Storm surge time series de-clustering using correlation analysis

IF 6.1 1区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES Weather and Climate Extremes Pub Date : 2024-06-01 DOI:10.1016/j.wace.2024.100701
Ariadna Martín , Thomas Wahl , Alejandra R. Enriquez , Robert Jane
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Abstract

The extraction of individual events from continuous time series is a common challenge in many extreme value studies. In the field of environmental science, various methods and algorithms for event identification (de-clustering) have been applied in the past. The distinctive features of extreme events, such as their temporal evolutions, durations, and inter-arrival times, vary significantly from one location to another making it difficult to identify independent events in the series. In this study, we propose a new automated approach to detect independent events from time series, by identifying the standard event duration across locations using event correlations. To account for the inherent variability at a given site, we incorporate the standard deviation of the event duration through a soft-margin approach. We apply the method to 1 485 tide gauge records from across the global coast to gain new insights into the typical durations of independent storm surges along different coastline stretches. The results highlight the effects of both local characteristics at a given tide gauge and seasonality on the derived storm durations. Additionally, we compare the results obtained with other commonly used de-clustering techniques showing that these methods are more sensitive to the chosen threshold.

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利用相关性分析对风暴潮时间序列进行去聚类分析
从连续时间序列中提取单个事件是许多极值研究面临的共同挑战。在环境科学领域,过去曾应用过各种事件识别(去聚类)的方法和算法。极端事件的显著特征,如时间演化、持续时间和到达时间,在不同地点有很大差异,因此很难识别序列中的独立事件。在本研究中,我们提出了一种新的自动方法,通过使用事件相关性来识别不同地点的标准事件持续时间,从而从时间序列中检测出独立事件。为了考虑特定地点的固有变异性,我们通过软边际方法纳入了事件持续时间的标准偏差。我们将该方法应用于全球海岸线上的 1 485 个验潮记录,从而对不同海岸线上独立风暴潮的典型持续时间有了新的认识。结果凸显了特定验潮仪的局部特征和季节性对得出的风暴持续时间的影响。此外,我们还将获得的结果与其他常用的去聚类技术进行了比较,结果表明这些方法对所选阈值更为敏感。
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来源期刊
Weather and Climate Extremes
Weather and Climate Extremes Earth and Planetary Sciences-Atmospheric Science
CiteScore
11.00
自引率
7.50%
发文量
102
审稿时长
33 weeks
期刊介绍: Weather and Climate Extremes Target Audience: Academics Decision makers International development agencies Non-governmental organizations (NGOs) Civil society Focus Areas: Research in weather and climate extremes Monitoring and early warning systems Assessment of vulnerability and impacts Developing and implementing intervention policies Effective risk management and adaptation practices Engagement of local communities in adopting coping strategies Information and communication strategies tailored to local and regional needs and circumstances
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