For highly structured subsurface, the use of strong prior information in geophysical inversion produces realistic models. Machine learning methods allow to encode or parameterize such models with a low dimensional representation. These methods require a large number of examples to learn such latent or intrinsic parameterization. By using deep generative models, inversion is performed in a latent space and resulting models display the desired patterns. However, the degree of nonlinearity for the generative mapping (which goes from latent to original representation) dictates how useful the parameterization is for tasks other than mere compression. After recognizing that changes in curvature and topology are the main cause of such nonlinearity...
Geophysical data, measured at the Earth’s surface or in boreholes, are used to image the distributio...
The optimization of inversion algorithms, coupled with increasing high-performance computing capabil...
Inversion is a widely adopted tool to estimate the subsurface elastic properties of the Earth from s...
For highly structured subsurface, the use of strong prior information in geophysical inversion produ...
When solving inverse problems in geophysical imaging, deep generative models (DGMs) may be used to e...
Prior information regarding subsurface spatial patterns may be used in geophysical inversion to obta...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Environmental models of the subsurface usually require the estimation of high-dimensional spatially-...
The vast majority of the Earth system is inaccessible to direct observation. Consequently, the struc...
The aim of this PhD project was to develop a method for implicit structural inversion of geophysical...
The aim of this PhD project was to develop a method for implicit structural inversion of geophysical...
Geophysical data, measured at the Earth’s surface or in boreholes, are used to image the distributio...
The optimization of inversion algorithms, coupled with increasing high-performance computing capabil...
Inversion is a widely adopted tool to estimate the subsurface elastic properties of the Earth from s...
For highly structured subsurface, the use of strong prior information in geophysical inversion produ...
When solving inverse problems in geophysical imaging, deep generative models (DGMs) may be used to e...
Prior information regarding subsurface spatial patterns may be used in geophysical inversion to obta...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Environmental models of the subsurface usually require the estimation of high-dimensional spatially-...
The vast majority of the Earth system is inaccessible to direct observation. Consequently, the struc...
The aim of this PhD project was to develop a method for implicit structural inversion of geophysical...
The aim of this PhD project was to develop a method for implicit structural inversion of geophysical...
Geophysical data, measured at the Earth’s surface or in boreholes, are used to image the distributio...
The optimization of inversion algorithms, coupled with increasing high-performance computing capabil...
Inversion is a widely adopted tool to estimate the subsurface elastic properties of the Earth from s...