...
首页> 外文期刊>Journal of hydrometeorology >Seasonal Precipitation Predictability for the Northern Hemisphere Using Concurrent and Preseason Atmospheric Water Vapor Transport and Sea Surface Temperature
【24h】

Seasonal Precipitation Predictability for the Northern Hemisphere Using Concurrent and Preseason Atmospheric Water Vapor Transport and Sea Surface Temperature

机译:北半球使用并发和季前赛大气水蒸气运输和海表面温度的季节降水可预测性

获取原文
获取原文并翻译 | 示例
           

摘要

Integrated atmospheric water vapor transport (IVT) is a determinant of global precipitation. In this paper, using the CERA-20C climate reanalysis dataset, we explore three questions in Northern Hemisphere precipitation for four seasons: 1) What is the covariability between the leading spatiotemporal modes of seasonal sea surface temperature (SST), the seasonal IVT, and the seasonal precipitation for the Northern Hemisphere? 2) How well can the leading spatial modes of seasonal precipitation be reconstructed from the leading modes of IVT and SST for the same season? 3) How well can the leading modes of precipitation for the next season be predicted from the leading modes of the current season's SST and IVT? Wavelet analyses identify covariation in the leading modes of seasonal precipitation and those of IVT and SST in the 2-8-yr band, with the highest amplitude in the March-May (MAM) season, and provide a firm physical explanation for the potential predictability. We find that a subset of the 10 leading principal components of the seasonal IVT and SST fields has significant trends in connections with seasonal precipitation modes, and provides an accurate statistical concurrent reconstruction and one-season-ahead forecast of the leading seasonal precipitation modes, thus providing a pathway to improving the understanding and prediction of precipitation extremes in the context of climate change attribution, seasonal and longer prediction, and climate change scenarios. The same-season reconstruction model can explain 76% of the variance, and the next-season forecast model can explain 58% variance of hemispheric precipitation on average.
机译:大气水汽综合输送(IVT)是全球降水的决定因素。本文利用CERA-20C气候再分析数据集,探讨了北半球四季降水的三个问题:1)季节性海表温度(SST)、季节性IVT和北半球季节性降水的主要时空模式之间的协变量是什么?2) 从同一季节的IVT和SST主导模式重建季节性降水的主导空间模式的能力如何?3) 根据本季SST和IVT的主导模式,下一季降水的主导模式预测得如何?小波分析识别了季节性降水的主要模式以及2-8年波段的IVT和SST的协变,其振幅在3-5月(MAM)季节最高,并为潜在的可预测性提供了坚实的物理解释。我们发现,季节性IVT和SST场的10个主要主成分中的一个子集与季节性降水模式具有显著的联系趋势,并提供了对主要季节性降水模式的准确统计并行重建和一个季度前预测,因此,在气候变化归因、季节性和长期预测以及气候变化情景的背景下,提供了一条改善对极端降水的理解和预测的途径。同一季节的重建模型可以解释76%的方差,下一季节的预测模型可以解释平均58%的半球降水方差。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

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