Surrogate assisted global optimization is gaining popularity. Similarly, modern advances in computing power increasingly rely on parallelization rather than faster processors. This paper examines some of the methods used to take advantage of parallelization in surrogate based global optimization. A key issue focused on in this review is how different algorithms balance exploration and exploitation. Most of the papers surveyed are adaptive samplers that employ Gaussian Process or Kriging surrogates. These allow sophisticated approaches for balancing exploration and exploitation and even allow to develop algorithms with calculable rate of convergence as function of the number of parallel processors. In addition to optimization based on adapti...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
This dissertation explores the development and implementation of Parallel Surrogate-based Optimizati...
The availability of several CPU cores on current computers enables parallelization and increases th...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
International audienceParallel Surrogate-Assisted Evolutionary Algorithms (P-SAEAs) are based on sur...
The modern engineering design optimization relies heavily on high- fidelity computer. Even though, ...
Until recently, optimization was regarded as a discipline of rather theoretical interest, with limit...
International audienceOn the one hand, surrogate-assisted evolutionary algorithms are established as...
The evaluation of aerospace designs is synonymous with the use of long running computationally inten...
This paper presents a parallel surrogate-based global optimization method for computationally expens...
Integrating data-driven surrogate models and simulation models of different accuracies (or fidelitie...
Deliverable no. 2.1.1-BThe sequential sampling strategies based on Gaussian processes are widely use...
When dealing with computationally expensive simulation codes or process measurement data, surrogate ...
Increases in computational power have led to a growing interest in finding global rather than local ...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
This dissertation explores the development and implementation of Parallel Surrogate-based Optimizati...
The availability of several CPU cores on current computers enables parallelization and increases th...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
International audienceParallel Surrogate-Assisted Evolutionary Algorithms (P-SAEAs) are based on sur...
The modern engineering design optimization relies heavily on high- fidelity computer. Even though, ...
Until recently, optimization was regarded as a discipline of rather theoretical interest, with limit...
International audienceOn the one hand, surrogate-assisted evolutionary algorithms are established as...
The evaluation of aerospace designs is synonymous with the use of long running computationally inten...
This paper presents a parallel surrogate-based global optimization method for computationally expens...
Integrating data-driven surrogate models and simulation models of different accuracies (or fidelitie...
Deliverable no. 2.1.1-BThe sequential sampling strategies based on Gaussian processes are widely use...
When dealing with computationally expensive simulation codes or process measurement data, surrogate ...
Increases in computational power have led to a growing interest in finding global rather than local ...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
This dissertation explores the development and implementation of Parallel Surrogate-based Optimizati...