LAPSE:2023.5618
Published Article

LAPSE:2023.5618
Prediction of Sugar Content in Port Wine Vintage Grapes Using Machine Learning and Hyperspectral Imaging
February 23, 2023
Abstract
The high quality of Port wine is the result of a sequence of winemaking operations, such as harvesting, maceration, fermentation, extraction and aging. These stages require proper monitoring and control, in order to consistently achieve the desired wine properties. The present work focuses on the harvesting stage, where the sugar content of grapes plays a key role as one of the critical maturity parameters. Our approach makes use of hyperspectral imaging technology to rapidly extract information from wine grape berries; the collected spectra are fed to machine learning algorithms that produce estimates of the sugar level. A consistent predictive capability is important for establishing the harvest date, as well as to select the best grapes to produce specific high-quality wines. We compared four different machine learning methods (including deep learning), assessing their generalization capacity for different vintages and varieties not included in the training process. Ridge regression, partial least squares, neural networks and convolutional neural networks were the methods considered to conduct this comparison. The results show that the estimated models can successfully predict the sugar content from hyperspectral data, with the convolutional neural network outperforming the other methods.
The high quality of Port wine is the result of a sequence of winemaking operations, such as harvesting, maceration, fermentation, extraction and aging. These stages require proper monitoring and control, in order to consistently achieve the desired wine properties. The present work focuses on the harvesting stage, where the sugar content of grapes plays a key role as one of the critical maturity parameters. Our approach makes use of hyperspectral imaging technology to rapidly extract information from wine grape berries; the collected spectra are fed to machine learning algorithms that produce estimates of the sugar level. A consistent predictive capability is important for establishing the harvest date, as well as to select the best grapes to produce specific high-quality wines. We compared four different machine learning methods (including deep learning), assessing their generalization capacity for different vintages and varieties not included in the training process. Ridge regression, partial least squares, neural networks and convolutional neural networks were the methods considered to conduct this comparison. The results show that the estimated models can successfully predict the sugar content from hyperspectral data, with the convolutional neural network outperforming the other methods.
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Keywords
grape ripeness, hyperspectral imaging, Machine Learning, one-dimensional convolutional neural network, predictive analytics, wine quality
Suggested Citation
Gomes V, Reis MS, Rovira-Más F, Mendes-Ferreira A, Melo-Pinto P. Prediction of Sugar Content in Port Wine Vintage Grapes Using Machine Learning and Hyperspectral Imaging. (2023). LAPSE:2023.5618
Author Affiliations
Gomes V: CITAB—Centre for the Research and Technology of Agro-Environmental and Biological Sciences, Inov4Agro—Institute for Innovation, Capacity Building and Sustainability of Agri-food Production, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila R [ORCID]
Reis MS: Department of Chemical Engineering, University of Coimbra, CIEPQPF, Rua Sílvio Lima, Pólo II—Pinhal de Marrocos, 3030-790 Coimbra, Portugal [ORCID]
Rovira-Más F: Agricultural Robotics Laboratory, Universitat Politècnica de València, 46022 Valencia, Spain [ORCID]
Mendes-Ferreira A: CITAB—Centre for the Research and Technology of Agro-Environmental and Biological Sciences, Inov4Agro—Institute for Innovation, Capacity Building and Sustainability of Agri-food Production, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila R
Melo-Pinto P: CITAB—Centre for the Research and Technology of Agro-Environmental and Biological Sciences, Inov4Agro—Institute for Innovation, Capacity Building and Sustainability of Agri-food Production, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila R
Reis MS: Department of Chemical Engineering, University of Coimbra, CIEPQPF, Rua Sílvio Lima, Pólo II—Pinhal de Marrocos, 3030-790 Coimbra, Portugal [ORCID]
Rovira-Más F: Agricultural Robotics Laboratory, Universitat Politècnica de València, 46022 Valencia, Spain [ORCID]
Mendes-Ferreira A: CITAB—Centre for the Research and Technology of Agro-Environmental and Biological Sciences, Inov4Agro—Institute for Innovation, Capacity Building and Sustainability of Agri-food Production, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila R
Melo-Pinto P: CITAB—Centre for the Research and Technology of Agro-Environmental and Biological Sciences, Inov4Agro—Institute for Innovation, Capacity Building and Sustainability of Agri-food Production, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila R
Journal Name
Processes
Volume
9
Issue
7
First Page
1241
Year
2021
Publication Date
2021-07-19
ISSN
2227-9717
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Original Submission
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PII: pr9071241, Publication Type: Journal Article
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LAPSE:2023.5618
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https://doi.org/10.3390/pr9071241
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Feb 23, 2023
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