Modeling method for SSC prediction in pomelo using Vis-NIRS with wavelength selection and latent variable updating
Abstract
Keywords: Vis-NIRS, in-line detection, external validation, wavelength selection, model updating, pomelo, SSC
DOI: 10.25165/j.ijabe.20241701.7491
Citation: Tian H, Wang S, Xu H R, Ying Y B. Modeling method for SSC prediction in pomelo using Vis-NIRS with wavelength selection and latent variable updating. Int J Agric & Biol Eng, 2024; 17(1): 250-260.
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Goh R M V, Lau H, Liu S Q, Lassabliere B, Guervilly R, Sun J C, et al. Comparative analysis of pomelo volatiles using headspace-solid phase micro-extraction and solvent assisted flavour evaporation. LWT-Food Science And Technology, 2019; 99: 328–345.
Cortés V, Blasco J, Aleixos N, Cubero S, Talens P. Monitoring strategies for quality control of agricultural products using visible and near-infrared spectroscopy: A review. Trends in Food Science & Technology, 2019; 85: 138–148.
Obenland D, Collin S, Mackey B, Sievert J, Fjeld K, Arpaia M L. Determinants of flavor acceptability during the maturation of navel oranges. Postharvest Biology and Technology, 2009; 52(2): 156–163.
Jie D F, Zhou W H, Wei X. Nondestructive detection of maturity of watermelon by spectral characteristic using NIR diffuse transmittance technique. Scientia Horticulturae, 2019; 257: 108718.
Lu Y, Saeys W, Kim M, Peng Y, Lu R. Hyperspectral imaging technology for quality and safety evaluation of horticultural products: A review and celebration of the past 20-year progress. Postharvest Biology and Technology, 2020; 170: 111318.
Srivastava R K, Talluri S, Beebi S K, Kumar B R. Magnetic resonance imaging for quality evaluation of fruits: A review. Food Analytical Methods, 2018; 11(10): 2943–2960.
Pereira L F A, Janssens E, Cavalcanti G D C, Ren T I, Van Dael M, Verboven P, et al. Inline discrete tomography system: Application to agricultural product inspection. Computers and Electronics in Agriculture, 2017; 138: 117–126.
Zhang W, Lyu Z Z, Xiong S L. Nondestructive quality evaluation of agro-products using acoustic vibration methods - A review. Critical Reviews in Food Science and Nutrition, 2018; 58(14): 2386–2397.
Xie L J, Wang A C, Xu H R, Fu X P, Ying Y B. Applications of near-infrared systems for quality evaluation of fruits: A review. Transactions of the ASABE, 2016; 59(2): 399–419.
Arendse E, Fawole O A, Magwaza L S, Opara U L. Non-destructive prediction of internal and external quality attributes of fruit with thick rind: A review. Journal of Food Engineering, 2018; 217: 11–23.
Magwaza L S, Opara U L, Nieuwoudt H, Cronje P J R, Saeys W, Nicolaï B. NIR spectroscopy applications for internal and external quality analysis of citrus fruit - A review. Food and Bioprocess Technology, 2012; 5(2): 425–444.
Sun C J, Aernouts B, Van Beers R, Saeys W. Simulation of light propagation in citrus fruit using Monte Carlo multi-layered (MCML) method. Journal of Food Engineering, 2021; 291: 110225.
Zhang H L, Zhan B S, Pan F, Luo W. Determination of soluble solids content in oranges using visible and near infrared full transmittance hyperspectral imaging with comparative analysis of models. Postharvest Biology and Technology, 2020; 163: 111148.
Song J, Li G L, Yang X D, Liu X W, Xie L. Rapid analysis of soluble solid content in navel orange based on visible-near infrared spectroscopy combined with a swarm intelligence optimization method. Spectrochimica Acta Part A:Molecular and Biomolecular Spectroscopy, 2020; 228: 117815.
Jie D F, Xie L J, Fu X P, Rao X Q, Ying Y B. Variable selection for partial least squares analysis of soluble solids content in watermelon using near-infrared diffuse transmission technique. Journal of Food Engineering, 2013; 118(4): 387–392.
Tian H Q, Wang C G, Zhang H J, Yu Z H, Li J K. Measurement of soluble solids content in melon by transmittance spectroscopy. Sensor Letters, 2012; 10(1-2): 570–573.
Li T-T, Wang H Y, Huang S-Y, Lou C-W, Lin J-H. Bioinspired foam composites resembling pomelo peel: Structural design and compressive, bursting and cushioning properties. Composites Part B:Engineering, 2019; 172: 290–298.
Pell R J. Multiple outlier detection for multivariate calibration using robust statistical techniques. Chemometrics and Intelligent Laboratory Systems, 2000; 52(1): 87–104.
Metz M, Abdelghafour F, Roger J-M, Lesnoff M. A novel robust PLS regression method inspired from boosting principles: RoBoost-PLSR. Analytica Chimica Acta, 2021; 1179: 338823.
Zhou J L, Zhang S L, Wang J. A dual robustness projection to latent structure method and its application. IEEE Transactions on Industrial Electronics, 2021; 68(2): 1604–1614.
Cappozzo A, Duponchel L, Greselin F, Murphy T B. Robust variable selection in the framework of classification with label noise and outliers: Applications to spectroscopic data in agri-food. Analytica Chimica Acta, 2021; 1153: 338245.
Zhang L X, Wang D, Gao R R, Li P W, Zhang W, Mao J, et al. Improvement on enhanced Monte-Carlo outlier detection method. Chemometrics and Intelligent Laboratory Systems, 2016; 151: 89–94.
Li H-D, Liang Y-Z, Cao D-S, Xu Q-S. Model-population analysis and its applications in chemical and biological modeling. TrAC Trends in Analytical Chemistry, 2012; 38: 154–162.
Cao D S, Liang Y Z, Xu Q S, Li H D, Chen X. A new strategy of outlier detection for QSAR/QSPR. Journal of Computational Chemistry, 2010; 31(3): 592–602.
Nordey T, Joas J, Davrieux F, Chillet M, Léchaudel M. Robust NIRS models for non-destructive prediction of mango internal quality. Scientia Horticulturae, 2017; 216: 51–57.
Fan S X, Li J B, Xia Y, Tian X, Guo Z M, Huang W Q. Long-term evaluation of soluble solids content of apples with biological variability by using near-infrared spectroscopy and calibration transfer method. Postharvest Biology and Technology, 2019; 151: 79–87.
Mishra P, Woltering E, Brouwer B, Hogeveen-van Echtelt E. Improving moisture and soluble solids content prediction in pear fruit using near-infrared spectroscopy with variable selection and model updating approach. Postharvest Biology and Technology, 2021; 171: 111348.
Yun Y-H, Li H-D, Deng B-C, Cao D-S. An overview of variable selection methods in multivariate analysis of near-infrared spectra. TrAC Trends in Analytical Chemistry, 2019; 113: 102–115.
Sun X D, Subedi P, Walsh K B. Achieving robustness to temperature change of a NIRS-PLSR model for intact mango fruit dry matter content. Postharvest Biology and Technology, 2020; 162: 111117.
Tian H, Xu H R, Ying Y B. Can light penetrate through pomelos and carry information for the non-destructive prediction of soluble solid content using Vis-NIRS? Biosystems Engineering, 2022; 214: 152–164.
Li H-D, Xu Q-S, Liang Y-Z. libPLS: An integrated library for partial least squares regression and linear discriminant analysis. Chemometrics and Intelligent Laboratory Systems, 2018; 176: 34–43.
Boardman A E, Hui B S, Wold H. The partial least squares-fix point method of estimating interdependent systems with latent variables. Communications in Statistics - Theory and Methods, 1981; 10(7): 613–639.
Kennard R W, Stone L A. Computer aided design of experiments. Technometrics, 1969; 11(1): 137–148.
Du Y P, Liang Y Z, Jiang J H, Berry R J, Ozaki Y. Spectral regions selection to improve prediction ability of PLS models by changeable size moving window partial least squares and searching combination moving window partial least squares. Analytica Chimica Acta, 2004; 501(2): 183–191.
Li H D, Xu Q S, Liang Y Z. Random frog: An efficient reversible jump Markov Chain Monte Carlo-like approach for variable selection with applications to gene selection and disease classification. Analytica Chimica Acta, 2012; 740: 20–26.
Li H D, Liang Y Z, Xu Q S, Cao D S. Key wavelengths screening using competitive adaptive reweighted sampling method for multivariate calibration. Analytica Chimica Acta, 2009; 648(1): 77–84.
Feudale R N, Woody N A, Tan H W, Myles A J, Brown S D, Ferre J. Transfer of multivariate calibration models: A review. Chemometrics and Intelligent Laboratory Systems, 2002; 64(2): 181–92.
Xu H R, Qi B, Sun T, Fu X P, Ying Y B. Variable selection in visible and near-infrared spectra: Application to on-line determination of sugar content in pears. Journal of Food Engineering, 2012; 109(1): 142–147.
Cayuela J A. Vis/NIR soluble solids prediction in intact oranges ( Citrus sinensis L.) cv. Valencia Late by reflectance. Postharvest Biology and Technology, 2008; 47(1): 75–80.
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