“Agro-meteorological indices and climate model uncertainty over the UK”

被引:0
|
作者
A. E. Harding
M. Rivington
M. J. Mineter
S. F. B. Tett
机构
[1] University of Edinburgh,Grant Institute
[2] James Hutton Institute,undefined
来源
Climatic Change | 2015年 / 128卷
关键词
Regional Climate Model; Ensemble Member; Climate Sensitivity; Future Period; Field Operation;
D O I
暂无
中图分类号
学科分类号
摘要
Five stakeholder-relevant indices of agro-meteorological change were analysed for the UK, over past (1961–1990) and future (2061–2090) periods. Accumulated Frosts, Dry Days, Growing Season Length, Plant Heat Stress and Start of Field Operations were calculated from the E-Obs (European Observational) and HadRM3 (Hadley Regional Climate Model) PPE (perturbed physics ensemble) data sets. Indices were compared directly and examined for current and future uncertainty. Biases are quantified in terms of ensemble member climate sensitivity and regional aggregation. Maps of spatial change then provide an appropriate metric for end-users both in terms of their requirements and statistical robustness. A future UK is described with fewer frosts, fewer years with a large number of frosts, an earlier start to field operations (e.g., tillage), fewer occurrences of sporadic rainfall, more instances of high temperatures (in both the mean and upper range), and a much longer growing season.
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收藏
页码:113 / 126
页数:13
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