Linear time invariant system models are insufficient for physical systems which have deterministic or stochastic time varying parameters. These parameters can be important to system performance, as in the case of a vehicle suspension, or safety, as in the case of a structural health monitoring problem. Time varying models are difficult to uniquely identify because they can have many parameters. For deterministic systems, researchers often assume input bases of variation or assume the bandwidth of variation. For stochastic systems, researchers often assume the correlation structure of the system parameters and the input. This thesis presents the novel application of matrix calculus methods which allow an analyst to choose the assumed portion...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
Linear time invariant system models are insufficient for physical systems which have deterministic o...
Linear time invariant system models are insufficient for physical systems which have deterministic o...
In this paper we present a review of some recent results for identification of linear dynamic system...
In this paper we present a review of some recent results for identification of linear dynamic system...
In this paper we present a review of some recent results for identification of linear dynamic system...
Many engineering structures, such as cranes, traffic–excited bridges, flexible mechanisms and roboti...
System identification is a powerful technique to build a model from measurement data by using method...
The standard machinery for system identification of linear time invariant (LTI) models delivers a no...
Many engineering structures, such as cranes, traffic-excited bridges, flexible mechanisms and roboti...
A probabilistic methodology is presented for obtaining the variability and statistics of the dynami...
Uncertainties need to be taken into account for credible predictions of the dy-namic response of com...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
Linear time invariant system models are insufficient for physical systems which have deterministic o...
Linear time invariant system models are insufficient for physical systems which have deterministic o...
In this paper we present a review of some recent results for identification of linear dynamic system...
In this paper we present a review of some recent results for identification of linear dynamic system...
In this paper we present a review of some recent results for identification of linear dynamic system...
Many engineering structures, such as cranes, traffic–excited bridges, flexible mechanisms and roboti...
System identification is a powerful technique to build a model from measurement data by using method...
The standard machinery for system identification of linear time invariant (LTI) models delivers a no...
Many engineering structures, such as cranes, traffic-excited bridges, flexible mechanisms and roboti...
A probabilistic methodology is presented for obtaining the variability and statistics of the dynami...
Uncertainties need to be taken into account for credible predictions of the dy-namic response of com...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...
We consider linear dynamical systems including random parameters for uncertainty quantification. A s...