Enhancing streamflow prediction in a mountainous watershed using a convolutional neural network with gridded data

被引:1
作者
Hajibagheri, Zahra [1 ]
Rajabi, Mohammad Mahdi [1 ,2 ]
Oskouei, Ebrahim Asadi [3 ]
Al-Maktoumi, Ali [4 ,5 ]
机构
[1] Civil and Environmental Engineering Faculty, Tarbiat Modares University, Tehran
[2] Faculty of Science, Technology and Medicine, University of Luxembourg, Belval
[3] Atmospheric Science and Meteorology Research Center, Tehran
[4] Water Research Center, Sultan Qaboos University, Muscat
[5] College of Agriculture and Marine Sciences, Sultan Qaboos University, Muscat
关键词
Deep neural network; ERA5-Land dataset; Forward feature selection; Hydrological modeling; Streamflow simulation;
D O I
10.1007/s11356-024-35482-1
中图分类号
学科分类号
摘要
In this research, we demonstrate the effectiveness of a convolutional neural network (CNN) model, integrated with the ERA5-Land dataset, for accurately simulating daily streamflow in a mountainous watershed. Our methodology harnesses image-based inputs, incorporating spatial distribution maps of key environmental variables, including temperature, snowmelt, snow cover, snow depth, volumetric soil water content, total evaporation, total precipitation, and leaf area index. The proposed CNN architecture, while drawing inspiration from classical designs, is specifically tailored for the task of streamflow prediction. The model’s performance, assessed during both the training and testing phases, demonstrates high accuracy, reflected quantitatively in metrics such as RMSE, MAPE, R2, and NSE. Notably, the model exhibits enhanced accuracy in predicting lower flow rates, particularly in autumn and winter, as evidenced by an average RMSE of 2.02 m3/s for flows below 13.8 m3/s. In contrast, the model’s precision decreases in high flow rate scenarios, predominantly in spring and early summer. The implementation of forward feature selection (FFS) has further optimized the model, pinpointing total evaporation and volumetric soil water as key parameters, thus enabling a more efficient model with accuracy comparable to the initial, more complex version. This research underscores the practical utility of an image-based approach using CNN models for streamflow prediction. Moreover, the adoption of the freely available and universally accessible ERA5-Land dataset highlights its effectiveness as a valuable and cost-efficient tool for streamflow prediction. Graphical Abstract: (Figure presented.) © The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2024.
引用
收藏
页码:63959 / 63976
页数:17
相关论文
共 96 条
[1]  
Adamowski J., Karapataki C., Comparison of multivariate regression and artificial neural networks for peak urban water-demand forecasting: evaluation of different ANN learning algorithms, J Hydrol Eng, 15, 10, pp. 729-743, (2010)
[2]  
Adnan R.M., Et al., Daily streamflow prediction using optimally pruned extreme learning machine, J Hydrol, 577, (2019)
[3]  
Ahmed A., Et al., New double decomposition deep learning methods for stream-flow water level forecasting using remote sensing modis satellite variables, climate indices and observations. Ravinesh C. and Ghahramani, Afshin and Feng, Qi and Raj, Nawin and Yin, Zhenliang and Yang, Linshan, (2022)
[4]  
Altunkaynak A., Forecasting surface water level fluctuations of Lake Van by artificial neural networks, Water Resour Manage, 21, pp. 399-408, (2007)
[5]  
Anderson S., Radic V., Evaluation and interpretation of convolutional long short-term memory networks for regional hydrological modelling, Hydrol Earth Syst Sci, 26, 3, pp. 795-825, (2022)
[6]  
Asadollahfardi G., Zangooei H., Aria S.H., Danesh E., Application of artificial neural networks to predict total dissolved solids at the Karaj Dam, Environ Qual Manage, 26, 3, pp. 55-72, (2017)
[7]  
Azam M.F., Srivastava S., Mass balance and runoff modelling of partially debris-covered Dokriani Glacier in monsoon-dominated Himalaya using ERA5 data since 1979, J Hydrol, 590, (2020)
[8]  
Baek S.-S., Pyo J., Chun J.A., Prediction of water level and water quality using a CNN-LSTM combined deep learning approach, Water, 12, 12, (2020)
[9]  
Barzegar R., Aalami M.T., Adamowski J., Coupling a hybrid CNN-LSTM deep learning model with a boundary corrected maximal overlap discrete wavelet transform for multiscale lake water level forecasting, J Hydrol, 598, (2021)
[10]  
Bellini T., Forward search outlier detection in data envelopment analysis, Eur J Oper Res, 216, 1, pp. 200-207, (2012)