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Enhanced streamflow forecasting using attention-based neural network models: a comparative study in MOPEX basins

مؤلف البحث
Abdullahi Uwaisu Muhammad, Tasiu Muazu, Haihua Ying, Abdoul Fatakhou Ba, Sani Tijjani, Jibril Muhammad Adam, Aliyu Uthman Bello, Muhammad Muhammad Bala, Mosaad Ali Hussein Ali, Umar Sani Dabai, Umar Muhammad Mustapha Kumshe, Muhammad Sabo Yahaya
المشارك في البحث
تاريخ البحث
سنة البحث
2024
مجلة البحث
Modeling Earth Systems and Environment
الناشر
Springer International Publishing
عدد البحث
10
صفحات البحث
5717-5734
موقع البحث
https://link.springer.com/article/10.1007/s40808-024-02088-y
ملخص البحث

To mitigate the adverse effects of floods, hydrologists are increasingly turning to artificial intelligence methodologies to enhance streamflow forecasting capabilities. Drawing inspiration from the efficacy of the Long Short-Term Memory (LSTM) model in capturing temporal dynamics and dependencies within data set, we have employed LSTM for predicting sequential flow rates utilizing collected data sets. Recognizing that not all data set contribute equally to accurate flood forecasts, it becomes imperative to discern and prioritize the relevant variables. Conventional LSTM models often fall short in effectively identifying and ranking informative factors. To overcome this limitation, we introduce an Attention LSTM (ALSTM) model tailored for streamflow forecasting, adept at identifying and capturing critical factors within the time series dataset. Leveraging data set sourced from the United States Geological Survey (USGS), our proposed model exhibits notable performance enhancements. By integrating an attention mechanism during the pre-processing stage, the ALSTM model showcases its ability to generate precise long-term forecasts across most of the basins. Utilizing a continuous 33-year streamflow data set (1970–2003), our proposed model surpasses conventional time series approaches in streamflow forecasting accuracy.

Research Rank
International Journal