4.7 Article

Uncertainty quantification in data-driven stochastic subspace identification

Journal

MECHANICAL SYSTEMS AND SIGNAL PROCESSING
Volume 151, Issue -, Pages -

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.ymssp.2020.107338

Keywords

Stochastic subspace identification; Variance estimation; Operational modal analysis

Funding

  1. Research Foundation Flanders (FWO), Belgium [G099014N, G005220N]

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This study focuses on data-driven SSI algorithms for obtaining system matrices through estimating output correlation, conducting a linear sensitivity analysis, validating the accuracy of the estimated description, and demonstrating practical application in operational modal analysis through an experimental case study.
A crucial aspect in system identification is the assessment of the accuracy of the identified system matrices. Stochastic Subspace Identification (SSI) is a widely used approach for the identification of linear systems from output-only data because it combines a high computational robustness and efficiency with a high estimation accuracy. Practical approaches for estimating the (co)variance of system matrices that are identified using SSI exist for the case where the system matrices are obtained from the shift-invariant structure of the extended observability matrix. However, in data-driven SSI, the system matrices are often obtained in a different way, using identified state sequences. This case is treated in the present work, for three common types of weighting. First, it is shown that the estimated system matrices depend entirely on sample output correlation estimates, the covariance of which can be straightforwardly estimated. Subsequently, a linear sensitivity analysis of the data-driven SSI algorithm is performed, such that the covariance of the identified system matrices can be also computed. A memory efficient implementation is obtained by computing the related Jacobian only implicitly. An extensive numerical validation, covering a range of parameter choices, demonstrates the accuracy of the estimated variance of the identified system description. Finally, the practical use of the method in the context of operational modal analysis is demonstrated in an experimental case study. (C) 2020 Elsevier Ltd. All rights reserved.

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