商品
预测能力
数据集
农业
计量经济学
环境科学
生产(经济)
集合(抽象数据类型)
气候变化
气候学
气象学
计算机科学
经济
地理
生态学
宏观经济学
程序设计语言
考古
人工智能
哲学
地质学
认识论
生物
市场经济
作者
Dylan Hogan,Wolfram Schlenker
标识
DOI:10.1038/s41467-024-48388-w
摘要
Abstract Global agricultural commodity markets are highly integrated among major producers. Prices are driven by aggregate supply rather than what happens in individual countries in isolation. Estimating the effects of weather-induced shocks on production, trade patterns and prices hence requires a globally representative weather data set. Recently, two data sets that provide daily or hourly records, GMFD and ERA5-Land, became available. Starting with the US, a data rich region, we formally test whether these global data sets are as good as more fine-scaled country-specific data in explaining yields and whether they estimate similar response functions. While GMFD and ERA5-Land have lower predictive skill for US corn and soybeans yields than the fine-scaled PRISM data, they still correctly uncover the underlying non-linear temperature relationship. All specifications using daily temperature extremes under any of the weather data sets outperform models that use a quadratic in average temperature. Correctly capturing the effect of daily extremes has a larger effect than the choice of weather data. In a second step, focusing on Sub Saharan Africa, a data sparse region, we confirm that GMFD and ERA5-Land have superior predictive power to CRU, a global weather data set previously employed for modeling climate effects in the region.
科研通智能强力驱动
Strongly Powered by AbleSci AI