Semenov Mikhail A, Senapati Nimai, Coleman Kevin, Collins Adrian L
Sustainable Soils and Crops, Rothamsted Research, West Common, Harpenden AL5 2JQ, United Kingdom.
Net Zero and Resilient Farming, Rothamsted Research, West Common, Harpenden AL5 2JQ, United Kingdom.
Data Brief. 2024 Jul 4;55:110709. doi: 10.1016/j.dib.2024.110709. eCollection 2024 Aug.
Climate change is a critical issue in the 21st century. Assessment of the impacts of climate change is beneficial for assisting advanced recommendations for adaptations. Climate change impact assessments require high quality local-scale climate scenarios. The future climate projections from Global Climate Models (GCMs) are problematic to use at local scale due to their coarse spatial and temporal resolution, and existing biases. It is important to have climate change scenarios based on the GCMs ensemble downscaled to local scale to account for inherent uncertainty in climate projections, and to have a sufficient large number of years to account for inter-annual climate variability and low frequency, but high impact, extreme climatic events. A dataset of future climate change scenarios was therefore generated at 26 representative sites across Great Britain based on the latest CMIP6 multi-model ensemble downscaled to local-scale by using a stochastic weather generator, LARS-WG 8.0. The data set consists of climate scenarios of daily weather of 1,000 realizations of typical years for a baseline, and very near (2030) and near-future (2050) climates, based on five GCMs and two emission scenarios (Shared Socioeconomic Pathways - SSPs . SSP2-4.5 and SSP5-8.5). A total of 15 GCMs from the CMIP6 ensemble were integrated in LARS-WG 8.0. LARS-WG downscales future climate projections from the GCMs and incorporates changes at local scale in the mean climate, climatic variability, and extreme events by modifying the statistical distributions of the weather variables at each site. Based on the performance of the GCMs over northern Europe and their climate sensitivity, a subset of five GCMs was selected, .; ACCESS-ESM1-5, CNRM-CM6-1, HadGEM3-GC31-LL, MPI-ESM1-2-LR and MRI-ESM2-0. The selected GCMs are evenly distributed among the full set of 15 GCMs. The use of a subset of GCMs substantially reduces computational time, while allowing assessment of uncertainties in impact studies related to uncertain future climate projections arising from GCMs. The 1000 years of daily weather for the baseline, as well as for very near and near-future climate change scenarios, are essential for estimating inter-annual variation, and for detecting low frequency, but high impact, extreme climatic events, such as heat waves, floods and droughts. The present dataset can be used as an input to climate change impact models in various fields, including, land and water resources, agriculture and food production, ecology and epidemiology, and human health and welfare. Researchers, breeders, farm managers, social and public sector leaders, and policymakers may benefit from this new dataset when undertaking impact assessments of climate change and decision support for mitigation and adaptation to climate change.
气候变化是21世纪的一个关键问题。评估气候变化的影响有助于提出先进的适应建议。气候变化影响评估需要高质量的本地尺度气候情景。全球气候模型(GCMs)的未来气候预测由于其粗糙的空间和时间分辨率以及现有的偏差,在本地尺度上使用存在问题。基于GCMs集合向下缩放至本地尺度来生成气候变化情景很重要,这样可以考虑气候预测中固有的不确定性,并且要有足够多的年份来考虑年际气候变率以及低频但高影响的极端气候事件。因此,基于最新的CMIP6多模型集合,通过使用随机天气发生器LARS-WG 8.0向下缩放至本地尺度,在英国26个代表性站点生成了一个未来气候变化情景数据集。该数据集由基于五个GCMs和两种排放情景(共享社会经济路径 - SSPs,SSP2-4.5和SSP5-8.5)的1000个典型年份的每日天气气候情景组成,包括基线情景、非常近期(2030年)和近期(2050年)气候情景。CMIP6集合中的总共15个GCMs被集成到LARS-WG 8.0中。LARS-WG对GCMs的未来气候预测进行向下缩放,并通过修改每个站点天气变量的统计分布,纳入本地尺度上平均气候、气候变率和极端事件的变化。基于GCMs在北欧的表现及其气候敏感性,选择了五个GCMs的子集,即ACCESS-ESM1-5、CNRM-CM6-1、HadGEM3-GC31-LL、MPI-ESM1-2-LR和MRI-ESM2-0。所选的GCMs在全部15个GCMs中均匀分布。使用GCMs的子集大大减少了计算时间,同时允许评估与GCMs产生的不确定未来气候预测相关的影响研究中的不确定性。基线情景以及非常近期和近期气候变化情景的1000年每日天气数据对于估计年际变化以及检测低频但高影响的极端气候事件(如热浪、洪水和干旱)至关重要。本数据集可作为各种领域气候变化影响模型的输入,包括土地和水资源、农业和粮食生产、生态和流行病学以及人类健康和福利。研究人员、育种者、农场管理者、社会和公共部门领导人以及政策制定者在进行气候变化影响评估以及为缓解和适应气候变化提供决策支持时,可能会从这个新数据集受益。