Neural networks are a central technique in machine learning. Recent years have seen a wave of interest in applying neural networks to physical systems for which the governing dynamics are known and expressed through differential equations. Two fundamental challenges facing the development of neural networks in physics applications is their lack of interpretability and their physics-agnostic design. The focus of the present work is to embed physical constraints into the structure of the neural network to address the second fundamental challenge. By constraining tunable parameters (such as weights and biases) and adding special layers to the network, the desired constraints are guaranteed to be satisfied without the need for explicit...
The solution to a variety of engineering problems entails the simulation of a physical system. The m...
Motivated by classical molecular dynamics simulations of infinite nuclear systems with varying densi...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Neural networks are a central technique in machine learning. Recent years have seen a wave of inter...
We develop a method to learn physical systems from data that employs feedforward neural networks and...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Physics-informed neural networks have gained growing interest. Specifically, they are used to solve ...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
The solution of time dependent differential equations with neural networks has attracted a lot of at...
Numerous examples of physically unjustified neural networks, despite satisfactory performance, gener...
AbstractAn open problem concerning the computational power of neural networks with symmetric weights...
Abstract Machine learning is playing an increasing role in the physical sciences and significant pro...
An energy-based a posteriori error bound is proposed for the physics-informed neural network solutio...
Slinky, a helical elastic rod, is a seemingly simple structure with unusual mechanical behavior; for...
The solution to a variety of engineering problems entails the simulation of a physical system. The m...
Motivated by classical molecular dynamics simulations of infinite nuclear systems with varying densi...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Neural networks are a central technique in machine learning. Recent years have seen a wave of inter...
We develop a method to learn physical systems from data that employs feedforward neural networks and...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Physics-informed neural networks have gained growing interest. Specifically, they are used to solve ...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
The solution of time dependent differential equations with neural networks has attracted a lot of at...
Numerous examples of physically unjustified neural networks, despite satisfactory performance, gener...
AbstractAn open problem concerning the computational power of neural networks with symmetric weights...
Abstract Machine learning is playing an increasing role in the physical sciences and significant pro...
An energy-based a posteriori error bound is proposed for the physics-informed neural network solutio...
Slinky, a helical elastic rod, is a seemingly simple structure with unusual mechanical behavior; for...
The solution to a variety of engineering problems entails the simulation of a physical system. The m...
Motivated by classical molecular dynamics simulations of infinite nuclear systems with varying densi...
Development and applications of neural network (NN)-based approaches for representing potential ener...