Predicting salinity levels in the Mekong delta (Viet Nam): analysis of machine learning and deep learning models

被引:0
|
作者
Phong Nguyen Duc [1 ]
Thang Tang Duc [2 ]
Giap Pham Van [2 ]
Hoat Nguyen Van [2 ]
Tuan Tran Minh [2 ]
机构
[1] Institute for Water and Environment,
[2] Vietnam Academy for Water Resources,undefined
[3] The Southern Institute of Water Resources Research,undefined
[4] Vietnam Academy for Water Resources,undefined
来源
Discover Artificial Intelligence | / 5卷 / 1期
关键词
Mekong delta; Vietnam; Machine learning; Deep learning; Salinity intrusion; Water management;
D O I
10.1007/s44163-025-00336-3
中图分类号
学科分类号
摘要
Salinity intrusion stands out as a severe yet escalating challenge facing the water resource management and agricultural production of the Mekong Delta in Vietnam as a result of climate change and upstream hydrological changes. This paper assesses the efficacy of six different machine learning (ML) and deep learning models (DL) for hourly prediction of salinity in the Mekong Delta at four stations (Cau Quan, Tra Vinh, Ben Trai, and Tran De). The six models are XGB, GB, SVR, LSTM, RNN and ANN. Using hourly hydrological data of 2015–2020 with upstream discharge and tidal water levels as major inputs we designed training and testing of models (training: Jan 2015-mid 2018; testing: mid 2018-Feb 2020). Our results prove that LSTM and XGB models have the best prediction. In particular, they showed good accuracy in predicting upstream salinity (RMSE: 0.25 to 0.30, R2 > 0.97) and downstream salinity (RMSE: 1.5 to 1.6, R2 > 0.88). This success is due to capacity of high temporal resolution as well as spatio-temporal dynamics of salinity variation. The LSTM structure has proven to be effective at capturing long-term temporal dependencies, such as seasonal discharge patterns, while XGB successfully models non-linear interactions between stations with the greatest success, particularly discharge-tidal level interactions. The ML/DL models are capable of successfully forecasting salinity which can open doors to data-driven water management in the Mekong Delta. Future studies should further add hydro-meteorological parameters, other hybrid architectures, and real-time prediction systems, which could be useful operationally and have wider applicability.
引用
收藏
相关论文
共 50 条
  • [21] Predicting Agriculture Yields Based on Machine Learning Using Regression and Deep Learning
    Sharma, Priyanka
    Dadheech, Pankaj
    Aneja, Nagender
    Aneja, Sandhya
    IEEE ACCESS, 2023, 11 : 111255 - 111264
  • [22] 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
  • [23] Exploiting machine learning and deep learning models for misbehavior detection in VANET
    Sultana R.
    Grover J.
    Meghwal J.
    Tripathi M.
    International Journal of Computers and Applications, 2022, 44 (11): : 1024 - 1038
  • [24] Comparison of Deep Learning and Traditional Machine Learning Models for Predicting Mild Cognitive Impairment Using Plasma Proteomic Biomarkers
    Wang, Kesheng
    Adjeroh, Donald A.
    Fang, Wei
    Walter, Suzy M.
    Xiao, Danqing
    Piamjariyakul, Ubolrat
    Xu, Chun
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2025, 26 (06)
  • [25] Machine Learning and Deep Learning Models Applied to Photovoltaic Production Forecasting
    Cordeiro-Costas, Moises
    Villanueva, Daniel
    Eguia-Oller, Pablo
    Granada-Alvarez, Enrique
    APPLIED SCIENCES-BASEL, 2022, 12 (17):
  • [26] Phishing Attacks Detection using Machine Learning and Deep Learning Models
    Aljabri, Malak
    Mirza, Samiha
    2022 7TH INTERNATIONAL CONFERENCE ON DATA SCIENCE AND MACHINE LEARNING APPLICATIONS (CDMA 2022), 2022, : 175 - 180
  • [27] A systematic review and meta-analysis of machine learning, deep learning, and ensemble learning approaches in predicting EV charging behavior
    Yaghoubi, Elaheh
    Yaghoubi, Elnaz
    Khamees, Ahmed
    Razmi, Darioush
    Lu, Tianguang
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 135
  • [28] Prediction of Preeclampsia Using Machine Learning and Deep Learning Models: A Review
    Aljameel, Sumayh S.
    Alzahrani, Manar
    Almusharraf, Reem
    Altukhais, Majd
    Alshaia, Sadeem
    Sahlouli, Hanan
    Aslam, Nida
    Khan, Irfan Ullah
    Alabbad, Dina A.
    Alsumayt, Albandari
    BIG DATA AND COGNITIVE COMPUTING, 2023, 7 (01)
  • [29] Thermal analysis of PCM magnesium chloride hexahydrate using various machine learning and deep learning models
    Balakrishnan, Vignes Karthic Venkatraman
    Kumaresan, Kannan
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 126
  • [30] Comparative Analysis of Traditional Machine Learning and Transformer-based Deep Learning Models for Text Classification
    Aydin, Nazif
    Erdem, Osman Ayhan
    Tekerek, Adem
    JOURNAL OF POLYTECHNIC-POLITEKNIK DERGISI, 2025, 28 (02):