SummaryWe used a statistical learning framework to evaluate the ability of three machine-learning methods to predict nitrate concentration in shallow groundwater of the Central Valley, California: boosted regression trees (BRT), artificial neural networks (ANN), and Bayesian networks (BN). Machine learning methods can learn complex patterns in the data but because of overfitting may not generalize well to new data. The statistical learning framework involves cross-validation (CV) training and testing data and a separate hold-out data set for model evaluation, with the goal of optimizing predictive performance by controlling for model overfit. The order of prediction performance according to both CV testing R2 and that for the hold-out data ...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
Quantitative analyses of groundwater flow and transport typically rely on a physically-based model, ...
An important policy consideration for integrated land and water management is to understand the spat...
SummaryWe used a statistical learning framework to evaluate the ability of three machine-learning me...
Four algorithms are outlined, each of which has interesting features for predicting contaminant leve...
Prediction of the groundwater nitrate concentration is of utmost importance for pollution control an...
Rapid industrialization and population growth have elevated the concerns over water quality. Excessi...
Study region: Central eastern continental United States. Study focus: Groundwater level prediction i...
Nitrate-contaminated aquifers are common in landscapes dominated by agricultural land use. Health co...
Increased nitrate concentration is one of the main groundwater quality problems today that needs to ...
Watershed management decisions need robust methods, which allow an accurate predictive modeling of p...
Groundwater-derived phosphorus has often been dismissed as a significant contributor towards surface...
Aquifer vulnerability models were developed to map groundwater nitrate concentration at domestic and...
AbstractDissolved inorganic nitrogen (DIN) are typically the main focus of nutrient management strat...
Recognising the various sources of nitrate pollution and understanding system dynamics are fundament...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
Quantitative analyses of groundwater flow and transport typically rely on a physically-based model, ...
An important policy consideration for integrated land and water management is to understand the spat...
SummaryWe used a statistical learning framework to evaluate the ability of three machine-learning me...
Four algorithms are outlined, each of which has interesting features for predicting contaminant leve...
Prediction of the groundwater nitrate concentration is of utmost importance for pollution control an...
Rapid industrialization and population growth have elevated the concerns over water quality. Excessi...
Study region: Central eastern continental United States. Study focus: Groundwater level prediction i...
Nitrate-contaminated aquifers are common in landscapes dominated by agricultural land use. Health co...
Increased nitrate concentration is one of the main groundwater quality problems today that needs to ...
Watershed management decisions need robust methods, which allow an accurate predictive modeling of p...
Groundwater-derived phosphorus has often been dismissed as a significant contributor towards surface...
Aquifer vulnerability models were developed to map groundwater nitrate concentration at domestic and...
AbstractDissolved inorganic nitrogen (DIN) are typically the main focus of nutrient management strat...
Recognising the various sources of nitrate pollution and understanding system dynamics are fundament...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
Quantitative analyses of groundwater flow and transport typically rely on a physically-based model, ...
An important policy consideration for integrated land and water management is to understand the spat...