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表征多尺度全球高影响天气事件的动态变化。

Characterizing the dynamics of multi-scale global high impact weather events.

作者信息

Frank Lawrence R, Galinsky Vitaly L, Zhang Zhenhai, Ralph F Martin

机构信息

Center for Scientific Computation in Imaging, University of California at San Diego, La Jolla, CA, 92037-0854, USA.

Center for Western Weather and Water Extremes, University of California at San Diego, La Jolla, CA, 92093-0854, USA.

出版信息

Sci Rep. 2024 Aug 15;14(1):18942. doi: 10.1038/s41598-024-67662-x.

Abstract

The quantitative characterization and prediction of localized severe weather events that emerge as coherences generated by the highly non-linear interacting multivariate dynamics of global weather systems poses a significant challenge whose solution is increasingly important in the face of climate change where weather extremes are on the rise. As weather measurement systems (multiband satellite, radar, etc) continue to dramatically improve, increasingly complex time-dependent multivariate 3D datasets offer the potential to inform such problems but pose an increasingly daunting computational challenge. Here we describe the application to global weather systems of a novel computational method called the Entropy Field Decomposition (EFD) capable of efficiently characterizing coherent spatiotemporal structures in non-linear multivariate interacting physical systems. Using the EFD derived system configurations, we demonstrate the application of a second novel computational method called Space-Time Information Trajectories (STITs) that reveal how spatiotemporal coherences are dynamically connected. The method is demonstrated on the specific phenomenon known as atmospheric rivers (ARs) which are a prime example of a highly coherent, in both space and time, severe weather phenomenon whose generation and persistence are influenced by weather dynamics on a wide range of spatial and temporal scales. The EFD reveals how the interacting wind vector field and humidity scalar field couple to produce ARs, while the resulting STITS reveal the linkage between ARs and large-scale planetary circulations. The focus on ARs is also motivated by their devastating social and economic effects that have made them the subject of increasing scientific investigation to which the EFD may offer new insights. The application of EFD and STITs to the broader range of severe weather events is discussed.

摘要

局部恶劣天气事件的定量表征和预测是由全球天气系统高度非线性相互作用的多变量动力学产生的相干性所引发的,这带来了重大挑战。面对极端天气事件不断增加的气候变化,解决这一挑战变得越发重要。随着天气测量系统(多波段卫星、雷达等)持续显著改进,日益复杂的随时间变化的多变量三维数据集为解决此类问题提供了可能,但也带来了日益艰巨的计算挑战。在此,我们描述了一种名为熵场分解(EFD)的新型计算方法在全球天气系统中的应用,该方法能够有效表征非线性多变量相互作用物理系统中的相干时空结构。利用基于EFD得出的系统配置,我们展示了另一种名为时空信息轨迹(STITs)的新型计算方法的应用,该方法揭示了时空相干性是如何动态连接的。该方法在一种被称为大气河流(ARs)的特定现象上得到了验证,大气河流是一种在时空上高度相干的恶劣天气现象的典型例子,其生成和持续受到广泛时空尺度上的天气动力学影响。EFD揭示了相互作用的风矢量场和湿度标量场如何耦合产生大气河流,而由此产生的STITs则揭示了大气河流与大规模行星环流之间的联系。对大气河流的关注还源于它们具有的破坏性社会和经济影响,这使得它们成为越来越多科学研究的对象,而EFD可能会为此提供新的见解。我们还讨论了EFD和STITs在更广泛的恶劣天气事件中的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/15f4/11327345/882f82b00fa4/41598_2024_67662_Fig9_HTML.jpg

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