Structural damage diagnosis based on on-line recursive stochastic subspace identification
Resource
Smart Materials and Structures, 20(5), 055004
Journal
Smart Materials and Structures
Pages
55004
Date Issued
2011
Date
2011
Author(s)
Abstract
This paper presents a recursive stochastic subspace identification (RSSI) technique for on-line and almost real-time structural damage diagnosis using output-only measurements. Through RSSI the time-varying natural frequencies of a system can be identified. To reduce the computation time in conducting LQ decomposition in RSSI, the Givens rotation as well as the matrix operation appending a new data set are derived. The relationship between the size of the Hankel matrix and the data length in each shifting moving window is examined so as to extract the time-varying features of the system without loss of generality and to establish on-line and almost real-time system identification. The result from the RSSI technique can also be applied to structural damage diagnosis. Off-line data-driven stochastic subspace identification was used first to establish the system matrix from the measurements of an undamaged (reference) case. Then the RSSI technique incorporating a Kalman estimator is used to extract the dynamic characteristics of the system through continuous monitoring data. The predicted residual error is defined as a damage feature and through the outlier statistics provides an indicator of damage. Verification of the proposed identification algorithm by using the bridge scouring test data and white noise response data of a reinforced concrete frame structure is conducted.
SDGs
Type
journal article
File(s)![Thumbnail Image]()
Loading...
Name
137.pdf
Size
23.18 KB
Format
Adobe PDF
Checksum
(MD5):43027a53f86be538fa7398259772ea75
