A reduced basis method based on a physics-informed machine learning framework is developed for efficient reduced-order modeling of parametrized partial differential equations (PDEs). A feedforward neural network is used to approximate the mapping from the time-parameter to the reduced coefficients. During the offline stage, the network is trained by minimizing the weighted sum of the residual loss of the reduced-order equations, and the data loss of the labeled reduced coefficients that are obtained via the projection of high-fidelity snapshots onto the reduced space. Such a network is referred to as physics-reinforced neural network (PRNN). As the number of residual points in time-parameter space can be very large, an accurate network – re...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
In an attempt to find alternatives for solving partial differential equations (PDEs)with traditional...
A physics-informed machine learning framework is developed for the reduced-order modeling of paramet...
Repeatedly solving nonlinear partial differential equations with varying parameters is often an esse...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
We develop a non-intrusive reduced basis (RB) method for parametrized steady-state partial different...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
In an attempt to find alternatives for solving partial differential equations (PDEs)with traditional...
A physics-informed machine learning framework is developed for the reduced-order modeling of paramet...
Repeatedly solving nonlinear partial differential equations with varying parameters is often an esse...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
We develop a non-intrusive reduced basis (RB) method for parametrized steady-state partial different...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
In an attempt to find alternatives for solving partial differential equations (PDEs)with traditional...