Development of disaster severity classification model using machine learning technique

Citations

SCOPUS

2

초록

In recent years, natural disasters such as heavy rainfall and typhoons have occurred more frequently, and their severity has increased due to climate change. The Korea Meteorological Administration (KMA) currently uses the same criteria for all regions in Korea for watch and warning based on the maximum cumulative rainfall with durations of 3-hour and 12-hour to reduce damage. However, KMA's criteria do not consider the regional characteristics of damages caused by heavy rainfall and typhoon events. In this regard, it is necessary to develop new criteria considering regional characteristics of damage and cumulative rainfalls in durations, establishing four stages: blue, yellow, orange, and red. A classification model, called DSCM (Disaster Severity Classification Model), for the four-stage disaster severity was developed using four machine learning models (Decision Tree, Support Vector Machine, Random Forest, and XGBoost). This study applied DSCM to local governments of Seoul, Incheon, and Gyeonggi Province province. To develop DSCM, we used data on rainfall, cumulative rainfall, maximum rainfalls for durations of 3-hour and 12-hour, and antecedent rainfall as independent variables, and a 4-class damage scale for heavy rain damage and typhoon damage for each local government as dependent variables. As a result, the Decision Tree model had the highest accuracy with an F1-Score of 0.56. We believe that this developed DSCM can help identify disaster risk at each stage and contribute to reducing damage through efficient disaster management for local governments based on specific events. © 2023 Korea Water Resources Association. All rights reserved.

키워드

Disaster severity classification modelMachine learningNatural disasterStandard warning criteria
제목
Development of disaster severity classification model using machine learning technique
저자
Lee, SeungminBaek, SeonukLee, JunhakKim, KyungtakKim, SoojunKim, Hung Soo
DOI
10.3741/JKWRA.2023.56.4.261
발행일
2023
유형
Article
저널명
한국수자원학회 논문집
56
4
페이지
261 ~ 272