从全球到区域尺度对若干气候变量和极端指数未来变化的新制约因素

IF 1.7 4区 地球科学 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Sola Pub Date : 2024-03-12 DOI:10.2151/sola.2024-017
Hideo Shiogama, Michiya Hayashi, Nagio Hirota, Tomoo Ogura
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引用次数: 0

摘要

气候变化影响建模研究通常不仅需要平均气温和降水量,还需要其他气候变量(如太阳辐射和风速)和极端指数作为输入数据。然而,有关这些变量和指数的观测制约因素(突发制约因素)的研究十分有限。根据未来气候变化与全球变暖水平的线性关系,以及 40 个地球系统模式(ESM)模拟的近期全球平均气温趋势的偏差,成功地降低了全球大部分地区各种变量(年平均气温、年最大日最高气温、平均比湿度、平均向下长波辐射和年最大日降水量(Rx1 天)事件发生日的比湿度)未来变化的不确定性上限。我们还可以减少某些地区平均降水量、Rx1 天、平均向下短波辐射、平均海平面气压和平均地面风速的区域变化模型间差异。这些结果将有助于气候变化影响研究,以考虑是否应增加 ESM 的权重或排除某些 ESM,从而防止影响评估中可能出现的偏差。
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Emergent constraints on future changes in several climate variables and extreme indices from global to regional scales

Climate change impact modelling studies often require not only mean temperature and precipitation but also other climate variables (e.g., solar radiation and wind speed) and extreme indices as input data. However, studies on observational constraints (emergent constraints) about these variables and indices are limited. Based on linearities of future climate change as functions of global warming levels and biases in recent global mean temperature trends in the simulations of 40 Earth system models (ESMs), the upper bounds of uncertainties in future changes of various variables (annual mean temperature, annual maximum daily maximum temperature, mean specific humidity, mean downward longwave radiation and specific humidity on days when annual maximum daily precipitation (Rx1day) events occur) are successfully lowered in most regions of the world. We can also reduce inter-model variances of regional changes in mean precipitation, Rx1day, mean downward shortwave radiation, mean sea level pressure and mean surface wind speed in some areas. These results would be useful for climate change impact studies to consider whether they should weight ESMs or exclude some ESMs to prevent possible biases in impact assessments.

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来源期刊
Sola
Sola 地学-气象与大气科学
CiteScore
3.50
自引率
21.10%
发文量
41
审稿时长
>12 weeks
期刊介绍: SOLA (Scientific Online Letters on the Atmosphere) is a peer-reviewed, Open Access, online-only journal. It publishes scientific discoveries and advances in understanding in meteorology, climatology, the atmospheric sciences and related interdisciplinary areas. SOLA focuses on presenting new and scientifically rigorous observations, experiments, data analyses, numerical modeling, data assimilation, and technical developments as quickly as possible. It achieves this via rapid peer review and publication of research letters, published as Regular Articles. Published and supported by the Meteorological Society of Japan, the journal follows strong research and publication ethics principles. Most manuscripts receive a first decision within one month and a decision upon resubmission within a further month. Accepted articles are then quickly published on the journal’s website, where they are easily accessible to our broad audience.
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