GROUNDWATER LEVEL PREDICTION USING DEEP RECURRENT NEURAL NETWORKS AND UNCERTAINTY ASSESSMENT

被引:1
|
作者
Eghrari, Z. [1 ]
Delavar, M. R. [2 ]
Zare, M. [3 ]
Mousavi, M. [1 ]
Nazari, B. [4 ]
Ghaffarian, S. [5 ]
机构
[1] Univ Tehran, Sch Surveying & Geospatial Engn, Coll Engn, Tehran, Iran
[2] Univ Tehran, Sch Surveying & Geospatial Eng, Coll Engn, Ctr Excellence Geomat Eng Disaster Management & L, Tehran, Iran
[3] Int Inst Earthquake Engn & Seismol, Tehran, Iran
[4] Univ Tehran, Sch Surveying & Geospatial Engn, GIS Dept, Coll Engn, Tehran, Iran
[5] UCL, Inst Risk & Disaster Reduct, London, England
关键词
Groundwater Level; Climate Change; GIS; Deep Learning; LSTM; Uncertainty; MODELS; RMSE;
D O I
10.5194/isprs-annals-X-1-W1-2023-493-2023
中图分类号
K85 [文物考古];
学科分类号
0601 ;
摘要
Groundwater is one of the most important sources of regional water supply for humans. In recent years, several factors have contributed to a significant decline in groundwater levels (GWL) in certain regions. As a result of climate change, such as temperature increase, rainfall decrease, and changes in relative humidity, it is necessary to investigate and model the effects of these factors on GWL. Although a number of researches have been conducted on GWL modeling with machine learning (ML) and deep learning (DL) algorithms, only a limited number of studies have reported model uncertainty. In this paper, GWL modeling of some piezometric wells has been conducted by considering the effects of the meteorological parameters with Long-Short Term Memory (LSTM) and Gated Recurrent Unit (GRU) algorithms. The models were trained on one piezometric well data and predictions were executed on six other wells. To perform an uncertainty assessment, the models were run 10 times and their means were calculated. Subsequently, their standard deviations were considered to evaluate the outcomes. In addition, the prediction power of the models was validated using Mean Absolute Error (MAE), Root Mean Square Error (RMSE), Normalized Root Mean Square Error (NRMSE), and R-Squared (R-2). Finally, for all the six wells that did not participate in the training phase, the prediction functions of the trained models were run 10 times and their accuracy was assessed. The results indicate that LSTM (R-2=95.6895, RMSE=0.4744 m, NRMSE=0.0558, MAE=0.3383 m) had a better performance compared to that of GRU (R-2=95.2433, RMSE=0.4984 m, NRMSE=0.0586, MAE=0.3658 m) on the GWL modeling.
引用
收藏
页码:493 / 500
页数:8
相关论文
共 50 条
  • [1] Groundwater level prediction with meteorologically sensitive Gated Recurrent Unit (GRU) neural networks
    Gharehbaghi, Amin
    Ghasemlounia, Redvan
    Ahmadi, Farshad
    Albaji, Mohammad
    Journal of Hydrology, 2022, 612
  • [2] Groundwater level prediction with meteorologically sensitive Gated Recurrent Unit (GRU) neural networks
    Gharehbaghi, Amin
    Ghasemlounia, Redvan
    Ahmadi, Farshad
    Albaji, Mohammad
    JOURNAL OF HYDROLOGY, 2022, 612
  • [3] Time series-based groundwater level forecasting using gated recurrent unit deep neural networks
    Lin, Haiping
    Gharehbaghi, Amin
    Zhang, Qian
    Band, Shahab S.
    Pai, Hao Ting
    Chau, Kwok-Wing
    Mosavi, Amir
    ENGINEERING APPLICATIONS OF COMPUTATIONAL FLUID MECHANICS, 2022, 16 (01) : 1655 - 1672
  • [4] Prediction of mRNA subcellular localization using deep recurrent neural networks
    Yan, Zichao
    Lecuyer, Eric
    Blanchette, Mathieu
    BIOINFORMATICS, 2019, 35 (14) : I333 - I342
  • [5] Lake Level Prediction using Feed Forward and Recurrent Neural Networks
    Hrnjica, Bahrudin
    Bonacci, Ognjen
    WATER RESOURCES MANAGEMENT, 2019, 33 (07) : 2471 - 2484
  • [6] Lake Level Prediction using Feed Forward and Recurrent Neural Networks
    Bahrudin Hrnjica
    Ognjen Bonacci
    Water Resources Management, 2019, 33 : 2471 - 2484
  • [7] Groundwater level prediction using deep learning-based recurrent neural network and numerical modeling: a comparative study
    Ehsan Hafezifar
    Mojtaba Shourian
    Earth Science Informatics, 2025, 18 (2)
  • [8] Link quality prediction in wireless community networks using deep recurrent neural networks
    Abdel-Nasser, Mohamed
    Mahmoud, Karar
    Omer, Osama A.
    Lehtonen, Matti
    Puig, Domenec
    ALEXANDRIA ENGINEERING JOURNAL, 2020, 59 (05) : 3531 - 3543
  • [9] Assessment of climate change uncertainty effects on groundwater level prediction using Bayesian analysis
    Ashofteh, Parisa-Sadat
    Jalili, Sepideh
    Loaiciga, Hugo A.
    THEORETICAL AND APPLIED CLIMATOLOGY, 2025, 156 (01)
  • [10] New Results for Prediction of Chaotic Systems Using Deep Recurrent Neural Networks
    José de Jesús Serrano-Pérez
    Guillermo Fernández-Anaya
    Salvador Carrillo-Moreno
    Wen Yu
    Neural Processing Letters, 2021, 53 : 1579 - 1596