首页> 外文OA文献 >Downscaling Climate and Vegetation Variability Associated with Global Climate Signals: a new Statistical Approach Applied to the Colorado River Basin
【2h】

Downscaling Climate and Vegetation Variability Associated with Global Climate Signals: a new Statistical Approach Applied to the Colorado River Basin

机译:与全球气候信号相关的气候和植被变异性的缩减:一种应用于科罗拉多河流域的新统计方法

摘要

This research presents a new multivariate statistical approach to downscale hydroclimatic variables associated with global climate signals, from low-resolution Global Climate Models (GCMs) to high-resolution grids that are appropriate for regional and local hydrologic analysis. The approach uses Principal Component Analysis (PCA) and Multichannel Singular Spectrum Analysis (MSSA) to: 1) evaluate significant variation modes among global climate signals and spatially distributed hydroclimatic variables within certain spatial domain; 2) downscale the GCMs' projections of the hydroclimatic variables using these significant modes of variation and 3) extend the results to other correlated variables in the space domain. The approach is applied to the Colorado River Basin to determine common oscillations among observed precipitation and temperature patterns in the basin and the global climate signals El Nino Southern Oscillation (ENSO) and Pacific Decadal Oscillation (PDO). These common oscillations serve as a basis to perform the downscaling of ENSO-related precipitation and temperature projections from GCMs, using a new gap-filling algorithm based on MSSA. The analysis of spatial and temporal correlations between observed precipitation, temperature and vegetation activity (represented by the Normalized Difference Vegetation Index, NDVI) is used to extend the downscaling of precipitation to vegetation responses in ten ecoregions within the basin. Results show significant common oscillations of five and 15-year between ENSO, PDO and annual precipitation in the basin, with wetter years during common ENSO and PDO positive phases and dryer years during common negative phases. Precipitation also shows an increase in variability in the last 20 years of record. Highly correlated responses between seasonally detrended NDVI and precipitation were also identified in each ecoregion, with distinctive delays in vegetation response ranging from one month in the southern deserts (in the fringe of the monsoon precipitation regime), to two months in the mid latitudes and three months to the north, affected by seasonal precipitation. These results were used to downscale precipitation and temperature from two GCMs that perform well in the basin and have a distinctive ENSO-like signal (MPI-ECHAM5 and UKMO-HADCM3) and to extend the downscaling to estimate vegetation responses based on their significant correlations with precipitation.
机译:这项研究提出了一种新的多元统计方法,用于处理与全球气候信号相关的下尺度水文气候变量,从低分辨率的全球气候模型(GCM)到适用于区域和地方水文学分析的高分辨率网格。该方法使用主成分分析(PCA)和多通道奇异频谱分析(MSSA)来:1)评估全球气候信号和某些空间域内空间分布的水文气候变量之间的显着变化模式; 2)使用这些重要的变化模式降低GCM对水文气候变量的预测,并3)将结果扩展到空间域中的其他相关变量。该方法应用于科罗拉多河流域,以确定该流域观测到的降水和温度模式以及全球气候信号厄尔尼诺南方涛动(ENSO)和太平洋年代际涛动(PDO)之间的常见振荡。这些常见的振荡是使用新的基于MSSA的间隙填充算法来进行ENSO相关降水和GCM降温预测的基础。通过分析观测到的降水,温度和植被活动之间的时空相关性(用归一化植被指数,NDVI表示),可以将降水的缩减范围扩展到流域内十个生态区的植被响应。结果表明,ENSO,PDO和流域年降水量之间存在显着的5年和15年共同振荡,在ENSO和PDO的正相期间湿润的年份,在负的相干季节干燥的年份。在最近20年的记录中,降水量也显示出变异性增加。在每个生态区中,还确定了季节性趋势NDVI与降水之间的高度相关响应,植被响应的显着延迟从南部沙漠中的一个月(季风降水区的边缘)到中纬度的两个月到三个月不等。北部几个月受季节性降水的影响。这些结果用于降低两个GCM的降水和温度的比例,这些GCM在盆地表现良好,并具有独特的类ENSO信号(MPI-ECHAM5和UKMO-HADCM3),并根据与植被之间的显着相关性,扩展了比例尺以估算植被响应。沉淀。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号