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Wine quality is closely linked to sensory attributes such as aroma, taste, and mouthfeel, all of which are influenced by grape variety, “terroir”, and vinification practices. Among these, aroma is particularly important for consumer preference, and it results from a complex interplay of numerous volatile compounds. Conventional sensory methods, such as descriptive analysis (DA) performed by trained panels, offer valuable insights but are often time-consuming, resource-intensive, and subject to individual variability. Recent advances in sensor technologies—including electronic nose (E-nose) and electronic tongue (E-tongue)—combined with chemometric techniques and machine learning algorithms, offer more efficient, objective, and predictive approaches to wine aroma profiling. These tools integrate analytical and sensory data to predict aromatic characteristics and quality traits across diverse wine styles. Complementary techniques, including gas chromatography (GC), near-infrared (NIR) spectroscopy, and quantitative structure–odor relationship (QSOR) modeling, when integrated with multivariate statistical methods such as partial least squares regression (PLSR) and neural networks, have shown high predictive accuracy in assessing wine aroma and quality. Such approaches facilitate real-time monitoring, strengthen quality control, and support informed decision-making in enology. However, aligning instrumental outputs with human sensory perception remains a challenge, highlighting the need for further refinement of hybrid models. This review highlights the emerging role of predictive modeling and sensor-based technologies in advancing wine aroma evaluation and quality management.
Details
Quality management;
Gas chromatography;
Sensory evaluation;
Quality control;
Electronic noses;
Senses;
Least squares method;
Metabolism;
Chromatography;
Aroma;
Yeast;
Machine learning;
Statistical analysis;
Electronic tongues;
Fermentation;
Wine;
Volatile compounds;
Neural networks;
Near infrared radiation;
Prediction models;
Sensory properties;
Aging;
Infrared spectroscopy;
Sensors;
Sensory perception;
Statistical methods;
Alcohol;
Phenols;
Algorithms;
Real time;
Decision making;
Chemometrics
; Vilela, Alice 1
; Oliveira, Ivo 2 ; Aires Alfredo 2
; Pinto, Teresa 2
; Gonçalves Berta 2
1 Chemistry Research Centre-Vila Real (CQ-VR), University of Trás-os-Montes e Alto Douro, Quinta de Prados, 5000-801 Vila Real, Portugal; [email protected]
2 Center for the Research and Technology of Agro-Environmental and Biological Sciences (CITAB), Inov4Agro, Institute for Innovation, Capacity Building and Sustainability of Agri-Food Production, University of Trás-of-Montes and Alto Douro, Quinta de Prados, 5000-801 Vila Real, Portugal; [email protected] (I.O.); [email protected] (A.A.); [email protected] (T.P.); [email protected] (B.G.)