This paper is concerned with approximations for expensive function evaluation – the expensive functions arising in an engineering design context. The problem of reducing the computational cost of generating sufficient learning samples is addressed. Several approaches of using a priori knowledge to achieve computational economy are presented. In all these, the results of a cheap model are treated as knowledge to be incorporated in the training process. Several approaches are described here: in particular, we focus on neural based systems. This approach is then developed as a new knowledge-based kriging model which is shown to be as accurate as neural based alternatives while being much easier to train. Examples from the domain of structural ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
This paper describes how knowledge engineering techniques can be employed within optimization design...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
Focused on efficient simulation-driven multi-fidelity optimization techniques, this monograph on sim...
In this paper we discuss two statistical techniques for achieving computational economy during the o...
Many aspects of optimization, including problem formulation, algorithm selection and the interpretat...
The use of surrogate models (response surface models, curve fits) of various types (radial basis fun...
Simulation-based design optimization methods commonly treat simulation as a black-box function. An a...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Response surfaces are being used to create meta-models of expensive computer experiments (such as CF...
In the robust shape optimization context, the evaluation cost of numerical models is reduced by the ...
In a world where new products are developed using computer simulations, and where every aspect can b...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
This paper describes how knowledge engineering techniques can be employed within optimization design...
Metamodels based on responses from designed (numerical) experiments may form efficient approximation...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
Focused on efficient simulation-driven multi-fidelity optimization techniques, this monograph on sim...
In this paper we discuss two statistical techniques for achieving computational economy during the o...
Many aspects of optimization, including problem formulation, algorithm selection and the interpretat...
The use of surrogate models (response surface models, curve fits) of various types (radial basis fun...
Simulation-based design optimization methods commonly treat simulation as a black-box function. An a...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Response surfaces are being used to create meta-models of expensive computer experiments (such as CF...
In the robust shape optimization context, the evaluation cost of numerical models is reduced by the ...
In a world where new products are developed using computer simulations, and where every aspect can b...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
This paper describes how knowledge engineering techniques can be employed within optimization design...