A parametric model order reduction approach for the frequency-domain
analysis of complex industry models is presented. Linear time-invariant subsystem
models are reduced for the use in domain integration approaches in the context
of structural dynamics. These subsystems have a moderate number of resonances
in the considered frequency band but a high-dimensional input parameter space
and a large number of states. A global basis approach is chosen for model order
reduction, in combination with an optimization-based greedy search strategy for the
model training. Krylov subspace methods are employed for local basis generation,
and a goal-oriented error estimate based on residual expressions is developed as
the optimization objective. As the optimization provides solely local maxima of
the non-convex error in parameter space, an in-situ and a-posteriori error evaluation
strategy is combined. On the latter, a statistical error evaluation is performed based on
Bayesian inference. Themethod finally enables parametricmodel order reduction for
industry finite element models with complex modeling techniques and many degrees
of freedom. After discussing the method on a beam example, this is demonstrated
on an automotive example.
«
A parametric model order reduction approach for the frequency-domain
analysis of complex industry models is presented. Linear time-invariant subsystem
models are reduced for the use in domain integration approaches in the context
of structural dynamics. These subsystems have a moderate number of resonances
in the considered frequency band but a high-dimensional input parameter space
and a large number of states. A global basis approach is chosen for model order
reduction, in combination wi...
»