We compare the performance of three different stochastic optimization methods on two analytic objective functions varying the number of parameters, and on a 1D elastic full waveform inversion (FWI) problem. The three methods that we consider are the Adaptive Simulated Annealing (ASA), the Genetic Algorithm (GA), and the Neighbourhood Algorithm (NA) which are frequently used in seismic inversion. The application of these algorithms on the two analytic functions is aimed at evaluating the rate of convergence for different model space dimensions. The first function consists in a convex surface, and the second one is a multi-minima objective function which also permits to verify the ability of each method to escape from entrapment in local mini...
Genetic algorithms use the survival of the fittest analogy from evolution theory to make random walk...
During my Ph.D. program, I have investigated two different topics. The first topic (major topic) add...
Summarization: The objective of this paper is to investigate the efficiency of various optimization ...
We compare the performance of three different stochastic optimization methods on two analytic object...
We compare the performances of four different stochastic optimisation methods using four analytic ob...
A geophysical inverse problem consists in obtaining the earth model for which the predicted data bes...
Stochastic optimization methods, such as genetic algorithms, search for the global minimum of the mi...
We apply stochastic Full Waveform Inversion (FWI) to 2D marine seismic data to estimate the macromod...
Finding an efficient procedure to solve a seismic inversion problem, such as Full Waveform Inversion...
The solution of non-linear geophysical inverse problems presents several challenges mainly related t...
Full-waveform inversion (FWI) tries to estimate velocity models of the subsurface with improved accu...
We have compared the performances of six recently developed global optimization algorithms: imperial...
La tomographie sismique des temps de trajet est un problème d'optimisation mal-posé du fait de la no...
The seismic waveform inversion problem is usually cast into the framework of Bayesian statistics in ...
We experience the application of a genetic algorithm driven full-waveform inversion (GA FWI) on two ...
Genetic algorithms use the survival of the fittest analogy from evolution theory to make random walk...
During my Ph.D. program, I have investigated two different topics. The first topic (major topic) add...
Summarization: The objective of this paper is to investigate the efficiency of various optimization ...
We compare the performance of three different stochastic optimization methods on two analytic object...
We compare the performances of four different stochastic optimisation methods using four analytic ob...
A geophysical inverse problem consists in obtaining the earth model for which the predicted data bes...
Stochastic optimization methods, such as genetic algorithms, search for the global minimum of the mi...
We apply stochastic Full Waveform Inversion (FWI) to 2D marine seismic data to estimate the macromod...
Finding an efficient procedure to solve a seismic inversion problem, such as Full Waveform Inversion...
The solution of non-linear geophysical inverse problems presents several challenges mainly related t...
Full-waveform inversion (FWI) tries to estimate velocity models of the subsurface with improved accu...
We have compared the performances of six recently developed global optimization algorithms: imperial...
La tomographie sismique des temps de trajet est un problème d'optimisation mal-posé du fait de la no...
The seismic waveform inversion problem is usually cast into the framework of Bayesian statistics in ...
We experience the application of a genetic algorithm driven full-waveform inversion (GA FWI) on two ...
Genetic algorithms use the survival of the fittest analogy from evolution theory to make random walk...
During my Ph.D. program, I have investigated two different topics. The first topic (major topic) add...
Summarization: The objective of this paper is to investigate the efficiency of various optimization ...