RETRACTED: Spatiotemporal convolutional long short-term memory for regional streamflow predictions

被引:9
作者
Mohammed, Abdalla [1 ,2 ]
Corzo, Gerald [1 ]
机构
[1] IHE Delft Inst Water Educ, Hydroinformat Dept, Westvest 7, NL-2611 AX Delft, Netherlands
[2] Univ Oxford, Sch Geog & Environm, Oxford, England
关键词
Regional modelling; Deep learning; CNN; LSTM; CAMELS; Rainfall-runoff; NEURAL-NETWORKS; DATA SET;
D O I
10.1016/j.jenvman.2023.119585
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Rainfall-runoff (RR) modelling is a challenging task in hydrology, especially at the regional scale. This work presents an approach to simultaneously predict daily streamflow in 86 catchments across the US using a sequential CNN-LSTM deep learning architecture. The model effectively incorporates both spatial and temporal information, leveraging the CNN to encode spatial patterns and the LSTM to learn their temporal relations. For training, a year-long spatially distributed input with precipitation, maximum temperature, and minimum temperature for each day was used to predict one-day streamflow. The trained CNN-LSTM model was further finetuned for three local sub-clusters of the 86 stations, assessing the significance of fine-tuning in model performance. The CNN-LSTM model, post fine-tuning, exhibited strong predictive capabilities with a median NashSutcliffe efficiency (NSE) of 0.62 over the test period. Remarkably, 65% of the 86 stations achieved NSE values greater than 0.6. The performance of the model was also compared to different deep learning models trained using a similar setup (CNN, LSTM, ANN). An LSTM model was also developed and trained individually to predict for each of the stations using local data. The CNN-LSTM model outperformed all the models which was trained regionally, and achieved a comparable performance to the local LSTM model. Fine-tuning improved the performance of all models during the test period. The results highlight the potential of the CNN-LSTM approach for regional RR modelling by effectively capturing complex spatiotemporal patterns inherent in the RR process.
引用
收藏
页数:24
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