International audienceA deep learning surrogate for the direct numerical prediction of two-dimensional acoustic waves propagation and scattering with obstacles is developed through an auto-regressive spatio- temporal convolutional neural network. A single database of high-fidelity lattice Boltzmann temporal simulations is employed in the training of the network, achieving accurate predictions for long simulation times for a variety of test cases, representative of bounded and unbounded configurations. The capacity of the network to extrapolate outside the manifold of examples seen during the training phase is demonstrated by the obtaining of accurate acoustic predic- tions for relevant applications, such as the scattering of acoustic waves ...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
We investigate the performance of fully convolutional networks to simulate the motion and interactio...
The spatial information about a sound source is carried by acoustic waves to a microphone array and ...
International audienceA deep learning surrogate for the direct numerical temporal prediction of two-...
International audienceA novel approach for numerically propagating acoustic waves in two-dimensional...
Using traditional computational fluid dynamics and aeroacoustics methods, the accurate simulation of...
In this paper, we present a deep learning technique for data-driven predictions of wave propagation ...
In this thesis we have analysed the behaviour of a physics informed neural network and it’s competen...
Sound propagation is commonly known to be air pressure perturbations due to vibrating/moving objects...
Partial differential equations formalise the understanding of the behaviour of the physical world th...
We propose a deep learning approach for wave propagation in media with multiscale wave speed, using ...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...
Underwater noise transmission in the ocean environment is a complex physical phenomenon involving no...
Underwater ocean acoustics is a complex physical phenomenon involving not only widely varying physic...
A novel method for the localization to identify acoustic sources was proposed by utilizing time reve...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
We investigate the performance of fully convolutional networks to simulate the motion and interactio...
The spatial information about a sound source is carried by acoustic waves to a microphone array and ...
International audienceA deep learning surrogate for the direct numerical temporal prediction of two-...
International audienceA novel approach for numerically propagating acoustic waves in two-dimensional...
Using traditional computational fluid dynamics and aeroacoustics methods, the accurate simulation of...
In this paper, we present a deep learning technique for data-driven predictions of wave propagation ...
In this thesis we have analysed the behaviour of a physics informed neural network and it’s competen...
Sound propagation is commonly known to be air pressure perturbations due to vibrating/moving objects...
Partial differential equations formalise the understanding of the behaviour of the physical world th...
We propose a deep learning approach for wave propagation in media with multiscale wave speed, using ...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...
Underwater noise transmission in the ocean environment is a complex physical phenomenon involving no...
Underwater ocean acoustics is a complex physical phenomenon involving not only widely varying physic...
A novel method for the localization to identify acoustic sources was proposed by utilizing time reve...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
We investigate the performance of fully convolutional networks to simulate the motion and interactio...
The spatial information about a sound source is carried by acoustic waves to a microphone array and ...