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基于天气和水分管理信息利用机器学习算法对黑皮诺香气特征进行建模:使用人工智能的垂直年份分析

Modeling Pinot Noir Aroma Profiles Based on Weather and Water Management Information Using Machine Learning Algorithms: A Vertical Vintage Analysis Using Artificial Intelligence.

作者信息

Fuentes Sigfredo, Tongson Eden, Torrico Damir D, Gonzalez Viejo Claudia

机构信息

School of Agriculture and Food, Faculty of Veterinary and Agricultural Sciences, University of Melbourne, Melbourne, VIC 3010, Australia.

Department of Wine, Food and Molecular Biosciences, Faculty of Agriculture and Life Sciences, Lincoln University, Lincoln 7647, New Zealand.

出版信息

Foods. 2019 Dec 30;9(1):33. doi: 10.3390/foods9010033.

Abstract

Wine aroma profiles are determinant for the specific style and quality characteristics of final wines. These are dependent on the seasonality, mainly weather conditions, such as solar exposure and temperatures and water management strategies from veraison to harvest. This paper presents machine learning modeling strategies using weather and water management information from a Pinot noir vineyard from 2008 to 2016 vintages as inputs and aroma profiles from wines from the same vintages assessed using gas chromatography and chemometric analyses of wines as targets. The results showed that artificial neural network (ANN) models rendered the high accuracy in the prediction of aroma profiles (Model 1; = 0.99) and chemometric wine parameters (Model 2; = 0.94) with no indication of overfitting. These models could offer powerful tools to winemakers to assess the aroma profiles of wines before winemaking, which could help adjust some techniques to maintain/increase the quality of wines or wine styles that are characteristic of specific vineyards or regions. These models can be modified for different cultivars and regions by including more data from vertical vintages to implement artificial intelligence in winemaking.

摘要

葡萄酒的香气特征决定了最终葡萄酒的特定风格和品质特性。这些取决于季节性因素,主要是天气状况,如日照、温度以及从转色期到收获期的水分管理策略。本文提出了机器学习建模策略,将2008年至2016年份黑皮诺葡萄园的天气和水分管理信息作为输入,将同一年份葡萄酒通过气相色谱法和化学计量分析评估得到的香气特征作为目标。结果表明,人工神经网络(ANN)模型在预测香气特征(模型1; = 0.99)和化学计量学葡萄酒参数(模型2; = 0.94)方面具有很高的准确性,且没有过拟合的迹象。这些模型可以为酿酒师提供强大的工具,在酿酒前评估葡萄酒的香气特征,这有助于调整一些技术,以保持/提高葡萄酒的品质或特定葡萄园或地区特有的葡萄酒风格。通过纳入更多垂直年份的数据,可以针对不同的品种和地区对这些模型进行修改,从而在酿酒中实现人工智能。

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