Application of machine learning and deep learning for predicting groundwater levels in the West Coast Aquifer System, South Africa

被引:1
|
作者
Igwebuike, Ndubuisi [1 ,2 ]
Ajayi, Moyinoluwa [3 ]
Okolie, Chukwuma [4 ]
Kanyerere, Thokozani [1 ]
Halihan, Todd [2 ]
机构
[1] Univ Western Cape, Dept Earth Sci, Bellville, South Africa
[2] Oklahoma State Univ, Boone Pickens Sch Geol, Stillwater, OK 74078 USA
[3] Toronto Metropolitan Univ, Toronto, ON, Canada
[4] Univ Lagos, Dept Surveying & Geoinformat, Lagos, Nigeria
关键词
Groundwater level; Machine learning; Deep learning; Managed aquifer recharge; Random forest; Support vector machine; Recurrent neural network; RANDOM FOREST; FRAMEWORK; CLIMATE;
D O I
10.1007/s12145-024-01623-w
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Groundwater models are valuable tools to quantify the response of groundwater level to hydrological stresses induced by climate variability and groundwater extraction. These models strive for sustainable groundwater management by balancing recharge, discharge, and natural processes, with groundwater level serving as a critical response variable. While traditional numerical models are labour-intensive, machine learning and deep learning offer a data-driven alternative, learning from historical data to predict groundwater level variations. The groundwater level in wells is typically recorded as continuous groundwater level time series data and is essential for implementing managed aquifer recharge within a particular region. Machine learning and deep learning are essential tools to generate a data-driven approach to modeling an area, and there is a need to understand if they are the most suitable tools to improve model prediction. To address this objective, the study evaluates two machine learning algorithms - Random Forest (RF) and Support Vector Machine (SVM); and two deep learning algorithms - Simple Recurrent Neural Network (SimpleRNN) and Long Short-Term Memory (LSTM) for modeling groundwater level changes in the West Coast Aquifer System of South Africa. Analysis of regression error metrics on the test dataset revealed that SVM outperformed the other models in terms of the root mean square error, whereas random forest had the best performance in terms of the MAE. In the accuracy analysis of predicted groundwater levels, SVM achieved the highest accuracy with an MAE of 0.356 m and an RMSE of 0.372 m. The study concludes that machine learning and deep learning are effective tools for improved modeling and prediction of groundwater level. Further research can incorporate more detailed geologic information of the study area for enhanced interpretation.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Predicting Student Dropout based on Machine Learning and Deep Learning: A Systematic Review
    Andrade-Giron, Daniel
    Sandivar-Rosas, Juana
    Marin-Rodriguez, William
    Ramirez, Edgar Susanibar-
    Toro-Dextre, Eliseo
    Ausejo-Sanchez, Jose
    Villarreal-Torres, Henry
    Angeles-Morales, Julio
    EAI ENDORSED TRANSACTIONS ON SCALABLE INFORMATION SYSTEMS, 2023, 10 (05) : 1 - 11
  • [32] Predicting Anti-inflammatory Peptides by Ensemble Machine Learning and Deep Learning
    Guan, Jiahui
    Yao, Lantian
    Chung, Chia-Ru
    Xie, Peilin
    Zhang, Yilun
    Deng, Junyang
    Chiang, Ying-Chih
    Lee, Tzong-Yi
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2023, 63 (24) : 7886 - 7898
  • [33] Machine Learning and Deep Learning Models for Predicting Noncovalent Inhibitors of AmpC β-Lactamase
    Bagdad, Youcef
    Sisquellas, Marion
    Arthur, Michel
    Miteva, Maria A.
    ACS OMEGA, 2024, 9 (40): : 41334 - 41342
  • [34] Deep Learning in Predicting Preterm Birth: A Comparative Study of Machine Learning Algorithms
    Zhang Fangchao
    Tong Lingling
    Shi Chen
    Zuo Rui
    Wang Liwei
    Wang Yan
    母胎医学杂志(英文), 2024, 06 (03)
  • [35] Deep Learning in Predicting Preterm Birth: A Comparative Study of Machine Learning Algorithms
    Zhang, Fangchao
    Tong, Lingling
    Shi, Chen
    Zuo, Rui
    Wang, Liwei
    Wang, Yan
    MATERNAL-FETAL MEDICINE, 2024, 6 (03) : 141 - 146
  • [36] A fusion framework of deep learning and machine learning for predicting sgRNA cleavage efficiency
    Liu, Yu
    Fan, Rui
    Yi, Jingkun
    Cui, Qinghua
    Cui, Chunmei
    COMPUTERS IN BIOLOGY AND MEDICINE, 2023, 165
  • [37] Predicting Potato Crop Yield with Machine Learning and Deep Learning for Sustainable Agriculture
    El-Kenawy, El-Sayed M.
    Alhussan, Amel Ali
    Khodadadi, Nima
    Mirjalili, Seyedali
    Eid, Marwa M.
    POTATO RESEARCH, 2024, : 759 - 792
  • [38] ADVANCED MACHINE LEARNING TECHNIQUES FOR PREDICTING NOx LEVELS
    Alharbi, Randa
    Algarni, Abeer D.
    THERMAL SCIENCE, 2024, 28 (6B): : 4979 - 4989
  • [39] Groundwater vulnerability mapping of Witbank coalfield in South Africa using deep learning artificial neural networks
    Sakala, Emmanuel
    Fourie, Francois
    Gomo, Modreck
    Coetzee, Henk
    SOUTH AFRICAN JOURNAL OF GEOMATICS, 2019, 8 (02): : 282 - 293
  • [40] Estimation and uncertainty analysis of groundwater quality parameters in a coastal aquifer under seawater intrusion: a comparative study of deep learning and classic machine learning methods
    Tasan, Mehmet
    Tasan, Sevda
    Demir, Yusuf
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2023, 30 (02) : 2866 - 2890