Literature DB >> 24463255

Predictive modeling of groundwater nitrate pollution using Random Forest and multisource variables related to intrinsic and specific vulnerability: a case study in an agricultural setting (Southern Spain).

Victor Rodriguez-Galiano1, Maria Paula Mendes2, Maria Jose Garcia-Soldado3, Mario Chica-Olmo3, Luis Ribeiro2.   

Abstract

Watershed management decisions need robust methods, which allow an accurate predictive modeling of pollutant occurrences. Random Forest (RF) is a powerful machine learning data driven method that is rarely used in water resources studies, and thus has not been evaluated thoroughly in this field, when compared to more conventional pattern recognition techniques key advantages of RF include: its non-parametric nature; high predictive accuracy; and capability to determine variable importance. This last characteristic can be used to better understand the individual role and the combined effect of explanatory variables in both protecting and exposing groundwater from and to a pollutant. In this paper, the performance of the RF regression for predictive modeling of nitrate pollution is explored, based on intrinsic and specific vulnerability assessment of the Vega de Granada aquifer. The applicability of this new machine learning technique is demonstrated in an agriculture-dominated area where nitrate concentrations in groundwater can exceed the trigger value of 50 mg/L, at many locations. A comprehensive GIS database of twenty-four parameters related to intrinsic hydrogeologic proprieties, driving forces, remotely sensed variables and physical-chemical variables measured in "situ", were used as inputs to build different predictive models of nitrate pollution. RF measures of importance were also used to define the most significant predictors of nitrate pollution in groundwater, allowing the establishment of the pollution sources (pressures). The potential of RF for generating a vulnerability map to nitrate pollution is assessed considering multiple criteria related to variations in the algorithm parameters and the accuracy of the maps. The performance of the RF is also evaluated in comparison to the logistic regression (LR) method using different efficiency measures to ensure their generalization ability. Prediction results show the ability of RF to build accurate models with strong predictive capabilities.
Copyright © 2014 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Groundwater; Machine learning techniques; Nitrates; Random Forest; Vulnerability assessment

Mesh:

Substances:

Year:  2014        PMID: 24463255     DOI: 10.1016/j.scitotenv.2014.01.001

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  9 in total

1.  Assessment the performance of classification methods in water quality studies, A case study in Karaj River.

Authors:  Mohamad Sakizadeh
Journal:  Environ Monit Assess       Date:  2015-08-15       Impact factor: 2.513

2.  GIS-based groundwater potential mapping using boosted regression tree, classification and regression tree, and random forest machine learning models in Iran.

Authors:  Seyed Amir Naghibi; Hamid Reza Pourghasemi; Barnali Dixon
Journal:  Environ Monit Assess       Date:  2015-12-19       Impact factor: 2.513

3.  Validating a continental-scale groundwater diffuse pollution model using regional datasets.

Authors:  Issoufou Ouedraogo; Pierre Defourny; Marnik Vanclooster
Journal:  Environ Sci Pollut Res Int       Date:  2017-12-11       Impact factor: 4.223

4.  An integrated mass spectrometry imaging and digital pathology workflow for objective detection of colorectal tumours by unique atomic signatures.

Authors:  Bence Paul; Kai Kysenius; James B Hilton; Michael W M Jones; Robert W Hutchinson; Daniel D Buchanan; Christophe Rosty; Fred Fryer; Ashley I Bush; Janet M Hergt; Jon D Woodhead; David P Bishop; Philip A Doble; Michelle M Hill; Peter J Crouch; Dominic J Hare
Journal:  Chem Sci       Date:  2021-06-29       Impact factor: 9.969

5.  Estimating Flexural Strength of FRP Reinforced Beam Using Artificial Neural Network and Random Forest Prediction Models.

Authors:  Kaffayatullah Khan; Mudassir Iqbal; Babatunde Abiodun Salami; Muhammad Nasir Amin; Izaz Ahamd; Anas Abdulalim Alabdullah; Abdullah Mohammad Abu Arab; Fazal E Jalal
Journal:  Polymers (Basel)       Date:  2022-06-02       Impact factor: 4.967

6.  A methodology for assessing public health risk associated with groundwater nitrate contamination: a case study in an agricultural setting (southern Spain).

Authors:  Mario Chica-Olmo; Fabio Peluso; Juan Antonio Luque-Espinar; Victor Rodriguez-Galiano; Eulogio Pardo-Igúzquiza; Lucía Chica-Rivas
Journal:  Environ Geochem Health       Date:  2016-09-28       Impact factor: 4.609

7.  Comparison of new hyperspectral index and machine learning models for prediction of winter wheat leaf water content.

Authors:  Juanjuan Zhang; Wen Zhang; Shuping Xiong; Zhaoxiang Song; Wenzhong Tian; Lei Shi; Xinming Ma
Journal:  Plant Methods       Date:  2021-03-31       Impact factor: 4.993

8.  Machine-Learning Classification of a Number of Contaminant Sources in an Urban Water Network.

Authors:  Ivana Lučin; Luka Grbčić; Zoran Čarija; Lado Kranjčević
Journal:  Sensors (Basel)       Date:  2021-01-01       Impact factor: 3.576

9.  An approach to predict the height of fractured water-conducting zone of coal roof strata using random forest regression.

Authors:  Dekang Zhao; Qiang Wu
Journal:  Sci Rep       Date:  2018-07-20       Impact factor: 4.379

  9 in total

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