Articles | Volume 17, issue 13
https://doi.org/10.5194/amt-17-4121-2024
https://doi.org/10.5194/amt-17-4121-2024
Research article
 | 
12 Jul 2024
Research article |  | 12 Jul 2024

A clustering-based method for identifying and tracking squall lines

Zhao Shi, Yuxiang Wen, and Jianxin He

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Subject: Others (Wind, Precipitation, Temperature, etc.) | Technique: Remote Sensing | Topic: Data Processing and Information Retrieval
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Cited articles

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Cheng, L. Z., He, J. X., and Zeng, X. J.: Radar Echo Recognition of Squall Line based on Waveletand Hu Moment, Journal of Chengdu University of Informationtechnology, 32, 369–374, https://doi.org/10.16836/j.cnki.jcuit.2017.04.005, 2017. 
Dixon, M. and Wiener, G.: TITAN: Thunderstorm Identification, Tracking, Analysis, and Nowcasting – A Radar-based Methodology, J. Atmos. Ocean. Tech., 10, 785–797, https://doi.org/10.1175/1520-0426(1993)010<0785:TTITAA>2.0.CO;2, 1993. 
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Short summary
The squall line is a type of convective system. Squall lines are often associated with damaging weather, so identifying and tracking squall lines plays an important role in early meteorological disaster warnings. A clustering-based method is proposed in this article. It can identify the squall lines within the radar scanning range with an accuracy rate of 95.93 %. It can also provide the three-dimensional structure and movement tracking results for each squall line.