Realised added value in dynamical downscaling of Australian climate change

被引:0
作者
Giovanni Di Virgilio
Jason P. Evans
Alejandro Di Luca
Michael R. Grose
Vanessa Round
Marcus Thatcher
机构
[1] University of New South Wales,Climate Change Research Centre, School of Biological, Earth and Environmental Sciences
[2] University of New South Wales,Australian Research Council Centre of Excellence for Climate Extremes
[3] CSIRO Oceans and Atmosphere,undefined
[4] CSIRO Oceans and Atmosphere,undefined
来源
Climate Dynamics | 2020年 / 54卷
关键词
Climate impact adaptation; Climate extremes; CORDEX-Australasia; Precipitation; Regional climate modelling; Temperature;
D O I
暂无
中图分类号
学科分类号
摘要
Coarse resolution global climate models (GCMs) cannot resolve fine-scale drivers of regional climate, which is the scale where climate adaptation decisions are made. Regional climate models (RCMs) generate high-resolution projections by dynamically downscaling GCM outputs. However, evidence of where and when downscaling provides new information about both the current climate (added value, AV) and projected climate change signals, relative to driving data, is lacking. Seasons and locations where CORDEX-Australasia ERA-Interim and GCM-driven RCMs show AV for mean and extreme precipitation and temperature are identified. A new concept is introduced, ‘realised added value’, that identifies where and when RCMs simultaneously add value in the present climate and project a different climate change signal, thus suggesting plausible improvements in future climate projections by RCMs. ERA-Interim-driven RCMs add value to the simulation of summer-time mean precipitation, especially over northern and eastern Australia. GCM-driven RCMs show AV for precipitation over complex orography in south-eastern Australia during winter and widespread AV for mean and extreme minimum temperature during both seasons, especially over coastal and high-altitude areas. RCM projections of decreased winter rainfall over the Australian Alps and decreased summer rainfall over northern Australia are collocated with notable realised added value. Realised added value averaged across models, variables, seasons and statistics is evident across the majority of Australia and shows where plausible improvements in future climate projections are conferred by RCMs. This assessment of varying RCM capabilities to provide realised added value to GCM projections can be applied globally to inform climate adaptation and model development.
引用
收藏
页码:4675 / 4692
页数:17
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