Development of Heavy Rain Damage Prediction Model Using Machine Learning Based on Big Data

Changhyun Choi, Jeonghwan Kim, Jongsung Kim, Donghyun Kim, Younghye Bae, Hung Soo Kim
2018 Advances in Meteorology  
Prediction models of heavy rain damage using machine learning based on big data were developed for the Seoul Capital Area in the Republic of Korea. We used data on the occurrence of heavy rain damage from 1994 to 2015 as dependent variables and weather big data as explanatory variables. The model was developed by applying machine learning techniques such as decision trees, bagging, random forests, and boosting. As a result of evaluating the prediction performance of each model, the AUC value of
more » ... the boosting model using meteorological data from the past 1 to 4 days was the highest at 95.87% and was selected as the final model. By using the prediction model developed in this study to predict the occurrence of heavy rain damage for each administrative region, we can greatly reduce the damage through proactive disaster management.
doi:10.1155/2018/5024930 fatcat:wnlwsiypvfgbjcitbylb4jt5fa