Predicting wine prices based on the weather: Bordeaux vineyards in a changing climate

被引:2
作者
Roucher, Aymeric [1 ]
Aristodemou, Leonidas [1 ]
Tietze, Frank [1 ]
机构
[1] Univ Cambridge, Innovat & IP Management IIPM Lab, Ctr Technol Management CTM, Inst Mfg IfM,Dept Engn, Cambridge, England
关键词
climate change; grapevine; machine learning; local least squares kernel regression; phenology; QUALITY; GRAPE; WATER; VARIABILITY; EXPRESSION; RESPONSES; IMPACT; GROWTH;
D O I
10.3389/fenvs.2022.1020867
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Each grapevine cultivar needs a certain amount of cumulated heat over its growing season for its grapes to ripen properly. In the 20th century's Bordeaux vineyard, the average growing season temperature was not always sufficient, thus higher than usual summer temperatures were on average linked with higher grape and wine quality. However, over the last 60+ years, global warming gradually increased the vineyard's temperatures up to the point where additional growing season heat is not required anymore, and can even become detrimental to wine quality: hence the positive effect of higher-than-usual summer temperatures has progressively vanished. In this context, it is unknown whether any weather variable is still a good predictor of a vintage's quality. Here we provide a predictive model of wine prices, based only on weather data. We establish that it predicts a vintage's long-term quality more accurately than a world-class expert rating this same vintage in the year following its production. We first design a corpus of features suited to the grapevine lifecycle to extract from them the most powerful drivers of wine quality. We then build a predictive model that leverages Local Least Squares kernel regression (LLS) to factor in the time-varying nature of climate impact on the grapevine. Hence, it is able to outperform previous models and even provides a better predictive ranking of successive vintages than the grades given by world-famous wine critic Robert Parker. This predictive power demonstrates that weather is still a very efficient predictor of wine quality in Bordeaux. The two main features on which this model is built-following grapevine's phenological calendar and using an LLS architecture to let the input-output relationship vary over time-could help model other agricultural systems amidst climate change and adaptation of production processes.
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页数:12
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