Water level prediction in Taehwa River basin using deep learning model based on DNN and LSTM

Citations

SCOPUS

6

초록

Recently, the magnitude and frequency of extreme heavy rains and localized heavy rains have increased due to abnormal climate, which caused increased flood damage in river basin. As a result, the nonlinearity of the hydrological system of rivers or basins is increasing, and there is a limitation in that the lead time is insufficient to predict the water level using the existing physical-based hydrological model. This study predicted the water level at Ulsan (Taehwagyo) with a lead time of 0, 1, 2, 3, 6, 12 hours by applying deep learning techniques based on Deep Neural Network (DNN) and Long Short-Term Memory (LSTM) and evaluated the prediction accuracy. As a result, DNN model using the sliding window concept showed the highest accuracy with a correlation coefficient of 0.97 and RMSE of 0.82 m. If deep learning-based water level prediction using a DNN model is performed in the future, high prediction accuracy and sufficient lead time can be secured than water level prediction using existing physical-based hydrological models. © 2021 Korea Water Resources Association.

키워드

Deep learningDeep neural networkLong short-term memoryWater level prediction
제목
Water level prediction in Taehwa River basin using deep learning model based on DNN and LSTM
저자
Lee, MyungjinKim, JongsungYoo, YounghoonKim, Hung SooKim, Sam EunKim, Soojun
DOI
10.3741/JKWRA.2021.54.S-1.1061
발행일
2021
유형
Article
저널명
Journal of Korea Water Resources Association
54
S-1
페이지
1061 ~ 1069