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The changes prediction on terrestrial water storage in typical regions of China based on neural networks and satellite gravity data

Lu, Shanbo, Li, Wanqiu, Yao, Guobiao, Zhong, Yulong, Bao, Lifeng, Wang, Zhiwei, Bi, Jingxue, Zhu, Chengcheng, and Guo, Qiuying, 2024. The changes prediction on terrestrial water storage in typical regions of China based on neural networks and satellite gravity data. Scientific Reports, 14:16855, doi:10.1038/s41598-024-67611-8.

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@ARTICLE{2024NatSR..1416855L,
       author = {{Lu}, Shanbo and {Li}, Wanqiu and {Yao}, Guobiao and {Zhong}, Yulong and {Bao}, Lifeng and {Wang}, Zhiwei and {Bi}, Jingxue and {Zhu}, Chengcheng and {Guo}, Qiuying},
        title = "{The changes prediction on terrestrial water storage in typical regions of China based on neural networks and satellite gravity data}",
      journal = {Scientific Reports},
     keywords = {BP, LSTM, Satellite gravity, TWS change, BiLSTM-attention neural network},
         year = 2024,
        month = jul,
       volume = {14},
          eid = {16855},
        pages = {16855},
     abstract = "{Accurate prediction of regional terrestrial water storage change (TWSA)
        is of great significance for water resources planning and
        management, and early warning of extreme climate disasters.
        Aiming at the problem that the conventional methods on
        prediction of TWSA time series are difficult to be accurate, the
        six typical regions are selected in China as examples, including
        the upper reaches of the Yangtze River (UYR), the southwest
        region (SWR), the Liaohe River Basin (LRB), the North China
        Plain (NCP), the Qinghai-Tibet Plateau (QTP), and the Pearl
        River Basin (PRB). The mascon product from GRACE/GRACE-FO
        provided by CSR is used to extract TWSA time series in six
        typical areas. The improved Back Propagation (BP) neural
        network, Long Short-Term Memory (LSTM) neural network and the
        latest Bidirectional LSTM (BiLSTM-attention) neural network
        model based on attention mechanism are proposed to predict and
        analyze the regional TWSA. In the experiment, the selection of
        the optimal model parameters such as the number of hidden layer
        nodes and the number of hidden units of the neural network model
        is tested and analyzed in detail. Meanwhile, the model
        prediction results are compared with the traditional least
        squares method and random forest (RF) prediction method. The
        root mean square error (RMSE), determination coefficient
        (R$^{2}$), Nash-Sutcliffe efficiency coefficient (NSE) and mean
        absolute percentage error (MAPE) were used to evaluate the
        accuracy of the predicted results. The results show that the
        improved BP, LSTM and Bi-LSTM-attention neural network models
        all achieve higher prediction accuracy in UYR and SWR areas.
        RMSE is less than 2.641 cm, R$^{2}$ is as high as 0.8 or more,
        NSE is above 0.6, and MAPE is within 0.1. Compared with the
        least square method, the RMSE of the predicted results from
        three neural network decreased by 0.998 cm, 0.700 cm and 0.7563
        on average, and the R$^{2}$ increased by 81.75\%, 69.89\% and
        72\% on average. Compared with RFML method, the RMSE from three
        neural network is reduced by 0.601 cm, 0.316 cm and 0.360, and
        R$^{2}$ is increased by 38.20\%, 24.60\% and 27.06\% on average.
        NSE and RMSE are improved to varying degrees in the above
        regions. It shows that the improved BP, LSTM and BiLSTM-
        attention model used can effectively predict TWSA. The research
        methods and results in this paper can provide important
        reference for the rational utilization of regional water
        resources and disaster risk assessment.}",
          doi = {10.1038/s41598-024-67611-8},
       adsurl = {https://ui.adsabs.harvard.edu/abs/2024NatSR..1416855L},
      adsnote = {Provided by the SAO/NASA Astrophysics Data System}
}

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