We perform a comprehensive numerical study of the effect of approximation-theoretical results for neural networks on practical learning problems in the context of numerical analysis. As the underlying model, we study the machine-learning-based solution of parametric partial differential equations. Here, approximation theory for fully-connected neural networks predicts that the performance of the model should depend only very mildly on the dimension of the parameter space and is determined by the intrinsic dimension of the solution manifold of the parametric partial differential equation. We use various methods to establish comparability between test-cases by minimizing the effect of the choice of test-cases on the optimization and sam...
Physics-informed neural networks (PINNs) numerically approximate the solution of a partial different...
Deep learning-based numerical schemes such as Physically Informed Neural Networks (PINNs) have recen...
Deep learning-based numerical schemes such as Physically Informed Neural Networks (PINNs) have recen...
We perform a comprehensive numerical study of the effect of approximation-theoretical results for ne...
We derive upper bounds on the complexity of ReLU neural networks approximating the solution maps of ...
We propose a very general framework for deriving rigorous bounds on the approximation error for phys...
The approach of using physics-based machine learning to solve PDEs has recently become very popular....
Differential equations are ubiquitous in many fields of study, yet not all equations, whether ordina...
Deep neural networks and other deep learning methods have very successfully been applied to the nume...
Implementing deep neural networks for learning the solution maps of parametric partial differential ...
This cumulative dissertation extends the theory of neural networks (NNs). In the first part of this ...
The past decade has seen increasing interest in applying Deep Learning (DL) to Computational Science...
We investigate numerous structural connections between numerical algorithms for partial differential...
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
It is one of the most challenging problems in applied mathematics to approximatively solve high-dime...
Physics-informed neural networks (PINNs) numerically approximate the solution of a partial different...
Deep learning-based numerical schemes such as Physically Informed Neural Networks (PINNs) have recen...
Deep learning-based numerical schemes such as Physically Informed Neural Networks (PINNs) have recen...
We perform a comprehensive numerical study of the effect of approximation-theoretical results for ne...
We derive upper bounds on the complexity of ReLU neural networks approximating the solution maps of ...
We propose a very general framework for deriving rigorous bounds on the approximation error for phys...
The approach of using physics-based machine learning to solve PDEs has recently become very popular....
Differential equations are ubiquitous in many fields of study, yet not all equations, whether ordina...
Deep neural networks and other deep learning methods have very successfully been applied to the nume...
Implementing deep neural networks for learning the solution maps of parametric partial differential ...
This cumulative dissertation extends the theory of neural networks (NNs). In the first part of this ...
The past decade has seen increasing interest in applying Deep Learning (DL) to Computational Science...
We investigate numerous structural connections between numerical algorithms for partial differential...
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
It is one of the most challenging problems in applied mathematics to approximatively solve high-dime...
Physics-informed neural networks (PINNs) numerically approximate the solution of a partial different...
Deep learning-based numerical schemes such as Physically Informed Neural Networks (PINNs) have recen...
Deep learning-based numerical schemes such as Physically Informed Neural Networks (PINNs) have recen...