Susceptibility mapping of groundwater salinity using machine learning models

被引:57
|
作者
Mosavi, Amirhosein [1 ,2 ]
Sajedi Hosseini, Farzaneh [3 ]
Choubin, Bahram [4 ]
Taromideh, Fereshteh [5 ]
Ghodsi, Marzieh [6 ]
Nazari, Bijan [7 ]
Dineva, Adrienn A. [8 ]
机构
[1] Ton Duc Thang Univ, Environm Qual Atmospher Sci & Climate Change Res, Ho Chi Minh City, Vietnam
[2] Ton Duc Thang Univ, Fac Environm & Labour Safety, Ho Chi Minh City, Vietnam
[3] Univ Tehran, Fac Nat Resources, Reclamat Arid & Mt Reg Dept, Karaj, Iran
[4] AREEO, West Azarbaijan Agr & Nat Resources Res & Educ Ct, Soil Conservat & Watershed Management Res Dept, Orumiyeh, Iran
[5] Sari Agr Sci & Nat Resources Univ, Dept Irrigat, Sari, Iran
[6] Univ Tehran, Fac Geog, Tehran, Iran
[7] Imam Khomeini Int Univ, Dept Water Sci & Engn, Qazvin, Iran
[8] Duy Tan Univ, Inst Res & Dev, Da Nang 550000, Vietnam
关键词
Salinity mapping; Machine learning; Feature selection; Simulated annealing; Dichotomous prediction; CLIMATE-CHANGE; DISCRIMINANT-ANALYSIS; STATISTICAL-ANALYSIS; AREAS; SYSTEM; IMPACT; MAPS; IRAN; TRANSPORT; ENSEMBLE;
D O I
10.1007/s11356-020-11319-5
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Increasing groundwater salinity has recently raised severe environmental and health concerns around the world. Advancement of the novel methods for spatial salinity modeling and prediction would be essential for effective management of the resources and planning mitigation policies. The current research presents the application of machine learning (ML) models in groundwater salinity mapping based on the dichotomous predictions. The groundwater salinity is predicted using the essential factors (i.e., identified by the simulated annealing feature selection methodology) through k-fold cross-validation methodology. Six ML models, namely, flexible discriminant analysis (FDA), mixture discriminant analysis (MAD), boosted regression tree (BRT), multivariate adaptive regression spline (MARS), random forest (RF), support vector machine (SVM), were employed to groundwater salinity mapping. The results of the modeling indicated that the SVM model had superior performance than other models. Variables of soil order, groundwater withdrawal, precipitation, land use, and elevation had the most contribute to groundwater salinity mapping. Results highlighted that the southern parts of the region and some parts in the north, northeast, and west have a high groundwater salinity, in which these areas are mostly matched with soil order of Entisols, bareland areas, and low elevations.
引用
收藏
页码:10804 / 10817
页数:14
相关论文
共 50 条
  • [1] Susceptibility mapping of groundwater salinity using machine learning models
    Amirhosein Mosavi
    Farzaneh Sajedi Hosseini
    Bahram Choubin
    Fereshteh Taromideh
    Marzieh Ghodsi
    Bijan Nazari
    Adrienn A. Dineva
    [J]. Environmental Science and Pollution Research, 2021, 28 : 10804 - 10817
  • [2] Groundwater Salinity Susceptibility Mapping Using Classifier Ensemble and Bayesian Machine Learning Models
    Mosavi, Amirhosein
    Hosseini, Farzaneh Sajedi
    Choubin, Bahram
    Goodarzi, Massoud
    Dineva, Adrienn A.
    [J]. IEEE ACCESS, 2020, 8 : 145564 - 145576
  • [3] Susceptibility Prediction of Groundwater Hardness Using Ensemble Machine Learning Models
    Mosavi, Amirhosein
    Hosseini, Farzaneh Sajedi
    Choubin, Bahram
    Abdolshahnejad, Mahsa
    Gharechaee, Hamidreza
    Lahijanzadeh, Ahmadreza
    Dineva, Adrienn A.
    [J]. WATER, 2020, 12 (10)
  • [4] CLASSIFYING AND MAPPING GROUNDWATER LEVEL VARIATIONS USING MACHINE LEARNING MODELS
    Yu, Su Min
    Seo, Jae Young
    Kim, Bo Ram
    Lee, Sang-Il
    [J]. IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2023, : 3755 - 3757
  • [5] Susceptibility Mapping of Soil Water Erosion Using Machine Learning Models
    Mosavi, Amirhosein
    Sajedi-Hosseini, Farzaneh
    Choubin, Bahram
    Taromideh, Fereshteh
    Rahi, Gholamreza
    Dineva, Adrienn A.
    [J]. WATER, 2020, 12 (07)
  • [6] Flash flood susceptibility mapping using stacking ensemble machine learning models
    Ilia, Loanna
    Tsangaratos, Paraskevas
    Tzampoglou, Ploutarchos
    Chen, Wei
    Hong, Haoyuan
    [J]. GEOCARTO INTERNATIONAL, 2022, 37 (27) : 15010 - 15036
  • [7] A comparison of machine learning models for the mapping of groundwater spring potential
    A’kif Al-Fugara
    Hamid Reza Pourghasemi
    Abdel Rahman Al-Shabeeb
    Maan Habib
    Rida Al-Adamat
    Hani Al-Amoush
    Adrian L. Collins
    [J]. Environmental Earth Sciences, 2020, 79
  • [8] A comparison of machine learning models for the mapping of groundwater spring potential
    Al-Fugara, A’kif
    Pourghasemi, Hamid Reza
    Al-Shabeeb, Abdel Rahman
    Habib, Maan
    Al-Adamat, Rida
    Al-Amoush, Hani
    Collins, Adrian L.
    [J]. Environmental Earth Sciences, 2020, 79 (10):
  • [9] A comparison of machine learning models for the mapping of groundwater spring potential
    Al-Fugara, A'kif
    Pourghasemi, Hamid Reza
    Al-Shabeeb, Abdel Rahman
    Habib, Maan
    Al-Adamat, Rida
    AI-Amoush, Hani
    Collins, Adrian L.
    [J]. ENVIRONMENTAL EARTH SCIENCES, 2020, 79 (10)
  • [10] Global Wildfire Susceptibility Mapping Based on Machine Learning Models
    Shmuel, Assaf
    Heifetz, Eyal
    [J]. FORESTS, 2022, 13 (07):