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http://dx.doi.org/10.5322/JESI.2022.31.1.87

Basic Data Advancement for Improving the Accuracy of Estimating the Damage Cost Caused by Strong Winds on the Korean Peninsula during Typhoon Periods  

Yun, Hee-Seong (Department of Atmospheric Environment Information Engineering/Atmospheric Environment Information Research Center, Inje University)
Jung, Woo-Sik (Department of Atmospheric Environment Information Engineering/Atmospheric Environment Information Research Center, Inje University)
Publication Information
Journal of Environmental Science International / v.31, no.1, 2022 , pp. 87-97 More about this Journal
Abstract
In this study, type analysis was conducted along with the advancement of basic data to calculate the maximum damage caused by strong winds during the typhoon period. The result of the damage by region showed that in 2012, the difference in damage was clearly distinguished as the region was classified in detail. In addition, the result of the annual damage in 2011 was strong on the west coast, and in 2016, the damage to the southeast coast was significant. In 2012, the 3-second gust was relatively stronger on the west and southeast coasts than in 2011, and the winds blew stronger along the southeast coast in 2016. Monthly damage data showed that the damage to the west coast was high in August, and the damage to the southeast coast was high in October from 2002 to 2019. The 3-second gust showed the result of wide expansion throughout the southern coast of the Korean Peninsula in October. As a result, the damage differs for type bacause the intensities and paths of typhoons vary depending on their characteristics, the 3-second gust blows differently by region based on regional characteristics, and the sale price is considered in metropolitan cities.
Keywords
3-second gust; Maximum damage; Typhoon; Type analysis; Korean Peninsula;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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