Metamodels based on responses from designed (numerical) experiments may form efficient approximations to functions in structural analysis. They can improve the efficiency of Engineering Optimization substantially by uncoupling computationally expensive analysis models and (iterative) optimization procedures. In this paper we focus on two strategies for building metamodels, namely Response Surface Methods (RSM) and kriging. We discuss key-concepts for both approaches, present strategies for model training and indicate ways to enhance these metamodeling approaches by including design sensitivity data. The latter may be advantageous in situations where information on design sensitivities is readily available, as is the case with e.g. Finite El...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
The use of statistical techniques to build approximations of expensive computer analysis codes perva...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
The metamodels have developed with a variety of design optimization techniques in structural enginee...
Robust design optimization (RDO) of large-scale engineering systems is computationally intensive and...
3noResponse Surface Methods (RSMs) are statistical and numerical models that approximate the relati...
AbstractThis Invited Lecture covers classic and modern designs, and their metamodels. Classic resolu...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
The use of statistical techniques to build approximations of expensive computer analysis codes perva...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
The metamodels have developed with a variety of design optimization techniques in structural enginee...
Robust design optimization (RDO) of large-scale engineering systems is computationally intensive and...
3noResponse Surface Methods (RSMs) are statistical and numerical models that approximate the relati...
AbstractThis Invited Lecture covers classic and modern designs, and their metamodels. Classic resolu...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
The use of statistical techniques to build approximations of expensive computer analysis codes perva...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...