The Standardized Vertical Velocity Anomaly Index (SVVAI): Using Atmospheric Dynamical Anomalies to Simulate and Predict Meteorological Droughts

Zhenchen Liu, Hai He, Zhiyong Wu, G. Lu, Hao Yin
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引用次数: 1

Abstract

Abstract. Vertically downward motion of air current is physically drought-inducing, which has the potential of being a simple and universal drought indicator. The core objective of the present study is to employ vertical motion to simulate and predict droughts after investigating dynamically drought-inducing mechanism. Season-scale drought processes and spatial distributions during 2009–2016 are our concerns, and all the drought study regions of China were chosen as the research areas. Three-month SPI (SPI3) updated daily was used to identify drought processes, and original vertical motion and associated horizontal divergence were also transformed to season-scale standardized anomalies (SA) with a daily running window. In situ observation, ERA-Interim reanalysis, and CFSv2 forecast products were comprehensively employed for drought simulation and prediction. To date, the main results and conclusions are as follow: (1) Atmospheric dynamical anomalies during drought processes and key phases were uncovered. Dynamically drought-inducing features are generally characterized as the typically anomalous upper-convergence–lower-divergence patterns and the intensified downward vertical motion as expected. Signal intensities and vertical configurations are time-varying and seemingly coincide with evolution of regional processes. Particularly, vertical velocity exhibited universally strengthened downward anomalies over almost all the droughts. (2) On the basis of dynamically vertical features uncovered above, the SVVAI (Standardized Vertical Velocity Anomaly Index) is newly proposed. The SVVAI is calculated using SA-based values of vertical motion at multiple pressure levels in the troposphere. The SVVAI_ave and SVVAI_max, corresponding to the vertically average- and maximum-based computation schemes, can be adopted. (3) Drought processes and spatial distributions were simulated with the SVVAI_ave and SVVAI_max. They commonly show highly positive correlations with realistic ones over most regions, and the SVVAI_ave outperformed the SVVAI_max. (4) To further understand difference of simulation capacity, temporal correlation coefficients (TCC) of the SVVAI_ave against observed SPI3 at the grid scale were used for analysis. Positive TCCs above +0.3 occupies most areas to the east of 110° E, while large-area low TCCs (−0.1 ~ +0.3) appear to the west of 110° E over China. It is notably seen that East China and Northeast China are the two regions with highly positive TCCs (+0.6 ~ +0.8). (5) Drought prediction using the SVVAI_ave was preliminarily explored. Regarding the prospective 60-day process prediction, the predicted SVVAI_ave was equally matched with or a little better than the forecasted SPI3 in most cases. Predicted spatial distribution is preliminarily assessed via the example of the 2011 summer–autumn drought over Southwest China, and prediction performance at the occurrence, peak and termination times are inconsistent. (6) Overall, the novel SVVAI herein may be complementary to current approaches of operational drought monitoring and prediction. Further study could be focused on the two following aspects: One is index applicability, that is to say, to explore when and where the predicted SVVAI outperforms the forecasted SPI3. The other is to further explore antecedent drought-inducing signals of atmospheric/oceanic anomalies with the bridge of vertical motion, which may provide a fundamental approach for drought prediction with long lead times.
标准化垂直速度异常指数(SVVAI):利用大气动力异常模拟和预测气象干旱
摘要垂直向下的气流运动具有物理上的干旱诱导作用,有可能成为一种简单而普遍的干旱指标。本研究的核心目标是在动态研究干旱诱导机制的基础上,利用垂直运动来模拟和预测干旱。以2009-2016年中国所有干旱研究区为研究区,研究了季节尺度的干旱过程及其空间分布特征。利用日更新的3个月SPI (SPI3)识别干旱过程,并将原始垂直运动和相关水平辐散转化为具有日运行窗口的季节尺度标准化异常(SA)。综合利用现场观测、ERA-Interim再分析和CFSv2预报产品进行干旱模拟与预测。主要研究结果和结论如下:(1)揭示了干旱过程和关键阶段的大气动力异常。动态干旱诱导特征一般表现为典型的高辐合-低辐散异常模式和预期的垂直向下运动加剧。信号强度和垂直结构是时变的,似乎与区域过程的演变一致。特别是垂直速度在几乎所有干旱期间都表现出普遍增强的向下异常。(2)基于上述动态垂直特征,提出了标准化垂直速度异常指数(SVVAI)。SVVAI是使用基于sa的对流层多个气压水平的垂直运动值计算的。可采用SVVAI_ave和SVVAI_max分别对应垂直平均和最大值计算方案。(3)利用SVVAI_ave和SVVAI_max模拟干旱过程及其空间分布。在大多数地区,它们通常与实际值表现出高度正相关,并且SVVAI_max的表现优于SVVAI_max。(4)为了进一步了解模拟能力的差异,利用栅格尺度下SVVAI_ave与SPI3观测值的时间相关系数(TCC)进行分析。+0.3以上的tcc正分布在110°E以东大部分地区,而在110°E以西出现大面积的低tcc(- 0.1 ~ +0.3)。值得注意的是,中国东部和东北地区是tcc高度阳性的两个地区(+0.6 ~ +0.8)。(5)对利用SVVAI_ave进行干旱预测进行了初步探索。对于未来60天的过程预测,在大多数情况下,预测的SVVAI_ave与预测的SPI3相当或略好。以2011年西南地区夏秋干旱为例,初步评价了预测的空间分布,在发生时间、高峰时间和结束时间上的预测效果不一致。(6)总体而言,本文提出的新型SVVAI可能是对当前业务干旱监测和预测方法的补充。进一步的研究可以集中在以下两个方面:一是指标适用性,即探究预测的SVVAI何时何地优于预测的SPI3。二是进一步探索以垂直运动为桥梁的大气/海洋异常诱发干旱的前兆信号,为长预警时间的干旱预报提供基础途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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