We present a general framework for the construction of guaranteed stable and passive multivariate macromodels from sampled frequency responses. The obtained macromodels embed in closed form the dependence on external parameters, through a data-driven approximation of input data samples based on orthogonal polynomial bases. The key novel contribution of this work is an extension to the multivariate and possibly high-dimensional case of Hamiltonian-based passivity check and enforcement algorithms, which can be applied to enforce both uniform stability and uniform passivity of the models. The modeling flow is demonstrated on a representative interconnect example
This paper proposes a hierarchical adaptive sampling scheme for passivity characterization of large-...
This paper presents a robust technique for the macromodeling of time-domain and frequency-domain res...
We present a new parametric macromodeling technique for admittance and impedance input-output repres...
This paper extends the well-established macromod- eling flows based on rational fitting and passivit...
We introduce a multivariate adaptive sampling algorithm for the passivity characterization of parame...
We present an algorithm for passivity verification and enforcement of multivariate macromodels whose...
This paper presents an algorithm for checking and enforcing passivity of behavioral reduced-order ma...
A Robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
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 robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
Reduced-order models are widely used to reduce the computational cost required by the numerical asse...
We propose an algorithm for the identification of guaranteed stable parameterized macromodels from s...
We propose a novel parametric macromodeling technique for admittance and impedance input-output repr...
This paper presents a robust technique for the macromodeling of time-domain and frequency-domain res...
This paper proposes a hierarchical adaptive sampling scheme for passivity characterization of large-...
This paper presents a robust technique for the macromodeling of time-domain and frequency-domain res...
We present a new parametric macromodeling technique for admittance and impedance input-output repres...
This paper extends the well-established macromod- eling flows based on rational fitting and passivit...
We introduce a multivariate adaptive sampling algorithm for the passivity characterization of parame...
We present an algorithm for passivity verification and enforcement of multivariate macromodels whose...
This paper presents an algorithm for checking and enforcing passivity of behavioral reduced-order ma...
A Robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
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 robust algorithm for the extraction of reduced-order behavioral models from sampled frequency resp...
Reduced-order models are widely used to reduce the computational cost required by the numerical asse...
We propose an algorithm for the identification of guaranteed stable parameterized macromodels from s...
We propose a novel parametric macromodeling technique for admittance and impedance input-output repr...
This paper presents a robust technique for the macromodeling of time-domain and frequency-domain res...
This paper proposes a hierarchical adaptive sampling scheme for passivity characterization of large-...
This paper presents a robust technique for the macromodeling of time-domain and frequency-domain res...
We present a new parametric macromodeling technique for admittance and impedance input-output repres...