Physics-based deep learning experienced a major breakthrough a few years ago with the advent of neural operators. Beyond the traditional use of deep neural networks to predict the solution to a fixed Partial Differential Equation (PDE), these novel methods are able to learn the operator solution to a class of PDEs.Comparisons and analyses of popular neural operators such as Fourier Neural Operator and DeepONet have been conducted for numerical case studies. However, they are still lacking for more realistic problems in complex settings.In this study, we compare several neural operators to predict the propagation of seismic waves in heterogeneous media. Our database is composed of more than 12 million ground motion timeseries generated from ...
Partial differential equations formalise the understanding of the behaviour of the physical world th...
Earthquakes are one of the most destructive natural phenomena, both in terms of human lives, and pro...
We investigate the application of multilayer perceptron neural networks on the inversion of waveform...
With the recent rise of neural operators, scientific machine learning offers new solutions to quanti...
The ultimate goal of seismic data analysis is to retrieve high-resolution information about the subs...
Seismic waveform modeling is a powerful tool for determining earth structure models and unraveling e...
In this article, a novel strategy to generate broadband earthquake ground motions from the results o...
In this thesis we have analysed the behaviour of a physics informed neural network and it’s competen...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
We propose a new approach to the solution of the wave propagation and full waveform inversions (FWIs...
We investigate deep learning approaches to inversion of a 1D model of the subsurface using synthetic...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...
International audienceA novel approach for numerically propagating acoustic waves in two-dimensional...
Applications of neural network algorithms in rock physics have developed rapidly developed, mainly d...
In this thesis, we focus on developing neural networks algorithms for scientific computing. First, w...
Partial differential equations formalise the understanding of the behaviour of the physical world th...
Earthquakes are one of the most destructive natural phenomena, both in terms of human lives, and pro...
We investigate the application of multilayer perceptron neural networks on the inversion of waveform...
With the recent rise of neural operators, scientific machine learning offers new solutions to quanti...
The ultimate goal of seismic data analysis is to retrieve high-resolution information about the subs...
Seismic waveform modeling is a powerful tool for determining earth structure models and unraveling e...
In this article, a novel strategy to generate broadband earthquake ground motions from the results o...
In this thesis we have analysed the behaviour of a physics informed neural network and it’s competen...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
We propose a new approach to the solution of the wave propagation and full waveform inversions (FWIs...
We investigate deep learning approaches to inversion of a 1D model of the subsurface using synthetic...
Finite elements methods (FEMs) have benefited from decades of development to solve partial different...
International audienceA novel approach for numerically propagating acoustic waves in two-dimensional...
Applications of neural network algorithms in rock physics have developed rapidly developed, mainly d...
In this thesis, we focus on developing neural networks algorithms for scientific computing. First, w...
Partial differential equations formalise the understanding of the behaviour of the physical world th...
Earthquakes are one of the most destructive natural phenomena, both in terms of human lives, and pro...
We investigate the application of multilayer perceptron neural networks on the inversion of waveform...