Numerical models constitute the most advanced physical-based methods for modeling complex ground water systems. Spatial and/or temporal variability of aquifer parameters, boundary conditions, and initial conditions (for transient simulations) can be assigned across the numerical model domain. While this constitutes a powerful modeling advantage, it also presents the formidable challenge of overcoming parameter uncertainty, which, to date, has not been satisfactorily resolved, inevitably producing model prediction errors. In previous research, artificial neural networks (ANNs), developed with more accessible field data, have achieved excellent predictive accuracy over discrete stress periods at site-specific field locations in complex ground...
Δημοσίευση σε επιστημονικό περιοδικόSummarization: A relatively new method of addressing different h...
Summarization: A Differential Evolution (DE) algorithm is combined with an Artificial Neural Network...
Not AvailableIn view of worldwide concern for the sustainability of groundwater resources, basin-wid...
ABSTRACT: Artificial Neural Networks (ANNs) are massively parallel distributed processors made up of...
International audienceThis chapter describes Artificial Neural Network optimization technique and Wa...
Abstract: In this paper, prediction capability of a hybrid Artificial Neural Networks (ANN) was inve...
Summarization: A relatively new method of addressing different hydrological problems is the use of a...
The proper design, development, and appropriate tuning of the Hybrid Neural Network architecture, ma...
Summarization: In the recent past, Artificial Neural Networks (ANNs) have found application in many ...
In recent years, drought and demand growth in most parts of the county have caused a dramatic increa...
Δημοσίευση σε επιστημονικό περιοδικόSummarization: A relatively new method of addressing different h...
Summarization: A Differential Evolution (DE) algorithm is combined with an Artificial Neural Network...
Not AvailableIn view of worldwide concern for the sustainability of groundwater resources, basin-wid...
ABSTRACT: Artificial Neural Networks (ANNs) are massively parallel distributed processors made up of...
International audienceThis chapter describes Artificial Neural Network optimization technique and Wa...
Abstract: In this paper, prediction capability of a hybrid Artificial Neural Networks (ANN) was inve...
Summarization: A relatively new method of addressing different hydrological problems is the use of a...
The proper design, development, and appropriate tuning of the Hybrid Neural Network architecture, ma...
Summarization: In the recent past, Artificial Neural Networks (ANNs) have found application in many ...
In recent years, drought and demand growth in most parts of the county have caused a dramatic increa...
Δημοσίευση σε επιστημονικό περιοδικόSummarization: A relatively new method of addressing different h...
Summarization: A Differential Evolution (DE) algorithm is combined with an Artificial Neural Network...
Not AvailableIn view of worldwide concern for the sustainability of groundwater resources, basin-wid...