A new approach in using the GRACE satellite data and artificial intelligence models for modeling and predicting the groundwater level (case study: Aspas aquifer in Southern Iran)

被引:0
作者
Maryam Shahbazi
Heidar Zarei
Abazar Solgi
机构
[1] Shahid Chamran University of Ahvaz,Department of Hydrology and Water Resources, Faculty of Water and Environmental Engineering
[2] Bu-Ali Sina University,Department of Water Science Engineering, Faculty of Agriculture
来源
Environmental Earth Sciences | 2024年 / 83卷
关键词
Hybrid models; GRACE Satellite; Groundwater level; Aspas aquifer;
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摘要
Industrial and agricultural development, population increase, limitations in water resources renewability, lack of timely management of water resources, and the recent years' droughts have caused pressure on groundwater. One of the aquifers that have faced a sharp drop in water level in recent years is the Aspas aquifer in Fars province. In this study, the condition of the groundwater level (GWL) in this aquifer was analyzed using the data of the gravity recovery and climate experiment (GRACE) Satellite. In addition, pre-processing tools, such as complementary ensemble empirical mode and decomposition (CEEMD) and wavelet transform (WT), were utilized. The support vector regression (SVR) and artificial neural networks (ANN) models were used in two simple and hybrid ways with pre-processing tools. According to the results, combining the models with pre-processing tools has improved their efficiency. As a result, the coefficient of determination (R2) has been improved from 0.927 in ANN to 0.938 in W-ANN and 0.998 in CEEMD-ANN. The R2 has reached from 0.918 in the SVR to 0.949 in the W-SVR and 0.948 in the CEEMD-SVR. The comparison between the results of processing algorithms of GRACE satellite in the test phase determined that the GFZ processing algorithm shows the best performance. CEEMD-ANN performance was compared to GFZ algorithm. In addition, a new approach was utilized to forecast the GWL shifts. The results indicated that the new approach provides a suitable estimate of the groundwater in the shortest time with the lowest cost. Therefore, this approach can be used to predict the GWL in other aquifers.
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共 75 条
[1]  
Adamowski J(2011)A wavelet neural network conjunction model for groundwater level forecasting J Hydrol 407 28-40
[2]  
Chan FH(2023)Groundwater levels forecasting using machine learning models: a case study of the groundwater region 10 at Karst Belt South Africa System Soft Comput 5 1-15
[3]  
Aderemi BA(2018)EEMD-based notch filter for induction machine bearing faults detection Appl Acoust 133 202-209
[4]  
Olwal TO(2020)Groundwater level modeling with hybrid artificial intelligence techniques J Hydrol 595 1-12
[5]  
Ndambuki JM(2020)Groundwater level simulation using gene expression programming and M5 model tree combined with wavelet transform Hydrol Sci J 65 1430-1442
[6]  
Rwanga SS(1995)Support-vector networks Mach Learn 20 273-295
[7]  
Amirat Y(2016)Evaluation of GRACE satellite data in the estimation of groundwater level changes in Qazvin province Iran J Ecohydrol 4 476-463
[8]  
Benbouzidb M(2018)Monitoring groundwater storage changes using the gravity recovery and climate experiment (GRACE) satellite mission: a review Remote Sensing 10 829-854
[9]  
Wang T(2023)Estimation of groundwater level and storage changes using innovative trend analysis (ITA), GRACE data, and google earth engine (GEE) Groundw Sustain Dev 23 1-15
[10]  
Bacha K(2021)Support vector machine and data assimilation framework for groundwater level forecasting using GRACE satellite data J Hydrol 603 1-18