水流
期限(时间)
环境科学
水文学(农业)
地质学
气候学
流域
地理
岩土工程
地图学
物理
量子力学
作者
Arken Tursun,Xianhong Xie,Yibing Wang,Yao Liu,Dawei Peng,Binghui Zheng
标识
DOI:10.1016/j.jhydrol.2024.130771
摘要
Streamflow simulation in human-regulated catchments is a great challenge for both process-based hydrological models and deep learning (DL) methods, mainly because human-regulation rules are difficult to parameterize in these models. In this study, we investigate the roles of river and catchment attributes in DL for streamflow prediction. We evaluate a typical DL method, i.e., long short-term memory (LSTM), and evaluate its performance in 25 large catchments across the Yellow River Basin where human activities are intensive, especially with large numbers of dams and reservoirs influencing streamflow processes. For the LSTM forcing data, we compare two forcing datasets: the Fifth Generation of European Reanalysis (ERA5-Land) and meteorological station-based data. The results show that the LSTM forced by ERA5-Land achieves improved performance, as its mean Kling–Gupta efficiency (KGE) is 0.21 relative to the mean KGE of 0.08 from the meteorological station forced LSTM. Integrating different types of hydrological attributes (catchment and river characteristics) can substantially improve LSTM performance even for catchments with dams and reservoirs. The river-reach attributes show the largest contribution to the LSTM model improvement. Moreover, LSTM with multiscale attributes outperforms a global process-based hydrological model (LISFLOOD) in the middle and lower reaches of the Yellow River Basin. Our study indicates that multiscale attributes are promising pivots for DL methods to improve streamflow prediction in human-regulated basins.
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