Sources of uncertainty for wheat yield projections under future climate are site-specific

被引:0
|
作者
Bin Wang
Puyu Feng
De Li Liu
Garry J. O’Leary
Ian Macadam
Cathy Waters
Senthold Asseng
Annette Cowie
Tengcong Jiang
Dengpan Xiao
Hongyan Ruan
Jianqiang He
Qiang Yu
机构
[1] New South Wales Department of Primary Industries,
[2] Wagga Wagga Agricultural Institute,undefined
[3] State Key Laboratory of Soil Erosion and Dryland Farming on the Loess Plateau,undefined
[4] Institute of Soil and Water Conservation,undefined
[5] Northwest A&F University,undefined
[6] College of Land Science and Technology,undefined
[7] China Agricultural University,undefined
[8] Climate Change Research Centre,undefined
[9] UNSW Sydney,undefined
[10] Agriculture Victoria,undefined
[11] Department of Jobs,undefined
[12] Precincts and Regions,undefined
[13] ARC Centre of Excellence for Climate Extremes and Climate Change Research Centre,undefined
[14] UNSW Sydney,undefined
[15] New South Wales Department of Primary Industries,undefined
[16] Agricultural & Biological Engineering Department,undefined
[17] University of Florida,undefined
[18] New South Wales Department of Primary Industries,undefined
[19] School of Environmental and Rural Science,undefined
[20] University of New England,undefined
[21] Engineering Technology Research Centre,undefined
[22] Geographic Information Development and Application of Hebei,undefined
[23] Institute of Geographical Sciences,undefined
[24] Hebei Academy of Sciences,undefined
[25] Shijiazhuang,undefined
[26] Guangxi Geographical Indication Crops Research Center of Big Data Mining and Experimental Engineering Technology and Key Laboratory of Beibu Gulf Environment Change and Resources Use Utilization of Ministry of Education,undefined
[27] Nanning Normal University,undefined
[28] College of Resources and Environment,undefined
[29] University of Chinese Academy of Science,undefined
[30] School of Life Sciences,undefined
[31] Faculty of Science,undefined
[32] University of Technology Sydney,undefined
来源
Nature Food | 2020年 / 1卷
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摘要
Understanding sources of uncertainty in climate–crop modelling is critical for informing adaptation strategies for cropping systems. An understanding of the major sources of uncertainty in yield change is needed to develop strategies to reduce the total uncertainty. Here, we simulated rain-fed wheat cropping at four representative locations in China and Australia using eight crop models, 32 global climate models (GCMs) and two climate downscaling methods, to investigate sources of uncertainty in yield response to climate change. We partitioned the total uncertainty into sources caused by GCMs, crop models, climate scenarios and the interactions between these three. Generally, the contributions to uncertainty were broadly similar in the two downscaling methods. The dominant source of uncertainty is GCMs in Australia, whereas in China it is crop models. This difference is largely due to uncertainty in GCM-projected future rainfall change across locations. Our findings highlight the site-specific sources of uncertainty, which should be one step towards understanding uncertainties for more robust climate–crop modelling.
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页码:720 / 728
页数:8
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