The widespread use of computer experiments for design optimization has made the issue of reducing computational cost, improving accuracy, removing the “curse of dimensionality” and avoiding expensive function approximation becoming even more important. Metamodeling also known as surrogate modeling, can approximate the actual simulation model allowing for much faster execution time thus becoming a useful method to mitigate these problems. There are two (2) well-known metamodeling techniques which is kriging and radial basis function (RBF) discussed in this paper based on widely used algorithm tool from previous work in modern engineering design of optimization. An integral part of metamodeling is in the method to sample new data from the act...
Metamodels approximate complex multivariate data sets from simulations and experiments. These data s...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76903/1/AIAA-2000-4921-115.pd
The widespread use of computer experiments for design optimization has made the issue of reducing co...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Metamodeling is becoming a rather popular means to approximate the expensive simulations in today’s ...
The use of approximate models or metamodeling has lead to new areas of research in the optimization ...
Abstract Metamodels are widely used during the design process in place of expensive simulation model...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
This paper describes a method to implement an adaptive metamodeling procedure during simulation-base...
Despite the advances in computer capacity, the enormous computational cost of complex engineering si...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
Metamodels approximate complex multivariate data sets from simulations and experiments. These data s...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76903/1/AIAA-2000-4921-115.pd
The widespread use of computer experiments for design optimization has made the issue of reducing co...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Metamodeling is becoming a rather popular means to approximate the expensive simulations in today’s ...
The use of approximate models or metamodeling has lead to new areas of research in the optimization ...
Abstract Metamodels are widely used during the design process in place of expensive simulation model...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
This paper describes a method to implement an adaptive metamodeling procedure during simulation-base...
Despite the advances in computer capacity, the enormous computational cost of complex engineering si...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
Metamodels approximate complex multivariate data sets from simulations and experiments. These data s...
This paper introduces a technique for reducing the sampling size necessary to explore a design space...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76903/1/AIAA-2000-4921-115.pd