International audienceWe have developed a multilevel and adaption parametric strategies solved by optimization algorithms which require only the availability of objective function values but no derivative information. The key success of these hierarchical strategies refer to the quality of the downward and upward transfers of information. In this paper, we extend our approach when using a derivative-based optimization algorithms. The aim is to better re-initialize the Hessian and the gradient during the optimization process based on our construction of the downward and upward operators. The efficiency of this proposed approach is demonstrated by numerical experiments on an inverse shape model
International audienceThe essential numerical features of multilevel strategies developed for parame...
Abstract. A general framework for calculating shape derivatives for optimiza-tion problems with part...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...
International audienceWe have developed a multilevel and adaption parametric strategies solved by op...
International audienceOur efforts are mostly concentrated on improving the convergence rate of the n...
Abstract. We develop a method for optimization in shape spaces, i.e., sets of surfaces modulo re-par...
We develop a method for optimization in shape spaces, i.e., sets of surfaces modulo re-parametrizati...
This research concerns the algorithmic study of Hessian approximation in the context of multilevel n...
This article is a sequel of [6], in which we dened formally a hierarchical shape optimization method...
Modern methods for numerical optimization calculate (or approximate) the matrix of second derivative...
In design optimization and parameter identi cation, the objective, or response function (s) are typ...
This paper develops a modified quasi-Newton method for structured unconstrained optimization with pa...
Optimization problems with different levels arise by discretization of ordinary and partial differen...
There are several benefits of taking the Hessian of the objective function into account when designi...
International audienceIn this paper we derive a multi-dimensional mesh adaptation method which produ...
International audienceThe essential numerical features of multilevel strategies developed for parame...
Abstract. A general framework for calculating shape derivatives for optimiza-tion problems with part...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...
International audienceWe have developed a multilevel and adaption parametric strategies solved by op...
International audienceOur efforts are mostly concentrated on improving the convergence rate of the n...
Abstract. We develop a method for optimization in shape spaces, i.e., sets of surfaces modulo re-par...
We develop a method for optimization in shape spaces, i.e., sets of surfaces modulo re-parametrizati...
This research concerns the algorithmic study of Hessian approximation in the context of multilevel n...
This article is a sequel of [6], in which we dened formally a hierarchical shape optimization method...
Modern methods for numerical optimization calculate (or approximate) the matrix of second derivative...
In design optimization and parameter identi cation, the objective, or response function (s) are typ...
This paper develops a modified quasi-Newton method for structured unconstrained optimization with pa...
Optimization problems with different levels arise by discretization of ordinary and partial differen...
There are several benefits of taking the Hessian of the objective function into account when designi...
International audienceIn this paper we derive a multi-dimensional mesh adaptation method which produ...
International audienceThe essential numerical features of multilevel strategies developed for parame...
Abstract. A general framework for calculating shape derivatives for optimiza-tion problems with part...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...