降水
事件(粒子物理)
极值理论
气候变化
极端天气
仰角(弹道)
构造盆地
空间生态学
环境科学
同步(交流)
复杂网络
共同空间格局
计算机科学
气候学
地理
气象学
地质学
生态学
统计
数学
频道(广播)
万维网
物理
古生物学
海洋学
生物
量子力学
计算机网络
几何学
作者
Ankit Agarwal,Ravi Kumar Guntu,Abhirup Banerjee,Mayuri Ashokrao Gadhawe,Norbert Marwan
出处
期刊:Chaos
[American Institute of Physics]
日期:2022-01-01
卷期号:32 (1): 013113-013113
被引量:30
摘要
The quantification of spatial propagation of extreme precipitation events is vital in water resources planning and disaster mitigation. However, quantifying these extreme events has always been challenging as many traditional methods are insufficient to capture the nonlinear interrelationships between extreme event time series. Therefore, it is crucial to develop suitable methods for analyzing the dynamics of extreme events over a river basin with a diverse climate and complicated topography. Over the last decade, complex network analysis emerged as a powerful tool to study the intricate spatiotemporal relationship between many variables in a compact way. In this study, we employ two nonlinear concepts of event synchronization and edit distance to investigate the extreme precipitation pattern in the Ganga river basin. We use the network degree to understand the spatial synchronization pattern of extreme rainfall and identify essential sites in the river basin with respect to potential prediction skills. The study also attempts to quantify the influence of precipitation seasonality and topography on extreme events. The findings of the study reveal that (1) the network degree is decreased in the southwest to northwest direction, (2) the timing of 50th percentile precipitation within a year influences the spatial distribution of degree, (3) the timing is inversely related to elevation, and (4) the lower elevation greatly influences connectivity of the sites. The study highlights that edit distance could be a promising alternative to analyze event-like data by incorporating event time and amplitude and constructing complex networks of climate extremes.
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