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EVOLUÇÃO DA ACIDEZ DURANTE A VINIFICAÇÃO DE UVAS TINTAS DE TRÊS REGIÕES VITÍCOLAS DO RIO GRANDE DO SUL

Food Science and Technology(1998)SCI 4区

Empresa Brasileira de Pesquisa Agropecuária

Cited 28|Views2
Abstract
The acidity influences the wine stability and coloration and it is one of the most important sensory attributes of wines. The total acidity and the pH vary with the salification of tartaric acid and the K content in grapes. This work evaluated the acidity evolution during vinification of three red grape varieties (Merlot, Cabernet Franc and Cabernet Sauvignon) from three viticultural regions of the state of Rio Grande do Sul, Brazil. The vineyards were uniforms and with the same trellising and pruning systems and grafted on the SO4 rootstock. The wines were elaborated by the microvinification process in the 1995 vintage. The evolution of pH, total acidity, tartaric acid and K were evaluated in five vinification phases: 1) immediately after crushing; 2) after draining; 3) after alcoholic fermentation; 4) after malolactic fermentation; 5) after tartrate stabilization. Results show that wines from Sant'Ana do Livramento presented the lowest values of total acidity and the highest increases of pH. The acidity evolution was associated with the initial K and tartaric acid levels found in the grape musts.
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vinho,composição química,caracterização de vinhos,enologia,potássio,wine,chemical composition,wine characterization,enology,potassium
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方法】:作者扩展了最近的惩罚复杂性先验框架,开发了一种弱信息性的先验,该先验对一维、二维和三维Matérn高斯随机场的范围和边际方差进行联合建模,通过将范围推向无穷大和边际方差推向零来惩罚复杂性。

实验】:通过模拟研究验证了新先验的有效性,并使用挪威南部年降水量数据集进行实际应用,结果显示该先验在保持良好覆盖度的同时,能够利用先验知识实现更短的置信区间。实验中使用了模拟的平稳数据集来选择超参数,确保了参数估计的保守性和预测性能的提升。