Machine Learning Models for Predicting the Ammonium Concentration in Alluvial Groundwaters

被引:14
|
作者
Perovic, Marija [1 ]
Senk, Ivana [2 ]
Tarjan, Laslo [2 ]
Obradovic, Vesna [1 ]
Dimkic, Milan [1 ]
机构
[1] Jaroslav Cerni Water Inst, Jaroslava Cernog 80, Belgrade 11226, Serbia
[2] Univ Novi Sad, Fac Tech Sci, Trg Dositeja Obradovica 6, Novi Sad 21000, Serbia
关键词
Ammonium; Groundwater; Factor analysis; Machine learning; Neural networks; NITRATE REDUCTION; RIVER-BASIN; ARSENIC CONTAMINATION; AQUATIC ECOSYSTEMS; NEURAL-NETWORKS; CENTRAL VALLEY; WATER; AQUIFER; DENITRIFICATION; TRANSFORMATION;
D O I
10.1007/s10666-020-09731-9
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Considering the great importance of groundwater quality for water supply, in the last decade, significant scientific attention has been devoted to nitrate reduction transformation pathways and nitrogen conservation in groundwaters in the form of ammonium. To evaluate and assess the ability of machine learning models to predict the ammonium concentration, four machine learning models were applied: a three-layer neural network (NN), a deep neural network (DNN), and two variants of support vector regression (SVR) models: with linear and with Gaussian radial basis function kernel. A dataset of 322 samples with 13 predictor variables representing selected parameters responsible for oxidative/reductive nitrogen transformations in shallow alluvial groundwater was acquired from measurements in 55 monitoring wells during a 6-year monitoring period (2011-2016) in Serbia. Applied principal component analysis and cluster analysis gave an insight into conditionality and relations between the selected parameters, distinguishing four main factors, which explained 70.97% of total variance, and classifying examined objects by similarity. Extracted factors correlated the concentration patterns, implying the main nitrogen transformations in examined groundwater. The machine learning models were successfully applied for predicting the ammonium concentration with high determination coefficients (R-2) in tests: 0.84 for DNN and 0.64 for NN, while the SVR did not prove to be adequate with the bestR(2)of 0.24.
引用
收藏
页码:187 / 203
页数:17
相关论文
共 50 条
  • [31] Predicting flow velocity in a vegetative alluvial channel using standalone and hybrid machine learning techniques
    Kumar, Sanjit
    Kumar, Bimlesh
    Deshpande, Vishal
    Agarwal, Mayank
    EXPERT SYSTEMS WITH APPLICATIONS, 2023, 232
  • [32] Predicting Benzene Concentration Using Machine Learning and Time Series Algorithms
    Menendez Garcia, Luis Alfonso
    Sanchez Lasheras, Fernando
    Garcia Nieto, Paulino Jose
    Alvarez de Prado, Laura
    Bernardo Sanchez, Antonio
    MATHEMATICS, 2020, 8 (12) : 1 - 21
  • [33] Machine learning models for predicting depression in Korean young employees
    Kim, Suk-Sun
    Gil, Minji
    Min, Eun Jeong
    FRONTIERS IN PUBLIC HEALTH, 2023, 11
  • [34] Predicting the Occurrence of Metabolic Syndrome Using Machine Learning Models
    Trigka, Maria
    Dritsas, Elias
    Lahoz-Beltra, Rafael
    Zhang, Yudong
    COMPUTATION, 2023, 11 (09)
  • [35] Multidimensional machine learning models predicting outcomes after trauma
    Moris, Dimitrios
    Henao, Ricardo
    Hensman, Hannah
    Stempora, Linda
    Chasse, Scott
    Schobel, Seth
    Dente, Christopher J.
    Kirk, Allan D.
    Elster, Eric
    SURGERY, 2022, 172 (06) : 1851 - 1859
  • [36] Predicting tensorial molecular properties with equivariant machine learning models
    Vu Ha Anh Nguyen
    Lunghi, Alessandro
    PHYSICAL REVIEW B, 2022, 105 (16)
  • [37] Predicting Thermal Resistance of Packaging Design by Machine Learning Models
    Lai, Jung-Pin
    Lin, Shane
    Lin, Vito
    Kang, Andrew
    Wang, Yu-Po
    Pai, Ping-Feng
    MICROMACHINES, 2025, 16 (03)
  • [38] Machine learning models for predicting tibial intramedullary nail length
    Sercan Capkin
    Ali Ihsan Kilic
    Hakan Cici
    Mehmet Akdemir
    Mert Kahraman Marasli
    BMC Musculoskeletal Disorders, 26 (1)
  • [39] PREDICTING HEALTHCARE COSTS OF DIABETES USING MACHINE LEARNING MODELS
    Gonzalez Rodriguez, J.
    Pinzon Espitia, O. L.
    Franco, C.
    Augusto, V
    VALUE IN HEALTH, 2019, 22 : S575 - S575
  • [40] Machine Learning Models for Predicting, Understanding, and Influencing Health Perception
    Aka, Ada
    Bhatia, Sudeep
    JOURNAL OF THE ASSOCIATION FOR CONSUMER RESEARCH, 2022, 7 (02) : 142 - 153