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基于感官数据的干红葡萄酒贮藏期风味演化的模型构建

Model construction for the flavour evolution of dry red wine during storage based on sensory data

  • 摘要: 为原产地域葡萄酒产品的工艺优化、陈酿管理和市场推广提供技术指导,试验以吐鲁番赤霞珠干红葡萄酒为研究对象,共采集81款酒样,分属2~15 a酒龄,系统解析了特定产区干红葡萄酒随酒龄的风味质量演变,构建了产品风味演化的预测模型。酒度、总酸、挥发酸等常规理化指标采用葡萄酒国家标准检测方法进行分析,外观、香气、酒体等风味特征采用培训过的品评小组感官量化,感官分析数据进行聚类分析和主成分分析(principal components analysis, PCA),加权计算感官特征的PCA载荷贡献率,随后采用非线性最小二乘法拟合高斯过程回归(gaussian process regression, GPR)构建葡萄酒贮藏期风味演化的数学模型。结果表明,供试酒样常规理化指标符合国家标准,感官分析数据的聚类结果表明,2~6 a、7~9 a、>9 a的酒样组在感官特征上聚为三大类。PCA显示,前两个PC分别占总体方差的92.9%和2.3%,整体印象在PC1上的权重最大,涩感与酸感权重较低。风味演化模型得出,95%置信区间在0~12.40酒龄,供试酒样感官质量随酒龄增加逐渐上升,在酒龄2.95 a时达到最佳,而后缓慢下降,至酒龄7.77 a时感官质量达到最大衰减速率。模型结果显示,贮藏2~4 a的酒样在外观、香气和酒体等特征上均有较高得分,5~8 a的酒样在酒体和余味特征上呈缓慢衰减趋势,但仍具有基础品质,超过9 a的酒样氧化加重,感官品质显著下降。然而,供试同年份酒样间存在较大感官差异,反映该产区葡萄酒产品仍有工艺优化空间。研究得出,结合主成分分析的权重解析能力与高斯过程回归的非线性拐点捕捉特性,建立的连续年份干红葡萄酒的风味演化数学模型,量化了葡萄酒核心感官特征的权重贡献,显示了特定产区葡萄酒产品演化的关键节点,可以客观展示产区葡萄酒产品的风味演化规律,在葡萄酒风味演化预测领域具有应用推广价值。

     

    Abstract: The study aimed to provide technical guidance for process optimization, aging management, and market promotion of wines from specific geographical regions by systematically analyzing the flavor quality evolution of dry red wines during aging and constructing a predictive model for flavor evolution. The experiment focused on Cabernet Sauvignon dry red wines from Turpan, with 81 samples collected across 2~15 years of aging. Conventional physicochemical indicators (e.g., alcohol content, total acidity, volatile acidity) were analyzed using national standard method (GB/T 15038-2006), while flavor characteristics (e.g., appearance, aroma, mouthfeel) were quantified by a trained tasting panel. Sensory data underwent cluster analysis and principal component analysis (PCA), followed by weighted calculation of PCA loading contribution rates for sensory traits. A Gaussian Process Regression (GPR) model was developed using nonlinear least squares fitting to construct a mathematical model for wine flavor evolution. Results showed that the tested wines met national physicochemical standards. Cluster analysis of sensory data revealed three distinct groups (2~6 years, 7~9 years, >9 years) with significant intra-group sensory similarity, indicating stage-specific differentiation of flavor traits across aging. PCA demonstrated that the first two principal components (PC1 and PC2) accounted for 92.9% and 2.3% of total variance, respectively. The "overall impression" exhibited the highest weight on PC1, while astringency and acidity showed minimal weights. The flavor evolution model indicated a 95% confidence interval covering 0~12.40 years of aging. Sensory quality initially increased to a peak at 2.95 years, then gradually declined until 7.77 years, after which maximum degradation occurred. Model outputs showed that wines aged 2~4 years achieved high scores in appearance, aroma, and mouthfeel; aged 5~8 years displayed slow degradation in mouthfeel and aftertaste but retained basic quality; wines exceeding 9 years of aging exhibited intensified oxidation and significant sensory decline. The integration of PCA and GPR provided a novel framework to capture the nonlinear evolution of sensory quality, overcoming the limitations of traditional linear models. The hybrid approach identified critical inflection points and quantified the contributions of core sensory attributes to overall quality. The model’s ability to predict aging-related changes in flavor profiles offers a data-driven tool for optimizing production consistency and storage protocols in GI wine manufacturing. Notably, sensory variability among same-vintage samples highlighted the need for improved standardization in grape selection, maceration control, and oak aging practices. The study emphasized that expanding the sample size and refining process parameters could enhance the model’s reliability and reduce vintage-to-vintage inconsistencies. The PCA-GPR model demonstrated its scientific and industrial relevance by bridging the gap between sensory science and data-driven modeling. By constructing a region-specific sensory weight system through principal component analysis, the regional adaptability of the evaluation model was significantly improved. Furthermore, GPR through kernel function design, can flexibly capture the nonlinear stage evolution characteristics of flavor quality and wine age, and utilize the covariance matrix to dynamically assess the uncertainty of flavor decay in products of different vintages, providing a probabilistic decision-making basis for storage risk management. Overall, the research provides a foundation for developing region-specific quality assurance systems, enabling wineries to balance aging duration with economic feasibility and improve product value through precise flavor management.

     

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