Assessing kiwifruit quality in storage through machine learning

被引:0
作者
Azadbakht, Mohsen [1 ]
Hashemi Shabankareh, Shaghayegh [2 ]
Kiapey, Ali [3 ]
Rezaeiasl, Abbas [4 ]
Mahmoodi, Mohammad Javad [4 ]
Torshizi, Mohammad Vahedi [5 ]
机构
[1] Gorgan Univ Agr Sci & Nat Resources, Dept Biosyst Engn, Biosyst Engn, Gorgan, Iran
[2] Univ Tehran, Dept Biosyst Engn, Tehran, Iran
[3] Univ Shahrekord, Biosyst Mech Engn, Shahrekord, Iran
[4] Gorgan Univ Agr Sci & Nat Resources, Dept Biosyst Engn, Gorgan, Iran
[5] Tarbiat Modares Univ, Dept Biosyst Engn, Tehran, Iran
关键词
antioxidant content; fruit coating; kiwifruit; machine learning; support vector machine;
D O I
10.1111/jfpe.14681
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Today, diets rich in fruits and vegetables are highly recommended since they contribute to health. The high deterioration rate of fruits distinguishes them from other crops. This study aimed to evaluate the effects of various storage conditions on some quality attributes of kiwifruit through machine learning (ML) using support vector machine (SVM) models. Kiwifruits were subjected to quasi-static loading and coated with different coatings, such as grape, date, and mulberry syrups. Then, the coated kiwifruits were stored at humidity levels of 90% and 95% in completely dark and bright environments with a Compact fluorescent lamp (CFL) bulb for 5, 10, and 15 days. Once the storage period had been completed, quality attributes of the kiwifruit, including antioxidant content, phenolic content, total soluble solids (TSS), pH, and firmness were measured. Each test was performed three times. The numerical results were analyzed through an ML approach using an SVM model on MATLAB. To predict the physical properties of kiwifruit using storage conditions and vice versa, it was found that the most accurate SVM model with a linear kernel predicted the weight loss of kiwifruit based on storage conditions, with the coefficient of determination (R2) being 0.54. To predict the biochemical properties using the storage conditions and vice versa, it was found that kiwifruit firmness was most accurately predicted by the SVM model with the Gaussian kernel, with an R2 of 0.70. Moreover, humidity and storage duration were modeled by SVMs with linear kernels, calculating the coefficients of determination to be 0.39 and 0.90, respectively. To predict biochemical properties using physical properties and vice versa, it was observed that the weight loss was more accurately predicted by an SVM with a linear kernel, with an R2-value of 0.76. Reliable results were not obtained for further research for the other modeled parameters using an SVM approach.Practical ApplicationsIt was found that light was most accurately predicted by the linear SVM. Storage conditions revealed SVM (linear kernel) accurately predicting kiwifruit weight loss. Linear and Gaussian SVMs accurately modeled phenolic and antioxidant content, R2-values: 0.73 and 0.34, respectively. image
引用
收藏
页数:9
相关论文
共 38 条
  • [11] Femling F., 2018, Fruit and vegetable identification using machine learning for retail applications. 14th international conference on signalimage technology internetbased systems (SITIS)
  • [12] A variable elimination method to improve the parsimony of MLR models using the successive projections algorithm
    Galvao, Roberto Kawakami Harrop
    Ugulino Araujo, Mario Cesar
    Fragoso, Wallace Duarte
    Silva, Edvan Cirino
    Jose, Gledson Emidio
    Carreiro Soares, Sofacles Figueredo
    Paiva, Henrique Mohallem
    [J]. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2008, 92 (01) : 83 - 91
  • [13] Goodfellow I, 2016, ADAPT COMPUT MACH LE, P1
  • [14] Evaluation of chemical components and properties of the jujube fruit using near infrared spectroscopy and chemometrics
    Guo, Ying
    Ni, Yongnian
    Kokot, Serge
    [J]. SPECTROCHIMICA ACTA PART A-MOLECULAR AND BIOMOLECULAR SPECTROSCOPY, 2016, 153 : 79 - 86
  • [15] Hernández-Sánchez N, 2016, FOOD ENG SER, P269, DOI 10.1007/978-3-319-24735-9_9
  • [16] Machine learning: Trends, perspectives, and prospects
    Jordan, M. I.
    Mitchell, T. M.
    [J]. SCIENCE, 2015, 349 (6245) : 255 - 260
  • [17] Nondestructive Estimation of Hazelnut (Corylus avellana L.) Terminal Velocity and Drag Coefficient Based on Some Fruit Physical Properties Using Machine Learning Algorithms
    Kabas, Onder
    Kayakus, Mehmet
    Moiceanu, Georgiana
    [J]. FOODS, 2023, 12 (15)
  • [18] Daily suspended sediment load prediction using artificial neural networks and support vector machines
    Lafdani, E. Kakaei
    Nia, A. Moghaddam
    Ahmadi, A.
    [J]. JOURNAL OF HYDROLOGY, 2013, 478 : 50 - 62
  • [19] Detection storage time of mild bruise's yellow peaches using the combined hyperspectral imaging and machine learning method
    Li, Bin
    Yin, Hai
    Liu, Yan-de
    Zhang, Feng
    Yang, A-kun
    Su, Cheng-tao
    Ou-yang, Ai-guo
    [J]. JOURNAL OF ANALYTICAL SCIENCE AND TECHNOLOGY, 2022, 13 (01)
  • [20] Phenolic Profiles, Antioxidant Capacities, and Inhibitory Effects on Digestive Enzymes of Different Kiwifruits
    Li, Hong-Yi
    Yuan, Qin
    Yang, Yu-Ling
    Han, Qiao-Hong
    He, Jing-Liu
    Zhao, Li
    Zhang, Qing
    Liu, Shu-Xiang
    Lin, De-Rong
    Wu, Ding-Tao
    Qin, Wen
    [J]. MOLECULES, 2018, 23 (11):