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http://dx.doi.org/10.21729/ksds.2020.13.3.15

Analysis of Statistical Characteristics of Annual Precipitation in Korea Using Data Screeening Technique  

Jeung, Se-Jin (Climate Disaster Big Data Center, Kangwon Institute of Inclusive Technoligy, Kangwon National University)
Lim, Ga-Kyun (Disaster Prevention Department, Kyongbo Engineering co.LTD)
Kim, Byung-Sik (Department of Urban & Environmental Disaster Prevention Engineering, Kangwon National University)
Publication Information
Journal of Korean Society of Disaster and Security / v.13, no.3, 2020 , pp. 15-28 More about this Journal
Abstract
Hydrological data is very important in understanding the hydrological process and identifying its characteristics to protect human life and property from natural disasters. In particular, hydrological analysis are often performed assuming that hydrological data are stationary. However, recently climate change has raised the issue of climate stationary, and it is necessary to analyze the nonstationary of the climate. In this study, a method to analyze the stationarity of hydrological data was examined using the annual precipitation of 37 meteorological stations with long - term record data. Therefore, in this study, the stationary was determined by analyzing the persistence, trend, and stability using annual precipitation. Overall results showed that a trend was observed in 4 out of 37 stations, stable was investigated at 15 stations, and persistence was shown at 4 stations. In the stationary analysis using the annual precipitation data, 25 stations (67% of 37 stations) were nonstationary.
Keywords
Stationary; Hydrological data; Trend; Stable; Persistence;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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