Inspired by applications in optimal control of semilinear elliptic partial differential equations and physics-integrated imaging, differential equation constrained optimization problems with constituents that are only accessible through data-driven techniques are studied. A particular focus is on the analysis and on numerical methods for problems with machine-learned components. For a rather general context, an error analysis is provided, and particular properties resulting from artificial neural network based approximations are addressed. Moreover, for each of the two inspiring applications analytical details are presented and numerical results are provided
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
In this paper we study the optimal control of a class of semilinear elliptic partial differential eq...
International audienceThis paper is concerned with the approximation of the solution of partial diff...
Inspired by applications in optimal control of semilinear elliptic partial differential equations an...
The objectives of this study are the analysis and design of efficient computational methods for deep...
In the present work we explore numerical methods inspired by optimal control theory to train image c...
Artificial Neural Networks are known as powerful models capable of discovering complicated patterns ...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Many optimization models of neural networks need constraints to restrict the space of outputs to a ...
We propose a machine learning framework to accelerate numerical computations of time-dependent ODEs ...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
technique is presented to solve Partial Differential Equations (PDEs). The technique is based on con...
Both computer graphics and neural networks are related, in that they model natural phenomena. Physic...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
In this paper we study the optimal control of a class of semilinear elliptic partial differential eq...
International audienceThis paper is concerned with the approximation of the solution of partial diff...
Inspired by applications in optimal control of semilinear elliptic partial differential equations an...
The objectives of this study are the analysis and design of efficient computational methods for deep...
In the present work we explore numerical methods inspired by optimal control theory to train image c...
Artificial Neural Networks are known as powerful models capable of discovering complicated patterns ...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Many optimization models of neural networks need constraints to restrict the space of outputs to a ...
We propose a machine learning framework to accelerate numerical computations of time-dependent ODEs ...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
technique is presented to solve Partial Differential Equations (PDEs). The technique is based on con...
Both computer graphics and neural networks are related, in that they model natural phenomena. Physic...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
Recent works have shown that deep neural networks can be employed to solve partial differential equa...
In this paper we study the optimal control of a class of semilinear elliptic partial differential eq...
International audienceThis paper is concerned with the approximation of the solution of partial diff...