The performance of the sequential metamodel based optimization procedure depends strongly on the chosen building blocks for the algorithm, such as the used metamodeling method and sequential improvement criterion. In this study, the effect of these choices on the efficiency of the robust optimization procedure is investigated. A novel sequential improvement criterion for robust optimization is proposed, as well as an improved implementation of radial basis function interpolation suitable for sequential optimization. The leave-one-out cross-validation measure is used to estimate the uncertainty of the radial basis function metamodel. The metamodeling methods and sequential improvement criteria are compared, based on a test with Gaussian rand...
The coupling of finite element simulations to mathematical optimization techniques has contributed s...
Robust optimization determines how the input variables dispersion is propagated on the output variab...
We propose an algorithm for the global optimization of expensive and noisy black box functions using...
The performance of the sequential metamodel based optimization procedure depends strongly on the cho...
Metamodel-based sequential global optimization (SGO) aims for finding the global optimum with a rela...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
The coupling of Finite Element (FE) simulations to mathematical optimization techniques has contribu...
As a result of the increase in accessibility of computational resources and the increase in the powe...
Surrogate models are used within the sequential optimization strategy for forming processes. A seque...
Radial basis functions (RBFs), among other techniques, are used to construct metamodels that approxi...
In order to obtain a robust performance, the established approach when using radial basis function n...
Sequential Parameter Optimization is a model-based optimization methodology, which includes several ...
This research investigates the potential of using meta-modeling techniques in the context of robust ...
In the real world of engineering problems, in order to reduce optimization costs in ph...
During metamodel-based optimization three types of implicit errors are typically made.The first erro...
The coupling of finite element simulations to mathematical optimization techniques has contributed s...
Robust optimization determines how the input variables dispersion is propagated on the output variab...
We propose an algorithm for the global optimization of expensive and noisy black box functions using...
The performance of the sequential metamodel based optimization procedure depends strongly on the cho...
Metamodel-based sequential global optimization (SGO) aims for finding the global optimum with a rela...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
The coupling of Finite Element (FE) simulations to mathematical optimization techniques has contribu...
As a result of the increase in accessibility of computational resources and the increase in the powe...
Surrogate models are used within the sequential optimization strategy for forming processes. A seque...
Radial basis functions (RBFs), among other techniques, are used to construct metamodels that approxi...
In order to obtain a robust performance, the established approach when using radial basis function n...
Sequential Parameter Optimization is a model-based optimization methodology, which includes several ...
This research investigates the potential of using meta-modeling techniques in the context of robust ...
In the real world of engineering problems, in order to reduce optimization costs in ph...
During metamodel-based optimization three types of implicit errors are typically made.The first erro...
The coupling of finite element simulations to mathematical optimization techniques has contributed s...
Robust optimization determines how the input variables dispersion is propagated on the output variab...
We propose an algorithm for the global optimization of expensive and noisy black box functions using...