GSTDTAP  > 气候变化
DOI10.1111/gcb.13738
Global evaluation of a semiempirical model for yield anomalies and application to within-season yield forecasting
Schauberger, Bernhard1,2; Gornott, Christoph1; Wechsung, Frank1
2017-11-01
发表期刊GLOBAL CHANGE BIOLOGY
ISSN1354-1013
EISSN1365-2486
出版年2017
卷号23期号:11
文章类型Article
语种英语
国家Germany; France
英文摘要

Quantifying the influence of weather on yield variability is decisive for agricultural management under current and future climate anomalies. We extended an existing semiempirical modeling scheme that allows for such quantification. Yield anomalies, measured as interannual differences, were modeled for maize, soybeans, and wheat in the United States and 32 other main producer countries. We used two yield data sets, one derived from reported yields and the other from a global yield data set deduced from remote sensing. We assessed the capacity of the model to forecast yields within the growing season. In the United States, our model can explain at least two-thirds (63%-81%) of observed yield anomalies. Its out-of-sample performance (34%-55%) suggests a robust yield projection capacity when applied to unknown weather. Out-of-sample performance is lower when using remote sensing-derived yield data. The share of weather-driven yield fluctuation varies spatially, and estimated coefficients agree with expectations. Globally, the explained variance in yield anomalies based on the remote sensing data set is similar to the United States (71%-84%). But the out-of-sample performance is lower (15%-42%). The performance discrepancy is likely due to shortcomings of the remote sensing yield data as it diminishes when using reported yield anomalies instead. Our model allows for robust forecasting of yields up to 2months before harvest for several main producer countries. An additional experiment suggests moderate yield losses under mean warming, assuming no major changes in temperature extremes. We conclude that our model can detect weather influences on yield anomalies and project yields with unknown weather. It requires only monthly input data and has a low computational demand. Its within-season yield forecasting capacity provides a basis for practical applications like local adaptation planning. Our study underlines high-quality yield monitoring and statistics as critical prerequisites to guide adaptation under climate change.


英文关键词forecast global maize semiempirical model soybeans weather wheat yield anomaly
领域气候变化 ; 资源环境
收录类别SCI-E
WOS记录号WOS:000412322700026
WOS关键词CLIMATE-CHANGE IMPACTS ; CROP YIELD ; REGRESSION-MODELS ; UNITED-STATES ; WINTER-WHEAT ; SILAGE MAIZE ; EXTREME HEAT ; VARIABILITY ; TEMPERATURES ; GROWTH
WOS类目Biodiversity Conservation ; Ecology ; Environmental Sciences
WOS研究方向Biodiversity & Conservation ; Environmental Sciences & Ecology
引用统计
文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/17015
专题气候变化
资源环境科学
作者单位1.Potsdam Inst Climate Impact Res PIK, Potsdam, Germany;
2.IPSL, Lab Sci Climat & Environm, Gif Sur Yvette, France
推荐引用方式
GB/T 7714
Schauberger, Bernhard,Gornott, Christoph,Wechsung, Frank. Global evaluation of a semiempirical model for yield anomalies and application to within-season yield forecasting[J]. GLOBAL CHANGE BIOLOGY,2017,23(11).
APA Schauberger, Bernhard,Gornott, Christoph,&Wechsung, Frank.(2017).Global evaluation of a semiempirical model for yield anomalies and application to within-season yield forecasting.GLOBAL CHANGE BIOLOGY,23(11).
MLA Schauberger, Bernhard,et al."Global evaluation of a semiempirical model for yield anomalies and application to within-season yield forecasting".GLOBAL CHANGE BIOLOGY 23.11(2017).
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