Predicting the extent of saltwater intrusion (SWI) into coastal aquifers in response to changing pumping patterns is a prerequisite of any groundwater management framework. This study investigates the feasibility of using support vector machine regression (SVMr), an innovative artificial intelligence-based machine learning algorithm for predicting salinity concentrations at selected monitoring wells in an illustrative aquifer under variable groundwater pumping conditions. For evaluation purpose, the prediction results of SVMr are compared with well-established genetic programming (GP) based surrogate models. SVMr and GP models are trained and validated using identical sets of input (pumping) and output (salinity concentration) datasets. The...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
Predicting groundwater availability is important to water sustainability and drought mitigation. Mac...
Escalating salinity levels in the Bonriki aquifer due to unplanned groundwater extraction is a major...
Accurate groundwater salinity monitoring and prediction is an essential component of a groundwater m...
Artificial intelligence (AI) techniques such as artificial neural networks (ANNs) and support vector...
Accurate prediction of salinity concentration in the aquifer in response to fluctuating groundwater ...
Data-driven mathematical models are powerful prediction tools, which are utilized to approximate sol...
Regression problems in environmental engineering can be tackled in principle by fundamentally differ...
Surrogate model based methodologies are developed for evolving multi-objective management strategies...
Groundwater salinization is considered as a major environmental problem in worldwide coastal areas, ...
Coastal aquifers are hydraulically connected to the sea and therefore susceptible to saltwater intru...
The need for freshwater is emerging as the utmost critical resource issue facing humanity. In severa...
Four algorithms are outlined, each of which has interesting features for predicting contaminant leve...
To date, simulation-optimization (S/O) based groundwater management models have delivered optimal sa...
The main objective of this study is to integrate adaptive neuro-fuzzy inference system (ANFIS), supp...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
Predicting groundwater availability is important to water sustainability and drought mitigation. Mac...
Escalating salinity levels in the Bonriki aquifer due to unplanned groundwater extraction is a major...
Accurate groundwater salinity monitoring and prediction is an essential component of a groundwater m...
Artificial intelligence (AI) techniques such as artificial neural networks (ANNs) and support vector...
Accurate prediction of salinity concentration in the aquifer in response to fluctuating groundwater ...
Data-driven mathematical models are powerful prediction tools, which are utilized to approximate sol...
Regression problems in environmental engineering can be tackled in principle by fundamentally differ...
Surrogate model based methodologies are developed for evolving multi-objective management strategies...
Groundwater salinization is considered as a major environmental problem in worldwide coastal areas, ...
Coastal aquifers are hydraulically connected to the sea and therefore susceptible to saltwater intru...
The need for freshwater is emerging as the utmost critical resource issue facing humanity. In severa...
Four algorithms are outlined, each of which has interesting features for predicting contaminant leve...
To date, simulation-optimization (S/O) based groundwater management models have delivered optimal sa...
The main objective of this study is to integrate adaptive neuro-fuzzy inference system (ANFIS), supp...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
Predicting groundwater availability is important to water sustainability and drought mitigation. Mac...
Escalating salinity levels in the Bonriki aquifer due to unplanned groundwater extraction is a major...