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Ecophysiological Modeling of Grapevine Water Stress in Burgundy Terroirs by a Machine-Learning Approach

机译:机器学习方法对勃艮第风土葡萄水分胁迫的生态生理模拟

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摘要

In a climate change scenario, successful modeling of the relationships between plant-soil-meteorology is crucial for a sustainable agricultural production, especially for perennial crops. Grapevines (Vitis vinifera L. cv Chardonnay) located in eight experimental plots (Burgundy, France) along a hillslope were monitored weekly for 3 years for leaf water potentials, both at predawn (Ψpd) and at midday (Ψstem). The water stress experienced by grapevine was modeled as a function of meteorological data (minimum and maximum temperature, rainfall) and soil characteristics (soil texture, gravel content, slope) by a gradient boosting machine. Model performance was assessed by comparison with carbon isotope discrimination (δ13C) of grape sugars at harvest and by the use of a test-set. The developed models reached outstanding prediction performance (RMSE < 0.08 MPa for Ψstem and < 0.06 MPa for Ψpd), comparable to measurement accuracy. Model predictions at a daily time step improved correlation with δ13C data, respect to the observed trend at a weekly time scale. The role of each predictor in these models was described in order to understand how temperature, rainfall, soil texture, gravel content and slope affect the grapevine water status in the studied context. This work proposes a straight-forward strategy to simulate plant water stress in field condition, at a local scale; to investigate ecological relationships in the vineyard and adapt cultural practices to future conditions.
机译:在气候变化的情况下,成功建立植物-土壤-气象之间关系的模型对于可持续农业生产,尤其是多年生作物的可持续生产至关重要。在黎明前(Ψpd)和中午(Ψstem),对位于山坡上八个试验区(法国勃艮第,法国)的葡萄藤(法国勃艮第)进行了为期3年的每周监测。通过梯度增强机,将葡萄所经历的水分胁迫建模为气象数据(最低和最高温度,降雨量)和土壤特征(土壤质地,砾石含量,坡度)的函数。通过与葡萄糖在收获时的碳同位素判别(δ 13 C)进行比较,并使用测试装置,评估了模型的性能。所开发的模型达到了出色的预测性能(RMSE <0.08 MPa,Ψsd<0.06 MPa,Ψpd),与测量精度相当。相对于每周时间尺度上观察到的趋势,每天时间步长的模型预测改善了与δ 13 C数据的相关性。描述了每个预测器在这些模型中的作用,以了解温度,降雨量,土壤质地,砾石含量和坡度如何在所研究的环境中影响葡萄水的状况。这项工作提出了一种简单的策略,可以在局部范围内模拟田间条件下的植物水分胁迫。调查葡萄园中的生态关系,并使文化习俗适应未来的条件。

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