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Application of Machine Learning Algorithms to Classify Peruvian Pisco Varieties Using an Electronic Nose
by
Pinedo, Angela
, De-La-Cruz, Celso
, Peña-Echevarría, Joseph
, Rojas, Freddy
, Bravo, Fabiola
, Visurraga, Karina
, Trevejo-Pinedo, Jorge
, Sun-Kou, María R.
in
Alcohol
/ Alcoholic beverages
/ Algorithms
/ Amino acids
/ artificial neural network
/ beverage quality
/ Chromatography
/ Cultural heritage
/ Data mining
/ Electronic Nose
/ Fermentation
/ Forecasts and trends
/ Fruit juices
/ Fruits
/ gas sensors array
/ Machine Learning
/ Neural networks
/ Neural Networks, Computer
/ Pandemics
/ Peru
/ random forest
/ Sensors
/ Signal processing
/ Support Vector Machine
/ Time series
/ VOCs
/ Volatile organic compounds
2023
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Application of Machine Learning Algorithms to Classify Peruvian Pisco Varieties Using an Electronic Nose
by
Pinedo, Angela
, De-La-Cruz, Celso
, Peña-Echevarría, Joseph
, Rojas, Freddy
, Bravo, Fabiola
, Visurraga, Karina
, Trevejo-Pinedo, Jorge
, Sun-Kou, María R.
in
Alcohol
/ Alcoholic beverages
/ Algorithms
/ Amino acids
/ artificial neural network
/ beverage quality
/ Chromatography
/ Cultural heritage
/ Data mining
/ Electronic Nose
/ Fermentation
/ Forecasts and trends
/ Fruit juices
/ Fruits
/ gas sensors array
/ Machine Learning
/ Neural networks
/ Neural Networks, Computer
/ Pandemics
/ Peru
/ random forest
/ Sensors
/ Signal processing
/ Support Vector Machine
/ Time series
/ VOCs
/ Volatile organic compounds
2023
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Do you wish to request the book?
Application of Machine Learning Algorithms to Classify Peruvian Pisco Varieties Using an Electronic Nose
by
Pinedo, Angela
, De-La-Cruz, Celso
, Peña-Echevarría, Joseph
, Rojas, Freddy
, Bravo, Fabiola
, Visurraga, Karina
, Trevejo-Pinedo, Jorge
, Sun-Kou, María R.
in
Alcohol
/ Alcoholic beverages
/ Algorithms
/ Amino acids
/ artificial neural network
/ beverage quality
/ Chromatography
/ Cultural heritage
/ Data mining
/ Electronic Nose
/ Fermentation
/ Forecasts and trends
/ Fruit juices
/ Fruits
/ gas sensors array
/ Machine Learning
/ Neural networks
/ Neural Networks, Computer
/ Pandemics
/ Peru
/ random forest
/ Sensors
/ Signal processing
/ Support Vector Machine
/ Time series
/ VOCs
/ Volatile organic compounds
2023
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Application of Machine Learning Algorithms to Classify Peruvian Pisco Varieties Using an Electronic Nose
Journal Article
Application of Machine Learning Algorithms to Classify Peruvian Pisco Varieties Using an Electronic Nose
2023
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Overview
Pisco is an alcoholic beverage obtained from grape juice distillation. Considered the flagship drink of Peru, it is produced following strict and specific quality standards. In this work, sensing results for volatile compounds in pisco, obtained with an electronic nose, were analyzed through the application of machine learning algorithms for the differentiation of pisco varieties. This differentiation aids in verifying beverage quality, considering the parameters established in its Designation of Origin”. For signal processing, neural networks, multiclass support vector machines and random forest machine learning algorithms were implemented in MATLAB. In addition, data augmentation was performed using a proposed procedure based on interpolation–extrapolation. All algorithms trained with augmented data showed an increase in performance and more reliable predictions compared to those trained with raw data. From the comparison of these results, it was found that the best performance was achieved with neural networks.
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