Seismic traveltime tomography is an ill-posed optimization problem due to the non-linear relationship between traveltime and velocity model. Besides, the solution is not unique as many models are able to explain the observed data. The non-linearity and non-uniqueness issues are typically addressed by using methods relying on Monte Carlo Markov Chain that thoroughly sample the model parameter space. However, these approaches cannot fully handle the computer resources provided by modern supercomputers. In this thesis, I propose to solve seismic traveltime tomography problems using evolutionary algorithms which are population-based stochastic optimization methods inspired by the natural evolution of species. They operate on concurrent individu...
Seismic tomography solves high-dimensional optimization problems to image subsurface structures of E...
International audienceMany problems to be solved in geophysical processing can be expressed in terms...
Genetic algorithms use the survival of the fittest analogy from evolution theory to make random walk...
Seismic traveltime tomography is an ill-posed optimization problem due to the non-linear relationshi...
La tomographie sismique des temps de trajet est un problème d'optimisation mal-posé du fait de la no...
Genetic algorithms have long been employed in seismic tomographic inversion to obtain subsurface mod...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
Tyt. z nagłówka.Bibliogr. s. 464.Inversion of seismic tomography is non-uniqueness and bad-condition...
We compare the performances of four different stochastic optimisation methods using four analytic ob...
First arrival traveltime tomography aims at inferring a seismic wave propagation velocity model from...
International audienceMarkov chain Monte Carlo sampling methods are widely used for non-linear Bayes...
Reflection tomography allows the determination of a velocity model that fits the traveltime data ass...
The seismic waveform inversion problem is usually cast into the framework of Bayesian statistics in ...
La tomographie des temps de première arrivée vise à retrouver un modèle de vitesse de propagation de...
Seismic tomography solves high-dimensional optimization problems to image subsurface structures of E...
International audienceMany problems to be solved in geophysical processing can be expressed in terms...
Genetic algorithms use the survival of the fittest analogy from evolution theory to make random walk...
Seismic traveltime tomography is an ill-posed optimization problem due to the non-linear relationshi...
La tomographie sismique des temps de trajet est un problème d'optimisation mal-posé du fait de la no...
Genetic algorithms have long been employed in seismic tomographic inversion to obtain subsurface mod...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
Tyt. z nagłówka.Bibliogr. s. 464.Inversion of seismic tomography is non-uniqueness and bad-condition...
We compare the performances of four different stochastic optimisation methods using four analytic ob...
First arrival traveltime tomography aims at inferring a seismic wave propagation velocity model from...
International audienceMarkov chain Monte Carlo sampling methods are widely used for non-linear Bayes...
Reflection tomography allows the determination of a velocity model that fits the traveltime data ass...
The seismic waveform inversion problem is usually cast into the framework of Bayesian statistics in ...
La tomographie des temps de première arrivée vise à retrouver un modèle de vitesse de propagation de...
Seismic tomography solves high-dimensional optimization problems to image subsurface structures of E...
International audienceMany problems to be solved in geophysical processing can be expressed in terms...
Genetic algorithms use the survival of the fittest analogy from evolution theory to make random walk...