International audienceEffective inclusion of physics-based knowledge into deep neural network models of dynamical systems can greatly improve data efficiency and generalization. Such a priori knowledge might arise from physical principles (e.g., conservation laws) or from the system's design (e.g., the Jacobian matrix of a robot), even if large portions of the system dynamics remain unknown. We develop a framework to learn dynamics models from trajectory data while incorporating a priori system knowledge as inductive bias. More specifically, the proposed framework uses physics-based side information to inform the structure of the neural network itself, and to place constraints on the values of the outputs and the internal states of the mode...
Learning physically structured representations of dynamical systems that include contact between dif...
In this thesis, a one-step approximation method has been used to produce approximations of two dynam...
The solution of time dependent differential equations with neural networks has attracted a lot of at...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
Deep learning has achieved astonishing results on many tasks with large amounts of data and generali...
A fundamental problem of robotics is how can one program a robot to perform a task with its limited ...
It has been successfully demonstrated that synchronisation of physical prior, like conservation laws...
Deep learning has achieved astonishing results on many tasks with large amounts of data and general...
Dynamic models of mechatronic systems are abundantly used in the context of motion control and desig...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
This study examines the use of neural networks for prediction of dynamical systems. After a brief in...
The poster presents a new family of deep neural network-based dynamic systems and how these dynamics...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
International audienceThe reliable prediction of the temporal behavior of complex systems is key in ...
Learning physically structured representations of dynamical systems that include contact between dif...
In this thesis, a one-step approximation method has been used to produce approximations of two dynam...
The solution of time dependent differential equations with neural networks has attracted a lot of at...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
Deep learning has achieved astonishing results on many tasks with large amounts of data and generali...
A fundamental problem of robotics is how can one program a robot to perform a task with its limited ...
It has been successfully demonstrated that synchronisation of physical prior, like conservation laws...
Deep learning has achieved astonishing results on many tasks with large amounts of data and general...
Dynamic models of mechatronic systems are abundantly used in the context of motion control and desig...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
This study examines the use of neural networks for prediction of dynamical systems. After a brief in...
The poster presents a new family of deep neural network-based dynamic systems and how these dynamics...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
International audienceThe reliable prediction of the temporal behavior of complex systems is key in ...
Learning physically structured representations of dynamical systems that include contact between dif...
In this thesis, a one-step approximation method has been used to produce approximations of two dynam...
The solution of time dependent differential equations with neural networks has attracted a lot of at...