Convolutional long short-term memory neural network for groundwater change prediction

被引:2
作者
Patra, Sumriti Ranjan [1 ]
Chu, Hone-Jay [1 ]
机构
[1] Natl Cheng Kung Univ, Dept Geomat, Tainan, Taiwan
来源
FRONTIERS IN WATER | 2024年 / 6卷
关键词
CNN; groundwater forecasting; LSTM; image inpainting; CLSTM; LAND SUBSIDENCE; GOVERNANCE; YUNLIN; TAIWAN;
D O I
10.3389/frwa.2024.1471258
中图分类号
TV21 [水资源调查与水利规划];
学科分类号
081501 ;
摘要
Forecasting groundwater changes is a crucial step towards effective water resource planning and sustainable management. Conventional models still demonstrated insufficient performance when aquifers have high spatio-temporal heterogeneity or inadequate availability of data in simulating groundwater behavior. In this regard, a spatio-temporal groundwater deep learning model is proposed to be applied for monthly groundwater prediction over the entire Choushui River Alluvial Fan in Central Taiwan. The combination of the Convolution Neural Network (CNN) and Long Short-Term Memory (LSTM) known as Convolutional Long Short-Term Memory (CLSTM) Neural Network is proposed and investigated. Result showed that the monthly groundwater simulations from the proposed neural model were better reflective of the original observation data while producing significant improvements in comparison to only the CNN, LSTM as well as classical neural models. The study also explored the performance of the Masked CLSTM model which is designed to handle missing data by reconstructing incomplete spatio-temporal input images, enhancing groundwater forecasting through image inpainting. The findings indicated that the neural architecture can efficiently extract the relevant spatial features from the past incomplete information of hydraulic head observations under various masking scenarios while simultaneously handling the varying temporal dependencies over the entire study region. The proposed model showed strong reliability in reconstructing and simulating the spatial distribution of hydraulic heads for the following month, as evidenced by low RMSE values and high correlation coefficients when compared to observed data.
引用
收藏
页数:18
相关论文
共 54 条
[1]   Mapping and predicting subsidence from spatio-temporal regression models of groundwater-drawdown and subsidence observations [J].
Ali, Muhammad Zeeshan ;
Chu, Hone-Jay ;
Burbey, Thomas J. .
HYDROGEOLOGY JOURNAL, 2020, 28 (08) :2865-2876
[2]   Spatio-temporal estimation of monthly groundwater levels from GPS-based land deformation [J].
Ali, Muhammad Zeeshan ;
Chu, Hone-Jay ;
Tatas ;
Burbey, Thomas J. .
ENVIRONMENTAL MODELLING & SOFTWARE, 2021, 143
[3]  
Ba J, 2014, ACS SYM SER
[4]   Graph neural network for groundwater level forecasting [J].
Bai, Tao ;
Tahmasebi, Pejman .
JOURNAL OF HYDROLOGY, 2023, 616
[5]   Image Inpainting and Deep Learning to Forecast Short-Term Train Loads [J].
Bapaume, Thomas ;
Come, Etienne ;
Roos, Jeremy ;
Ameli, Mostafa ;
Oukhellou, Latifa .
IEEE ACCESS, 2021, 9 :98506-98522
[6]   Coupling a hybrid CNN-LSTM deep learning model with a Boundary Corrected Maximal Overlap Discrete Wavelet Transform for multiscale Lake water level forecasting [J].
Barzegar, Rahim ;
Aalami, Mohammad Taghi ;
Adamowski, Jan .
JOURNAL OF HYDROLOGY, 2021, 598
[7]   RFA-Net: Residual feature attention network for fine-grained image inpainting [J].
Chen, Min ;
Zang, Shengrui ;
Ai, Zhenhua ;
Chi, Jieru ;
Yang, Guowei ;
Chen, Chenglizhao ;
Yu, Teng .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 119
[8]   Space-Time Evolutions of Land Subsidence in the Choushui River Alluvial Fan (Taiwan) from Multiple-Sensor Observations [J].
Chen, Yi-An ;
Chang, Chung-Pai ;
Hung, Wei-Chia ;
Yen, Jiun-Yee ;
Lu, Chih-Heng ;
Hwang, Cheinway .
REMOTE SENSING, 2021, 13 (12)
[9]   Development of spatially varying groundwater-drawdown functions for land subsidence estimation [J].
Chu, Hone-Jay ;
Ali, Muhammad Zeeshan ;
Tatas ;
Burbey, Thomas J. .
JOURNAL OF HYDROLOGY-REGIONAL STUDIES, 2021, 35
[10]   Spatio-temporal data fusion for fine-resolution subsidence estimation [J].
Chu, Hone-Jay ;
Ali, Muhammad Zeeshan ;
Burbey, Thomas J. .
ENVIRONMENTAL MODELLING & SOFTWARE, 2021, 137