Dynamic optimization problems based on computationally expensive models that embody the dynamics of a mechatronic system can result in prohibitively long optimization runs. When facing optimization problems with static models, reduction in the computational time and thus attaining convergence can be established by means of a metamodel placed within a metamodel management scheme. This paper proposes a metamodel management scheme with a dedicated sampling strategy when using computationally demanding dynamic models in a dynamic optimization problem context. The dedicated sampling strategy enables to attain dynamically feasible solutions where the metamodel is locally refined during the optimization process upon satisfying a feasibility-based ...
AbstractThis paper presents a sequential dynamic optimization methodology applicable to solve the op...
Optimization of production systems often involves numerous simulations of computationally expensive ...
We consider a bilevel parameter tuning problem where the goal is to maximize the performance of a gi...
Dynamic optimization problems based on computationally expensive models that embody the dynamics of ...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
<p>Dynamic optimization problems directly incorporate detailed dynamic models as constraints within ...
Dans la pratique, beaucoup de problèmes d'optimisation sont dynamiques : leur fonction objectif (ou ...
We consider how simulation metamodels can be used to optimize the performance of a system that depen...
This book is an updated effort in summarizing the trending topics and new hot research lines in solv...
We present the Adaptive Approximate Dynamic Optimization (AADO) algorithm and elaborate on its appli...
Many real-world optimization problems are combinatorial optimization problems subject to dynamic env...
The work is within the EMOPAC project (project no 16317) granted by the Swedish Knowledge Foundation...
The use of approximate models or metamodeling has lead to new areas of research in the optimization ...
Optimal control; dynamic optimization; surrogate based optimization; kriging; system identificationT...
The classic design- and simulation methodologies, that are constituting today’s engineer main tools,...
AbstractThis paper presents a sequential dynamic optimization methodology applicable to solve the op...
Optimization of production systems often involves numerous simulations of computationally expensive ...
We consider a bilevel parameter tuning problem where the goal is to maximize the performance of a gi...
Dynamic optimization problems based on computationally expensive models that embody the dynamics of ...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
<p>Dynamic optimization problems directly incorporate detailed dynamic models as constraints within ...
Dans la pratique, beaucoup de problèmes d'optimisation sont dynamiques : leur fonction objectif (ou ...
We consider how simulation metamodels can be used to optimize the performance of a system that depen...
This book is an updated effort in summarizing the trending topics and new hot research lines in solv...
We present the Adaptive Approximate Dynamic Optimization (AADO) algorithm and elaborate on its appli...
Many real-world optimization problems are combinatorial optimization problems subject to dynamic env...
The work is within the EMOPAC project (project no 16317) granted by the Swedish Knowledge Foundation...
The use of approximate models or metamodeling has lead to new areas of research in the optimization ...
Optimal control; dynamic optimization; surrogate based optimization; kriging; system identificationT...
The classic design- and simulation methodologies, that are constituting today’s engineer main tools,...
AbstractThis paper presents a sequential dynamic optimization methodology applicable to solve the op...
Optimization of production systems often involves numerous simulations of computationally expensive ...
We consider a bilevel parameter tuning problem where the goal is to maximize the performance of a gi...