The reliable and accurate prediction of groundwater levels is important to improve water-use efficiency in the development and management of water resources. Three nonlinear time-series intelligence hybrid models were proposed to predict groundwater level fluctuations through a combination of ensemble empirical mode decomposition (EEMD) and data-driven models (i.e., artificial neural networks (ANN), support vector machines (SVM) and adaptive neuro fuzzy inference systems (ANFIS)), respectively. The prediction capability of EEMD-ANN, EEMD-SVM, and EEMD-ANFIS hybrid models was investigated using a monthly groundwater level time series collected from two observation wells near Lake Okeechobee in Florida. The statistical parameters correlation ...
The goal of this thesis is to develop a forecast-based framework to support groundwater management i...
International audienceGroundwater level prediction is an applied time series forecasting task with i...
With the effects of climate change such as increasing heat, higher rainfall, and more recurrent extr...
The reliable and accurate prediction of groundwater levels is important to improve water-use efficie...
44-50Prediction of groundwater level is implemented using Time-series prediction model and combined ...
Fluctuation of groundwater levels around the world is an important theme in hydrological research. R...
Abstract Groundwater level fluctuations are one of the main components of the hydrogeological cycle ...
Developing accurate soft computing methods for groundwater level (GWL) forecasting is essential for ...
Predicting groundwater levels is critical for ensuring sustainable use of an aquifer’s limited groun...
A two-level modeling strategy is formulated to predict groundwater levels (GWL) within a portion of ...
Groundwater is a crucial source of water supply in drought conditions, and an auxiliary water source...
Summarization: A proper design of the architecture of Artificial Neural Network (ANN) models can pro...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
The proper design, development, and appropriate tuning of the Hybrid Neural Network architecture, ma...
The goal of this thesis is to develop a forecast-based framework to support groundwater management i...
International audienceGroundwater level prediction is an applied time series forecasting task with i...
With the effects of climate change such as increasing heat, higher rainfall, and more recurrent extr...
The reliable and accurate prediction of groundwater levels is important to improve water-use efficie...
44-50Prediction of groundwater level is implemented using Time-series prediction model and combined ...
Fluctuation of groundwater levels around the world is an important theme in hydrological research. R...
Abstract Groundwater level fluctuations are one of the main components of the hydrogeological cycle ...
Developing accurate soft computing methods for groundwater level (GWL) forecasting is essential for ...
Predicting groundwater levels is critical for ensuring sustainable use of an aquifer’s limited groun...
A two-level modeling strategy is formulated to predict groundwater levels (GWL) within a portion of ...
Groundwater is a crucial source of water supply in drought conditions, and an auxiliary water source...
Summarization: A proper design of the architecture of Artificial Neural Network (ANN) models can pro...
Groundwater is a vital source of freshwater, supporting the livelihood of over two billion people wo...
The proper design, development, and appropriate tuning of the Hybrid Neural Network architecture, ma...
The goal of this thesis is to develop a forecast-based framework to support groundwater management i...
International audienceGroundwater level prediction is an applied time series forecasting task with i...
With the effects of climate change such as increasing heat, higher rainfall, and more recurrent extr...