大气河流季节性的区域和时间变化:探测算法和水汽输送动力学的影响

IF 3.8 2区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Diya Kamnani, Travis A. O’Brien, Samuel Smith, Paul W. Staten, Christine A. Shields
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引用次数: 0

摘要

了解大气河流(AR)季节性的区域和时间变化对极端事件的防备和缓解至关重要。虽然ar被认为在冬季达到峰值,但最近的研究表明,它们表现出特定区域的季节性,并受到所选择的检测算法的严重影响。本研究考察了在考虑位置和算法选择的情况下,峰值ar活动的年-年一致性与主要季节性模式之间的联系。区域按其时间特征分类:一致的模式(如东亚),偶尔有异常值的模式(如不列颠哥伦比亚省海岸),以及缺乏明确的主导高峰季节的地区(如南大西洋,澳大利亚部分地区)。因此,并不是所有地区都表现出一致的季节性AR活动周期。该研究量化了一个地区经历(或缺乏)AR活动主导旺季的程度,并为加强水管理、自然灾害防范和预测方面的决策提供了见解。此外,鉴于我们发现检测算法会影响AR活动的旺季,我们还研究了代表水分输送的两个诊断变量来证实我们的结果。研究了捕获经向和纬向水汽输送的综合水汽输送和代表从低纬度到高纬度水汽侵入的湿波活动。我们的分析表明,AR活动季节周期的不一致性不仅是由于检测算法的差异,还源于水分输送的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Regional and Temporal Variability of Atmospheric River Seasonality: Influences of Detection Algorithms and Moisture Transport Dynamics

Regional and Temporal Variability of Atmospheric River Seasonality: Influences of Detection Algorithms and Moisture Transport Dynamics

Understanding the regional and temporal variability of atmospheric river (AR) seasonality is crucial for preparedness and mitigation of extreme events. While ARs were thought to peak in winter, recent research shows they exhibit region-specific seasonality and are heavily influenced by the chosen detection algorithm. This study examines the link between the year-to-year consistency of peak-AR activity to the presence of a dominant seasonal pattern, considering both location and algorithm choice. Regions are categorized by their temporal characteristics: consistent patterns (e.g., East Asia), patterns with occasional outliers (e.g., British Columbia coast), and regions lacking a clear dominant peak season (e.g., South Atlantic, parts of Australia). Hence, not all regions display a consistent seasonal cycle of AR activity. This study quantifies the extent to which a region experiences a dominant peak season of AR activity (or lacks one) and offers insights to enhance decision-making in water management, natural hazard preparedness, and forecasting. Furthermore, given our finding that detection algorithms influence the peak season of AR activity, we also examine two diagnostic variables representative of moisture transport to corroborate our results. Integrated vapor transport, which captures meridional and zonal moisture transport, and Moist Wave Activity, representing moisture intrusions from lower to higher latitudes, are examined. Our analysis indicates that inconsistencies in the seasonal cycle of AR activity are not solely due to discrepancies in detection algorithms but also arise from changes in moisture transport.

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来源期刊
Journal of Geophysical Research: Atmospheres
Journal of Geophysical Research: Atmospheres Earth and Planetary Sciences-Geophysics
CiteScore
7.30
自引率
11.40%
发文量
684
期刊介绍: JGR: Atmospheres publishes articles that advance and improve understanding of atmospheric properties and processes, including the interaction of the atmosphere with other components of the Earth system.
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