This paper investigates the application of Physics-Informed Neural Networks (PINNs) to inverse problems in unsaturated groundwater flow. PINNs are applied to the types of unsaturated groundwater flow problems modelled with the Richards partial differential equation and the van Genuchten constitutive model. The inverse problem is formulated here as a problem with known or measured values of the solution to the Richards equation at several spatio-temporal instances, and unknown values of solution at the rest of the problem domain and unknown parameters of the van Genuchten model. PINNs solve inverse problems by reformulating the loss function of a deep neural network such that it simultaneously aims to satisfy the measured values and the unkn...
For a steady state convection problem, assuming given concentration field values in a few measuremen...
Numerical codes and results for the article: Modeling water flow and solute transport in unsaturated...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...
Physics-informed neural networks (PINNs) have recently been applied to a wide range of computational...
Abstract: In this paper, prediction capability of a hybrid Artificial Neural Networks (ANN) was inve...
We propose a solution strategy for parameter identification in multiphase thermo-hydro-mechanical (T...
In this study, we will address the problem of localising a source of pollutant given a sparse set of...
This paper investigates the feasibility of solving the groundwater pollution inverse problem by usin...
This study proposes an artificial neural network (ANN) model to solve an inverse parameter identific...
After a short introduction and main issues associated with inverse problem, three examples are chose...
The solution to a variety of engineering problems entails the simulation of a physical system. The m...
Artificial neural network (ANN) is considered to be a universal function approximator, and genetic a...
This paper introduces a novel approach to solve inverse problems by leveraging deep learning techniq...
Datasets for the two-and three-dimensional problem in the paper: Solving inverse problems using cond...
ABSTRACT: Artificial Neural Networks (ANNs) are massively parallel distributed processors made up of...
For a steady state convection problem, assuming given concentration field values in a few measuremen...
Numerical codes and results for the article: Modeling water flow and solute transport in unsaturated...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...
Physics-informed neural networks (PINNs) have recently been applied to a wide range of computational...
Abstract: In this paper, prediction capability of a hybrid Artificial Neural Networks (ANN) was inve...
We propose a solution strategy for parameter identification in multiphase thermo-hydro-mechanical (T...
In this study, we will address the problem of localising a source of pollutant given a sparse set of...
This paper investigates the feasibility of solving the groundwater pollution inverse problem by usin...
This study proposes an artificial neural network (ANN) model to solve an inverse parameter identific...
After a short introduction and main issues associated with inverse problem, three examples are chose...
The solution to a variety of engineering problems entails the simulation of a physical system. The m...
Artificial neural network (ANN) is considered to be a universal function approximator, and genetic a...
This paper introduces a novel approach to solve inverse problems by leveraging deep learning techniq...
Datasets for the two-and three-dimensional problem in the paper: Solving inverse problems using cond...
ABSTRACT: Artificial Neural Networks (ANNs) are massively parallel distributed processors made up of...
For a steady state convection problem, assuming given concentration field values in a few measuremen...
Numerical codes and results for the article: Modeling water flow and solute transport in unsaturated...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...