Kheir Ahmed M S, Elnashar Abdelrazek, Mosad Alaa, Govind Ajit
International Center for Agricultural Research in the Dry Areas (ICARDA), Maadi 11728, Egypt.
Soils, Water and Environment Research Institute, Agricultural Research Center, 9 Cairo University Street, Giza 12112, Egypt.
Heliyon. 2023 Jul 20;9(7):e18200. doi: 10.1016/j.heliyon.2023.e18200. eCollection 2023 Jul.
Recent climate change (CC) scenarios from the Coupled Model Intercomparison Project Phase 6 (CMIP6) have just been released in coarse resolution. Deep learning (DL) based on statistical downscaling has recently been used, but more research is needed, particularly in arid regions, because little is known about their suitability for extrapolating future CC scenarios. Here we analyzed this issue by downscaling maximum, and minimum temperature over the Egyptian domain based on one General Circulation Model (GCM) as CanESM5 and two shared socioeconomic pathways (SSPs) as SSP4.5 and SSP8.5 from CMIP6 using Convolutional Neural Network (CNN) herein after called CNNSD. The downscaled maximum and minimum temperatures based CNNSD was able to reproduce the observed climate over historical and future periods at a finer resolution (0.1°), reducing the biases exhibited by the original scenario. To the best of our knowledge, this is the first time CNN has been used to downscale CMIP6 scenarios, particularly in arid regions. The downscaled analysis showed that maximum and minimum temperatures are expected to rise by 4.8 °C and 4.0 °C, respectively, in the future (2015-2100), compared to the historical period, under the moderate scenario (SSP4.5). Meanwhile, under the Fossil-fueled Development scenario (SSP8.5), these values will rise by 6.3 °C and 4.2 °C, respectively as analyzed by the CNNSD. The developed approach could be used not only in Egypt but also in other developing countries, which are especially vulnerable to climate change and has a scarcity of related research. The established downscaled approach's supply can be used to provide climate services, as a driver for impact studies and adaptation decisions, and as information for policy development. More research is needed, however, to include multi-GCMs to quantify the uncertainties between GCMs and SSPs, improving the outputs for use in climate change impacts and adaptations for food and nutrition security.
耦合模式比较计划第6阶段(CMIP6)最新的气候变化(CC)情景刚刚以粗分辨率发布。基于统计降尺度的深度学习(DL)最近已被使用,但仍需要更多研究,特别是在干旱地区,因为对于其推断未来CC情景的适用性知之甚少。在此,我们基于一个通用环流模型(GCM)即加拿大地球系统模型第5版(CanESM5)以及CMIP6的两个共享社会经济路径(SSP)即SSP4.5和SSP8.5,使用卷积神经网络(CNN,以下简称CNNSD)对埃及地区的最高和最低气温进行降尺度分析,以此来分析这个问题。基于CNNSD的降尺度最高和最低气温能够在更精细的分辨率(0.1°)下再现历史和未来时期的观测气候,减少原始情景所表现出的偏差。据我们所知,这是首次使用CNN对CMIP6情景进行降尺度分析,特别是在干旱地区。降尺度分析表明,在中等情景(SSP4.5)下,与历史时期相比,未来(2015 - 2100年)最高和最低气温预计将分别上升4.8°C和4.0°C。同时,在化石燃料驱动发展情景(SSP8.5)下,经CNNSD分析,这些数值将分别上升6.3°C和4.2°C。所开发的方法不仅可以在埃及使用,也可用于其他特别易受气候变化影响且相关研究匮乏的发展中国家。所建立的降尺度方法可用于提供气候服务,作为影响研究和适应决策的驱动因素,以及政策制定的信息。然而,还需要更多研究纳入多个GCM,以量化GCM和SSP之间的不确定性,改进用于气候变化影响以及粮食和营养安全适应的输出结果。