We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invariant (LTI) systems and parametrized LTI systems. The error bounds estimate the errors of the transfer functions of the reduced-order models, and are independent of the model reduction methods used. It is shown that for some special non-parametrized LTI systems, particularly efficiently computable error bounds can be derived. According to the error bounds, reduced-order models of both non-parametrized and parametrized systems, computed by Krylov subspace based model reduction methods, can be obtained automatically and reliably. Simulations for several examples from engineering applications have demonstrated the robustness of the error bounds
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
Motivated by a recently proposed error estimator for the transfer function of the reduced-order mode...
Motivated by a recently proposed error estimator for the transfer function of the reduced-order mode...
The analysis of a posteriori error estimates used in reduced basis methods leads to a model reductio...
A new approach for computing upper error bounds for reduced-order models of linear time-varying syst...
A new approach for computing upper error bounds for reduced-order models of linear time-varying syst...
This work derives a residual-based a posteriori error estimator for reduced models learned with non-...
This work derives a residual-based a posteriori error estimator for reduced models learned with non-...
AbstractBalanced truncation of discrete linear time-invariant systems is an automatic method once an...
ABSTRACT In recent years, a great effort has been taken focused on the development of reduced order ...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
Motivated by a recently proposed error estimator for the transfer function of the reduced-order mode...
Motivated by a recently proposed error estimator for the transfer function of the reduced-order mode...
The analysis of a posteriori error estimates used in reduced basis methods leads to a model reductio...
A new approach for computing upper error bounds for reduced-order models of linear time-varying syst...
A new approach for computing upper error bounds for reduced-order models of linear time-varying syst...
This work derives a residual-based a posteriori error estimator for reduced models learned with non-...
This work derives a residual-based a posteriori error estimator for reduced models learned with non-...
AbstractBalanced truncation of discrete linear time-invariant systems is an automatic method once an...
ABSTRACT In recent years, a great effort has been taken focused on the development of reduced order ...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...
Several results concerning the properties of least-squares models for linear, time-invariant, discre...