墨西哥南部和东南部降水的统计缩减

IF 3 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Climate Pub Date : 2023-09-08 DOI:10.3390/cli11090186
M. Andrade-Velázquez, M. J. Montero-Martínez
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引用次数: 0

摘要

CMIP6框架内全球气候建模取得的进展显著提高了模型性能,特别是在空间分辨率方面。然而,对精细技术的持续要求,如动态或统计缩小规模的方法,仍然很明显,特别是在降水变化的背景下。本研究的重点是将偏差校正技术(分位数映射)系统应用于四个指定的CMIP6模型:CNRM-ESM2-6A、IPSL-CM6A-LR、MIROC6和MRI-ESM2-0。这些模型的选择是基于先前在墨西哥南部-东南部地区进行的研究的系统方法。采用了多种绩效评估指标,包括均方根差(rmsd)、归一化标准差(NSD)、偏差和皮尔逊相关性(如泰勒图所示)。研究区域分为两个不同的区域:墨西哥南部和东南部地区,包括塔巴斯科和恰帕斯州,以及尤卡坦半岛。研究结果强调了在整个研究领域通过偏差校正实现的模型性能的显著改善。rmsd和NSD的结果不仅表现出不同气候模型之间的差异,而且表现出对所研究的特定地理区域的敏感性。在南部地区,CNRM-ESM2-1成为偏差校正后最熟练的模型。在东南部地区,仅包括塔巴斯科和恰帕斯州,经过偏差校正后,最优模型再次为CNRM-ESM2-1。然而,对于尤卡坦半岛,IPSL-CM6A-LR模型产生了最有利的结果。这项研究强调了量身定制的偏差校正技术在改进气候模型性能方面的重要性,并强调了研究区域不同地理区域内不同模型在空间上的细微反应。
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Statistical Downscaling of Precipitation in the South and Southeast of Mexico
The advancements in global climate modeling achieved within the CMIP6 framework have led to notable enhancements in model performance, particularly with regard to spatial resolution. However, the persistent requirement for refined techniques, such as dynamically or statistically downscaled methods, remains evident, particularly in the context of precipitation variability. This study centered on the systematic application of a bias-correction technique (quantile mapping) to four designated CMIP6 models: CNRM-ESM2-6A, IPSL-CM6A-LR, MIROC6, and MRI-ESM2-0. The selection of these models was informed by a methodical approach grounded in previous research conducted within the southern–southeastern region of Mexico. Diverse performance evaluation metrics were employed, including root-mean-square difference (rmsd), normalized standard deviation (NSD), bias, and Pearson’s correlation (illustrated by Taylor diagrams). The study area was divided into two distinct domains: southern Mexico and the southeast region covering Tabasco and Chiapas, and the Yucatan Peninsula. The findings underscored the substantial improvement in model performance achieved through bias correction across the entire study area. The outcomes of rmsd and NSD not only exhibited variations among different climate models but also manifested sensitivity to the specific geographical region under examination. In the southern region, CNRM-ESM2-1 emerged as the most adept model following bias correction. In the southeastern domain, including only Tabasco and Chiapas, the optimal model was again CNRM-ESM2-1 after bias-correction. However, for the Yucatan Peninsula, the IPSL-CM6A-LR model yielded the most favorable results. This study emphasizes the significance of tailored bias-correction techniques in refining the performance of climate models and highlights the spatially nuanced responses of different models within the study area’s distinct geographical regions.
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来源期刊
Climate
Climate Earth and Planetary Sciences-Atmospheric Science
CiteScore
5.50
自引率
5.40%
发文量
172
审稿时长
11 weeks
期刊介绍: Climate is an independent, international and multi-disciplinary open access journal focusing on climate processes of the earth, covering all scales and involving modelling and observation methods. The scope of Climate includes: Global climate Regional climate Urban climate Multiscale climate Polar climate Tropical climate Climate downscaling Climate process and sensitivity studies Climate dynamics Climate variability (Interseasonal, interannual to decadal) Feedbacks between local, regional, and global climate change Anthropogenic climate change Climate and monsoon Cloud and precipitation predictions Past, present, and projected climate change Hydroclimate.
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