학술논문

An evaluation of machine learning and deep learning models for drought prediction using weather data.
Document Type
Article
Source
Journal of Intelligent & Fuzzy Systems. 2022, Vol. 43 Issue 3, p3611-3626. 16p.
Subject
*DEEP learning
*MACHINE learning
*WEATHER forecasting
*DROUGHTS
*EMERGENCY management
*PREDICTION models
Language
ISSN
1064-1246
Abstract
Drought is a serious natural disaster that has a long duration and a wide range of influences. To decrease drought-induced losses, drought prediction is the basis of corresponding drought prevention and disaster reduction measures. While this problem has been studied in the literature, it remains unknown whether drought can be precisely predicted with machine learning models using weather data. To answer this question, a real-world public dataset is leveraged in this study, and different drought levels are predicted using the last 90 days of 18 meteorological indicators as the predictors. In a comprehensive approach, 16 machine learning models and 16 deep learning models are evaluated and compared. The results show that no single model can achieve the best performance for all evaluation metrics simultaneously, which indicates that the drought prediction problem is still challenging. As benchmarks for further studies, the code and results are publicly available in a GitHub repository. [ABSTRACT FROM AUTHOR]