中国中东部降水空间不均匀性的量化研究

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Hydrometeorology Pub Date : 2023-11-01 DOI:10.1175/jhm-d-22-0240.1
Jian Li, Rucong Yu, Xiaoyuan Yue, Mingming Zhang, Nina Li
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引用次数: 0

摘要

空间不均匀性,特别是局部不均匀性,是降水的一个关键特征,有可能成为衡量高分辨率模式性能的一个指标。本文提出了一个局地不均匀指数(LUI)来量化中国中东部地区降水的非均质性。局地降水的不均匀性主要受局地地形的影响,高路易度在空间上对应高局地地形起伏度。沿30°N方向,LUI与局部地形起伏的相关系数达到0.893。将降水增强大、梯度陡的台站称为局部极大值台站。根据不同尺度地形的不同影响,将59个LM站点划分为高海拔组、边缘组和东部孤立山组。3个类群降水随海拔的分布呈现出不同的格局:高海拔类群为双峰型,边缘类群为低海拔型,东部孤立山群为高海拔型。各类群的季节变化均表现为暖(冷)季高(低)海拔降水相对较多。在暖(冷)季,高海拔组随海拔高度的增加(减少)频率总体呈增加(减少)趋势。边缘(东部孤山)群的低(高)空频率峰值在冷(暖)季更为突出。LUI和LM可以作为直接和量化的指标来衡量高分辨率模式在再现降水局地尺度特征及其季节变化方面的表现。本研究的目的是促进对局地尺度降水不均匀性的认识。这对水文过程和水资源管理很重要。利用LUI和LM量化局地尺度降水的空间不均匀性,进一步分析中国中东部降水不均匀性的气候特征和季节变化。这些指标可以作为定量标准来评价高分辨率模型的性能。
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Quantifying the spatial unevenness of precipitation in central and eastern China
Abstract Spatial unevenness, especially local unevenness, is a key characteristic of precipitation and has the potential to be a metric to gauge the performance of high-resolution models. In this paper, a local unevenness index (LUI) is proposed to quantify the heterogeneity of precipitation in central and eastern China. The local unevenness of precipitation is dominantly influenced by local topography, and high LUIs spatially correspond to high local terrain relief. Along 30°N, the correlation coefficient between the LUI and local relief reaches 0.893. Stations with large enhancement and steep gradients in precipitation are identified as local maximum (LM) stations. According to the distinct impacts of various scales of terrain, all 59 LM stations are categorized into three groups: the high-elevation group, the edge group, and the eastern isolated-mountain group. The three groups present different distributions of precipitation with altitude: a double-peak pattern in the high-elevation group, a low-altitude peak in the edge group, and a high-altitude peak in the eastern isolated-mountain group. The seasonal variations in all groups are characterized by relatively more precipitation occurring at higher (lower) elevations in the warm (cold) season. The high-elevation group shows a general increasing (decreasing) frequency tendency with altitude in the warm (cold) season. The low-altitude (high-altitude) frequency peak in the edge (eastern isolated-mountain) group is more prominent in the cold (warm) season. The LUI and LM can be used as straightforward and quantified metrics to measure the performance of high-resolution models in reproducing the local-scale features of precipitation and their seasonal variations. Significance Statement The purpose of this study is to promote the knowledge of precipitation unevenness on a local scale. This is important to hydrological processes and water resource management. Our results provide LUI and LM to quantify the spatial unevenness of precipitation on a local scale and further analyze the climatic characteristics and the seasonal variations of precipitation unevenness over central and eastern China. These metrics can be used as quantitative criteria to evaluate the performance of high-resolution models.
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来源期刊
Journal of Hydrometeorology
Journal of Hydrometeorology 地学-气象与大气科学
CiteScore
7.40
自引率
5.30%
发文量
116
审稿时长
4-8 weeks
期刊介绍: The Journal of Hydrometeorology (JHM) (ISSN: 1525-755X; eISSN: 1525-7541) publishes research on modeling, observing, and forecasting processes related to fluxes and storage of water and energy, including interactions with the boundary layer and lower atmosphere, and processes related to precipitation, radiation, and other meteorological inputs.
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