Wang, Chaopeng .
BIOSYSTEMS ENGINEERING, 2016, 143 :9-19
[9]  
Femenia A, 1998, J SCI FOOD AGR, V77, P487, DOI 10.1002/(SICI)1097-0010(199808)77:4<487::AID-JSFA70>3.0.CO
[10]  
2-T