Unveiling the drivers contributing to global wheat yield shocks through quantile regression

IF 12.4 Q1 AGRICULTURE, MULTIDISCIPLINARY
Srishti Vishwakarma , Xin Zhang , Vyacheslav Lyubchich
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引用次数: 0

Abstract

Sudden reductions in crop yield (i.e., yield shocks) severely disrupt the food supply, intensify food insecurity, depress farmers' welfare, and worsen a country's economic conditions. Here, we study the spatiotemporal patterns of wheat yield shocks, quantified by the lower quantiles of yield fluctuations, in 86 countries over 30 years. Furthermore, we assess the relationships between shocks and their key ecological and socioeconomic drivers using quantile regression based on statistical (linear quantile mixed model) and machine learning (quantile random forest) models. Using a panel dataset that captures spatiotemporal patterns of yield shocks and possible drivers in 86 countries, we find that the severity of yield shocks has been increasing globally since 1997. Moreover, our cross-validation exercise shows that quantile random forest outperforms the linear quantile regression model. Despite this performance difference, both models consistently reveal that the severity of shocks is associated with higher weather stress, nitrogen fertilizer application rate, and gross domestic product (GDP) per capita (a typical indicator for economic and technological advancement in a country). While the unexpected negative association between more severe wheat yield shocks and higher fertilizer application rate and GDP per capita does not imply a direct causal effect, they indicate that the advancement in wheat production has been primarily on achieving higher yields and less on lowering the possibility and magnitude of sharp yield reductions. Hence, in the context of growing extreme weather stress, there is a critical need to enhance the technology and management practices that mitigate yield shocks to improve the resilience of the world food systems.
通过分位数回归揭示全球小麦产量冲击的驱动因素
作物产量突然下降(即产量冲击)严重扰乱粮食供应,加剧粮食不安全,降低农民福利,并使一个国家的经济状况恶化。在这里,我们研究了86个国家30年来小麦产量冲击的时空格局,通过产量波动的低分位数进行量化。此外,我们使用基于统计(线性分位数混合模型)和机器学习(分位数随机森林)模型的分位数回归评估了冲击与其主要生态和社会经济驱动因素之间的关系。通过面板数据集,我们发现,自1997年以来,全球收益冲击的严重程度一直在增加。该数据集捕获了86个国家收益冲击的时空模式和可能的驱动因素。此外,我们的交叉验证练习表明,分位数随机森林优于线性分位数回归模型。尽管存在这种表现差异,但两种模型都一致显示,冲击的严重程度与较高的天气压力、氮肥施用量和人均国内生产总值(一国经济和技术进步的典型指标)有关。虽然更严重的小麦产量冲击与更高的化肥施用量和人均GDP之间意想不到的负相关关系并不意味着直接的因果关系,但它们表明,小麦生产的进步主要是实现更高的产量,而不是降低产量急剧下降的可能性和幅度。因此,在极端天气压力日益加剧的背景下,迫切需要加强减轻产量冲击的技术和管理实践,以提高世界粮食系统的抵御能力。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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