Development of Combined Heavy Rain Damage Prediction Models with Machine Learning

  • Choi, Changhyun
  • Kim, Jeonghwan
  • Kim, Jungwook
  • Kim, Hung Soo
Citations

WEB OF SCIENCE

8
Citations

SCOPUS

10

초록

Adequate forecasting and preparation for heavy rain can minimize life and property damage. Some studies have been conducted on the heavy rain damage prediction model (HDPM), however, most of their models are limited to the linear regression model that simply explains the linear relation between rainfall data and damage. This study develops the combined heavy rain damage prediction model (CHDPM) where the residual prediction model (RPM) is added to the HDPM. The predictive performance of the CHDPM is analyzed to be 4-14% higher than that of HDPM. Through this, we confirmed that the predictive performance of the model is improved by combining the RPM of the machine learning models to complement the linearity of the HDPM. The results of this study can be used as basic data beneficial for natural disaster management.

키워드

disaster managementheavy rain damagemachine learningnatural disasterprediction modelresidual prediction modelTIME-SERIESLANDSLIDETRENDS
제목
Development of Combined Heavy Rain Damage Prediction Models with Machine Learning
저자
Choi, ChanghyunKim, JeonghwanKim, JungwookKim, Hung Soo
DOI
10.3390/w11122516
발행일
2019-12
유형
Article
저널명
Water (Switzerland)
11
12