Vector Fitting for Matrix-valued Rational Approximation
Zlatko Drmac, Serkan Gugercin, Christopher Beattie

TL;DR
This paper extends Vector Fitting to matrix-valued functions, addressing challenges like controlling the McMillan degree and improving approximation fidelity, with detailed analysis and new mechanisms for better numerical stability and accuracy.
Contribution
The paper introduces new methods for controlling the McMillan degree in matrix-valued Vector Fitting and connects VF with optimal H2 approximation, enhancing accuracy and stability.
Findings
Controlled McMillan degree growth in large MIMO systems
Improved approximation fidelity via numerical quadrature
Detailed analysis of numerical issues in matrix-valued VF
Abstract
Vector Fitting (VF) is a popular method of constructing rational approximants that provides a least squares fit to frequency response measurements. In an earlier work, we provided an analysis of VF for scalar-valued rational functions and established a connection with optimal approximation. We build on this work and extend the previous framework to include the construction of effective rational approximations to matrix-valued functions, a problem which presents significant challenges that do not appear in the scalar case. Transfer functions associated with multi-input/multi-output (MIMO) dynamical systems typify the class of functions that we consider here. Others have also considered extensions of VF to matrix-valued functions and related numerical implementations are readily available. However to our knowledge, a detailed analysis of numerical issues that arise does not yet…
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