Stochastic subspace identification has become an industrial standard for operational modal analysis because of its computational efficiency and statistical optimality. For the time-domain version of the algorithm, a computationally efficient method exists for the estimation of (co)variances of the identified system matrices and the related modal characteristics. In the present paper, a computationally efficient uncertainty quantification method is developed for a frequency-domain subspace algorithm that starts from nonparametric positive power spectral density estimates. A connection with the time-domain method is made, and the performance is verified against Monte Carlo simulations in a numerical experiment.status: publishe
Stochastic subspace identification (SSI) has become one of the key algorithms for the identification...
A novel method for characterising and propagating system uncertainty in structures subjected to dyna...
The stochastic subspace identification (SSI) method, which is based on a first-order state-space sto...
Abstract We propose in this paper the uncertainty estimation of modal parameters using stochastic su...
In Operational Modal Analysis, the modal parameters (natural frequencies, damping ratios, and mode s...
International audienceThe quantification of statistical uncertainty in modal parameter estimates has...
The formula of stochastic subspace identification method is deduced in details and the program is wr...
International audienceThe vibration response of a structure from ambient excitation is measured and ...
In operational modal analysis, identified modal parameters, e.g., natural frequencies, damping ratio...
© 2015 Elsevier Ltd. All rights reserved. Identified modal characteristics are often used as a basis...
International audienceThe Statistical Modal Energy Analysis (SmEdA) is a variant of the Statistical ...
International audienceModal parameters are estimated from vibration data, thus they are inherently a...
Abstract: Subspace identification algorithms are user friendly, numerical fast and stable and they p...
The present paper is a study of output-only modal estimation based on the stochastic subspace identi...
Structures are often subjected to harmonic excitations in addition to random ambient noise. Under su...
Stochastic subspace identification (SSI) has become one of the key algorithms for the identification...
A novel method for characterising and propagating system uncertainty in structures subjected to dyna...
The stochastic subspace identification (SSI) method, which is based on a first-order state-space sto...
Abstract We propose in this paper the uncertainty estimation of modal parameters using stochastic su...
In Operational Modal Analysis, the modal parameters (natural frequencies, damping ratios, and mode s...
International audienceThe quantification of statistical uncertainty in modal parameter estimates has...
The formula of stochastic subspace identification method is deduced in details and the program is wr...
International audienceThe vibration response of a structure from ambient excitation is measured and ...
In operational modal analysis, identified modal parameters, e.g., natural frequencies, damping ratio...
© 2015 Elsevier Ltd. All rights reserved. Identified modal characteristics are often used as a basis...
International audienceThe Statistical Modal Energy Analysis (SmEdA) is a variant of the Statistical ...
International audienceModal parameters are estimated from vibration data, thus they are inherently a...
Abstract: Subspace identification algorithms are user friendly, numerical fast and stable and they p...
The present paper is a study of output-only modal estimation based on the stochastic subspace identi...
Structures are often subjected to harmonic excitations in addition to random ambient noise. Under su...
Stochastic subspace identification (SSI) has become one of the key algorithms for the identification...
A novel method for characterising and propagating system uncertainty in structures subjected to dyna...
The stochastic subspace identification (SSI) method, which is based on a first-order state-space sto...