Development of Prediction Models for the Pasting Parameters of Rice Based on Near-Infrared and Machine Learning Tools

被引:3
|
作者
Sampaio, Pedro Sousa [1 ,2 ,3 ]
Carbas, Bruna [1 ,4 ]
Brites, Carla [1 ,2 ]
机构
[1] Inst Nacl Invest Agr & Vet INIAV, Av Republ, P-2784505 Oeiras, Portugal
[2] ITQB NOVA, Inst Chem & Biol Technol Antonio Xavier, GREEN IT BioResources Sustainabil Unit, Av Republ, P-2780157 Oeiras, Portugal
[3] Lusofona Univ, Comp & Cognicao Centrada Pessoas, BioRG Biomed Res Grp, Campo Grande 376, P-1749019 Lisbon, Portugal
[4] Univ Tras Os Montes & Alto Douro CITAB UTAD, Ctr Res & Technol Agroenvironm & Biol Sci, P-5000801 Vila Real, Portugal
来源
APPLIED SCIENCES-BASEL | 2023年 / 13卷 / 16期
关键词
artificial neural network; NIR spectroscopy; pasting parameters; rice; PARTIAL LEAST-SQUARES; AMYLOSE CONTENT; QUALITY; STARCH; SPECTROSCOPY; REGRESSION;
D O I
10.3390/app13169081
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Due to the importance of rice (Oryza sativa) in food products, developing strategies to eval-uate its quality based on a fast and reliable methodology is fundamental. Herein, near-infrared (NIR) spectroscopy combined with machine learning algorithms, such as interval partial least squares (iPLS), synergy interval PLS (siPLS), and artificial neural networks (ANNs), allowed for the development of prediction models of pasting parameters, such as the breakdown (BD), final viscosity (FV), pasting viscosity (PV), setback (ST), and trough (TR), from 166 rice samples. The models developed using iPLS and siPLS were characterized, respectively, by the following regression values: BD (R = 0.84; R = 0.88); FV (R = 0.57; R = 0.64); PV (R = 0.85; R = 0.90); ST (R = 0.85; R = 0.88); and TR (R = 0.85; R = 0.84). Meanwhile, ANN was also tested and allowed for a significant improvement in the models, characterized by the following values corresponding to the calibration and testing procedures: BD (R-cal = 0.99; Rtest = 0.70), FV (R-cal = 0.99; R-test = 0.85), PV (R-cal = 0.99; R-test = 0.80), ST (R-cal = 0.99; R-test = 0.76), and TR (Rcal= 0.99; Rtest = 0.72). Each model was characterized by a specific spectral region that presented significative influence in terms of the pasting parameters. The machine learning models developed for these pasting parameters represent a significant tool for rice quality evaluation and will have an important influence on the rice value chain, since breeding programs focus on the evaluation of rice quality.
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收藏
页数:14
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