2005
DOI: 10.1007/978-3-540-44511-1_15
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Surrogate-Assisted Evolutionary Optimization Frameworks for High-Fidelity Engineering Design Problems

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Cited by 96 publications
(72 citation statements)
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“…Several books and literature reviews have described the advances of surrogate-based optimization in recent years (e.g., Jones, 2001;Ong et al, 2005;Jin, 2011;Koziel and Leifsson, 2013;Wang et al, 2014). Surrogate-based optimization has been applied to economics, robotics, chemistry, physics, civil and environmental engineering, computational fluid dynamics, aerospace designs, etc.…”
Section: Introductionmentioning
confidence: 99%
“…Several books and literature reviews have described the advances of surrogate-based optimization in recent years (e.g., Jones, 2001;Ong et al, 2005;Jin, 2011;Koziel and Leifsson, 2013;Wang et al, 2014). Surrogate-based optimization has been applied to economics, robotics, chemistry, physics, civil and environmental engineering, computational fluid dynamics, aerospace designs, etc.…”
Section: Introductionmentioning
confidence: 99%
“…Therefore, it can provide a new idea and approach for the optimization design with great progress and successful application having been achieved in the field of engineering application. However, in practical engineering applications, it always takes several minutes, hours or a couple of days [1][2][3][4] each time to acquire the value of an objective function, such as the fluid mechanics [5][6][7] applied in wing design, the parameter settings in engine controller and the finite element analysis [18] adopted in mechanical structure design. Hence, for the swarm intelligence algorithm with the operating time decided by the computing times of a fitness function, it has gradually aroused the attention of many people about how to reduce the computing time of the objective function to reduce the time spent on optimization [8].…”
Section: Introductionmentioning
confidence: 99%
“…However, since constructing accurate surrogate models is less likely due to the curse of dimensionality, building local surrogate models has only been more intensively explored recently. Ong et al [14,15] combined an evolutionary algorithm with a sequential quadratic programming solver in the spirit of Lamarckian learning, in which the trustregion method for interleaving exact models for the objective and constraint functions with computationally cheap surrogate models during local search was employed. Fitness inheritance, which was first proposed by Smith et al [16], can be seen as a special local surrogate technique, where the fitness of the individual is inherited from its parents or other individuals.…”
Section: Introductionmentioning
confidence: 99%