International audienceThe Neighborhood Algorithm (NA) is a popular direct search inversion technique. For dispersion curve inversion, physical conditions between parameters V s and V p (linked by Poisson's ratio) may limit the parameter space with complex boundaries. Other conditions may come from prior information about the geological structure. Irregular limits are not natively handled by classical search algorithms. In this paper, we extend the NA formulation to such parameter spaces. For problems affected by non-uniqueness, the ideal solution is made of the ensemble of all models that equally fits the data and prior information. Hence, a powerful exploration tool is required. Exploiting the properties of the Voronoi cells, we show that ...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
International audienceGraphical models factorize a global probability distribution/energy function a...
The methods of intensification and diversification are indispensable in successful meta heuristics f...
International audienceThe Neighborhood Algorithm (NA) is a popular direct search inversion technique...
This paper presents a new derivative-free search method for finding models of acceptable data fit in...
A recently proposed new class of direct search method is applied to the problem of mapping out the r...
Issues controlling efficient parallel implementations of a popular direct search inversion algorithm...
A geophysical inverse problem consists in obtaining the earth model for which the predicted data bes...
The full characterization of a seismic source requires the specification of the hypocentre location ...
the article presents the definition of dynamic linear neighborhood models. An algorithm for finding ...
International audienceDespite the huge number of studies in the metaheuristic field, it remains diff...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...
International audienceA goal of geophysical inversion is to identify all models which give an accept...
AbstractMany optimization problems of practical interest are computationally intractable. Therefore,...
We consider a multi-neighborhood local search algorithm with a large number of possible neighborhood...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
International audienceGraphical models factorize a global probability distribution/energy function a...
The methods of intensification and diversification are indispensable in successful meta heuristics f...
International audienceThe Neighborhood Algorithm (NA) is a popular direct search inversion technique...
This paper presents a new derivative-free search method for finding models of acceptable data fit in...
A recently proposed new class of direct search method is applied to the problem of mapping out the r...
Issues controlling efficient parallel implementations of a popular direct search inversion algorithm...
A geophysical inverse problem consists in obtaining the earth model for which the predicted data bes...
The full characterization of a seismic source requires the specification of the hypocentre location ...
the article presents the definition of dynamic linear neighborhood models. An algorithm for finding ...
International audienceDespite the huge number of studies in the metaheuristic field, it remains diff...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...
International audienceA goal of geophysical inversion is to identify all models which give an accept...
AbstractMany optimization problems of practical interest are computationally intractable. Therefore,...
We consider a multi-neighborhood local search algorithm with a large number of possible neighborhood...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
International audienceGraphical models factorize a global probability distribution/energy function a...
The methods of intensification and diversification are indispensable in successful meta heuristics f...