We propose an algorithm for the identification of guaranteed stable parameterized macromodels from sampled frequency responses. The proposed scheme is based on the standard Sanathanan-Koerner iteration in its parameterized form, which is regularized by adding a set of inequality constraints for enforcing the positiveness of the model denominator at suitable discrete points. We show that an ad hoc aggregation of such constraints is able to stabilize the iterative scheme by significantly improving its convergence properties, while guaranteeing uniformly stable model poles as the parameter(s) change within their design range
This paper discusses various approaches for tuning the accuracy of rational macromodels obtained via...
We present a new parametric macromodeling technique for admittance and impedance input-output repres...
We address the generation of broadband macromodels of complex linear systems via rational curve fitt...
Reduced-order models are widely used to reduce the computational cost required by the numerical asse...
We present a general framework for the fully automated extraction of stable and passive parameterize...
A Robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
A robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
This paper proposes a fully automated procedure for the generation of behavioral time-domain macromo...
We present a general framework for the construction of guaranteed stable and passive multivariate ma...
This paper extends the well-established macromod- eling flows based on rational fitting and passivit...
This paper presents an algorithm for checking and enforcing passivity of behavioral reduced-order ma...
We introduce a multivariate adaptive sampling algorithm for the passivity characterization of parame...
This paper introduces a fully automated greedy algorithm for the construction of parameterized behav...
This paper presents an algorithm for checking and enforcing passivity of behavioral reduced-order ma...
A novel state-space realization for parameterized macromodeling is proposed in this paper. A judicio...
This paper discusses various approaches for tuning the accuracy of rational macromodels obtained via...
We present a new parametric macromodeling technique for admittance and impedance input-output repres...
We address the generation of broadband macromodels of complex linear systems via rational curve fitt...
Reduced-order models are widely used to reduce the computational cost required by the numerical asse...
We present a general framework for the fully automated extraction of stable and passive parameterize...
A Robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
A robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
This paper proposes a fully automated procedure for the generation of behavioral time-domain macromo...
We present a general framework for the construction of guaranteed stable and passive multivariate ma...
This paper extends the well-established macromod- eling flows based on rational fitting and passivit...
This paper presents an algorithm for checking and enforcing passivity of behavioral reduced-order ma...
We introduce a multivariate adaptive sampling algorithm for the passivity characterization of parame...
This paper introduces a fully automated greedy algorithm for the construction of parameterized behav...
This paper presents an algorithm for checking and enforcing passivity of behavioral reduced-order ma...
A novel state-space realization for parameterized macromodeling is proposed in this paper. A judicio...
This paper discusses various approaches for tuning the accuracy of rational macromodels obtained via...
We present a new parametric macromodeling technique for admittance and impedance input-output repres...
We address the generation of broadband macromodels of complex linear systems via rational curve fitt...