We develop a method to learn physical systems from data that employs feedforward neural networks and whose predictions comply with the first and second principles of thermodynamics. The method employs a minimum amount of data by enforcing the metriplectic structure of dissipative Hamiltonian systems in the form of the so-called General Equation for the Non-Equilibrium Reversible-Irreversible Coupling, GENERIC (Öttinger and Grmela (1997) [36]). The method does not need to enforce any kind of balance equation, and thus no previous knowledge on the nature of the system is needed. Conservation of energy and dissipation of entropy in the prediction of previously unseen situations arise as a natural by-product of the structure of the method. Exam...
Neural networks are a central technique in machine learning. Recent years have seen a wave of inter...
International audienceThe damage of mechanical structures is a permanent concern in engineering, rel...
We present a method for the data-driven learning of physical phenomena whose evolution in time depen...
We develop a method to learn physical systems from data that employs feedforward neural networks and...
We develop inductive biases for the machine learning of complex physical systems based on the port-H...
International audienceWe present an algorithm to learn the relevant latent variables of a large-scal...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
It has been successfully demonstrated that synchronisation of physical prior, like conservation laws...
The solution of time dependent differential equations with neural networks has attracted a lot of at...
In the paradigm of data-intensive science, automated, unsupervised discovering of governing equation...
We propose the GENERIC formalism informed neural networks (GFINNs) that obey the symmetric degenerac...
Conservation of energy is at the core of many physical phenomena and dynamical systems. There have b...
In this paper we present a deep learning method to predict the temporal evolution of dissipative dyn...
Despite the immense success of neural networks in modeling system dynamics from data, they often rem...
We propose a new class of data-driven, physics-based, neural networks for constitutive modeling of s...
Neural networks are a central technique in machine learning. Recent years have seen a wave of inter...
International audienceThe damage of mechanical structures is a permanent concern in engineering, rel...
We present a method for the data-driven learning of physical phenomena whose evolution in time depen...
We develop a method to learn physical systems from data that employs feedforward neural networks and...
We develop inductive biases for the machine learning of complex physical systems based on the port-H...
International audienceWe present an algorithm to learn the relevant latent variables of a large-scal...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
It has been successfully demonstrated that synchronisation of physical prior, like conservation laws...
The solution of time dependent differential equations with neural networks has attracted a lot of at...
In the paradigm of data-intensive science, automated, unsupervised discovering of governing equation...
We propose the GENERIC formalism informed neural networks (GFINNs) that obey the symmetric degenerac...
Conservation of energy is at the core of many physical phenomena and dynamical systems. There have b...
In this paper we present a deep learning method to predict the temporal evolution of dissipative dyn...
Despite the immense success of neural networks in modeling system dynamics from data, they often rem...
We propose a new class of data-driven, physics-based, neural networks for constitutive modeling of s...
Neural networks are a central technique in machine learning. Recent years have seen a wave of inter...
International audienceThe damage of mechanical structures is a permanent concern in engineering, rel...
We present a method for the data-driven learning of physical phenomena whose evolution in time depen...