伊朗哈马丹省大气-海洋环流模式不确定性下的气候变化影响管理

Mehdi Ahmadi, G. Azizi, S. Bazgir, M. Hemmati
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摘要

简介:伊朗地处半干旱区,面临干旱、沙尘危机、移民加剧等问题。气候变化影响的评估包括确定用于估计其影响的不确定性的一些关键方面,例如大气-海洋环流模式(AOGCMs)背景下的不确定性:区域尺度气候学、统计或动态降尺度方法中的不确定性,以及不同模式中的参数和结构不确定性。气候变化不确定性的最重要来源之一是使用不同的aogcm,这些aogcm对气候变量产生不同的输出。方法:在本研究中,为了研究AOGCM模型的不确定性,从NASA网站下载了伊朗哈马丹省81个细胞的21个AOGCM中获得的NASA地球交换全球每日降尺度预测数据集的中代表性浓度路径4.5情景数据。对模型进行验证后,以确定系数和模型效率系数为标准,与1976-2005年统计期哈马丹天气站资料进行比较。为了降低aogcm的不确定性,在Climate Data Operators软件中使用了模型的集成性能(ensemble performance, EP)。结果:MRI-CGCM3、MPI-ESM-LR、BNU-ESM、ACCESS1-0、microc - esm、microc - esm - chem、MPI-ESM-MR等模型均优于同类模型。IPSL-CM5A-LR、CNRM-CM5、CSIRO-Mk3-6-0、CESM1-BGC和GFDL-ESM2M的月平均降水观测资料与模拟资料的相关性最低。结论:该方法在基期(1976-2005年)与哈马丹天气站资料相比,能提供较好的估算值,且优于各AOGCM模式的单一实现方法。未来一段时间(2020-2049年)模式EP结果显示,未来降水变化不大,将增加0.23 mm。年平均气温、最高气温和最低气温将分别上升1.54℃、1.7℃和1.40℃。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Climate change effects Management with the approach of the uncertainty of Atmosphere-Ocean General Circulation Models in Hamadan Province, Iran
INTRODUCTION: Since Iran is located in the semi-arid belt, it has faced such issues as drought, dust crisis, and intensified migration. The assessment of the effects of climate change includes identifying some key aspects of uncertainties used to estimate its impacts, such as uncertainties in the context of Atmosphere-Ocean General Circulation Models (AOGCMs): in regional-scale climatology, in statistical or dynamic downscaling methods, and parametric and structural uncertainties in different models. One of the most important sources of uncertainty in climate change is the use of different AOGCMs that produce different outputs for climate variables. METHODS: In this study, to investigate the uncertainty of AOGCM models, the downscaled data of the NASA Earth Exchange Global Daily Downscaled Projections dataset obtained from 21 AOGCMs with medium Representative Concentration Pathway4.5 scenario were downloaded from the NASA site for 81 cells in Hamadan Province, Iran. After the validation of the models, they were evaluated against the criteria of the coefficient of determination and model efficiency coefficient in comparison with the data of the Hamedan synoptic station in the statistical period of 1976-2005. To reduce the uncertainty of AOGCMs, the ensemble performance (EP) of models was used in Climate Data Operators software. FINDINGS: It was revealed that MRI-CGCM3, MPI-ESM-LR, BNU-ESM, ACCESS1-0, MIROC-ESM, MIROC-ESM-CHEM, and MPI-ESM-MR models had better performance than similar models. It was also found that IPSL-CM5A-LR, CNRM-CM5, CSIRO-Mk3-6-0, CESM1-BGC, and GFDL-ESM2M had the lowest correlation between observational and simulation data of mean monthly precipitation. CONCLUSION: According to the results, this method could provide a good estimate in the base period (1976-2005), compared to the data of the Hamedan synoptic station, and was more accurate compared to the single implementation method of each AOGCM model. The results of EP of models in the future period (2020-2049) showed that precipitation will not change considerably in the future and will increase by 0.23 mm. In addition, the average, maximum, and minimum annual temperatures will increase by 1.54°C, 1.7°C, and 1.40°C, respectively.
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