This paper proposes a hybrid adaptive sampling algorithm to automate the generation of reduced order models for systems described by large-scale frequency dependent state-space models. The evaluation of the frequency dependent state-space model for each frequency sample can be computationally expensive. The distribution of frequency samples must be optimized to avoid oversampling and undersampling. In order to have an optimum number of frequency samples, the proposed algorithm uses the reflective exploration technique for the adaptive selection of samples, and the sampling is further refined using a binary search to validate the frequency dependent reduced order models. Projection-based model order reduction techniques are used for obtainin...
International audienceRunning a reliability analysis on complex numerical models can be very expensi...
This paper presents a new adaptive sampling strategy for the parametric macromodeling of S-parameter...
Model reduction is a process of approximating higher order original models by comparatively lower or...
This paper proposes a hybrid adaptive sampling algorithm to automate the generation of reduced order...
Traditional model reduction derives reduced models from large-scale systems in a one-time computatio...
Traditional model reduction derives reduced models from large-scale systems in a one-time computatio...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
AbstractIn the context of real time model-based applications, complex high fidelity models may be co...
Abstract—Parameterized reduced order models are important for the design and analysis of microwave s...
Several approaches are presented to identify an experimental system model directly from frequency re...
Reduced-order models (ROMs) become increasingly popular in industrial design and optimization proces...
Reduced-order models (ROMs) become increasingly popular in industrial design and optimization proces...
A model-constrained adaptive sampling methodology is proposed for reduction of large-scale systems w...
Reduced-order models (ROMs) become increasingly popular in industrial design and optimization proces...
A fast algorithm is presented for statistical analysis of large microwave and high-speed circuits wi...
International audienceRunning a reliability analysis on complex numerical models can be very expensi...
This paper presents a new adaptive sampling strategy for the parametric macromodeling of S-parameter...
Model reduction is a process of approximating higher order original models by comparatively lower or...
This paper proposes a hybrid adaptive sampling algorithm to automate the generation of reduced order...
Traditional model reduction derives reduced models from large-scale systems in a one-time computatio...
Traditional model reduction derives reduced models from large-scale systems in a one-time computatio...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
AbstractIn the context of real time model-based applications, complex high fidelity models may be co...
Abstract—Parameterized reduced order models are important for the design and analysis of microwave s...
Several approaches are presented to identify an experimental system model directly from frequency re...
Reduced-order models (ROMs) become increasingly popular in industrial design and optimization proces...
Reduced-order models (ROMs) become increasingly popular in industrial design and optimization proces...
A model-constrained adaptive sampling methodology is proposed for reduction of large-scale systems w...
Reduced-order models (ROMs) become increasingly popular in industrial design and optimization proces...
A fast algorithm is presented for statistical analysis of large microwave and high-speed circuits wi...
International audienceRunning a reliability analysis on complex numerical models can be very expensi...
This paper presents a new adaptive sampling strategy for the parametric macromodeling of S-parameter...
Model reduction is a process of approximating higher order original models by comparatively lower or...