A COMPARATIVE EVALUATION OF MODEL ORDER REDUCTION TECHNIQUES FOR FILTER CIRCUITS
Abstract
Filter circuits often yield high-order dynamical models that impose significant computational cost. Model order reduction provides compact surrogate models that preserve dominant input-output behavior while reducing complexity. This paper presents a comparative evaluation of representative Model order reduction techniques for filter circuits, including balanced truncation, stochastic balanced truncation, modal truncation, and positive real balanced truncation. A sixth-order Chebyshev filter model is used as a benchmark. All methods are applied at identical reduced orders and evaluated using H∞ error norms together with time-domain step and impulse responses. The results highlight clear differences in absolute
and relative errors, and step and impulse responses among the considered techniques.
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