Data-Interpretation Methodologies for Non-Linear Earthquake Response Predictions of Damaged Structures
Open access
Date
2017Type
- Journal Article
ETH Bibliography
no
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Abstract
Seismic exposure of buildings presents difficult engineering challenges. The principles of seismic design involve structures that sustain damage and still protect inhabitants. Precise and accurate knowledge of the residual capacity of damaged structures is essential for informed decision-making regarding clearance for occupancy after major seismic events. Unless structures are permanently monitored, modal properties derived from ambient vibrations are most likely the only source of measurement data that are available. However, such measurement data are linearly elastic and limited to a low number of vibration modes. Structural identification using hysteretic behavior models that exclusively relies on linear measurement data is a complex inverse engineering task that is further complicated by modeling uncertainty. Three structural identification methodologies that involve probabilistic approaches to data interpretation are compared: error-domain model falsification, Bayesian model updating with traditional assumptions as well as modified Bayesian model updating. While noting the assumptions regarding uncertainty definitions, the accuracy and robustness of identification and subsequent predictions are compared. A case study demonstrates limits on non-linear parameter identification performance and identification of potentially wrong prediction ranges for inappropriate model uncertainty distributions. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000251501Publication status
publishedExternal links
Journal / series
Frontiers in Built EnvironmentVolume
Pages / Article No.
Publisher
Frontiers MediaSubject
Non-linear; Data interpretation; Systematic model error; Robust model extrapolation; Prediction uncertainty; Error-domain model falsification; Bayesian model updating; Aftershock predictionsOrganisational unit
08058 - Singapore-ETH Centre (SEC) / Singapore-ETH Centre (SEC)
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ETH Bibliography
no
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