Estimation of the prediction error correlation model in bayesian model updating
Date
2013Keyword
Abstract
In Bayesian model updating, probability density functions of model parameters are updated accounting both for the information contained in the data and for uncertainties present in the measurements and model predictions, requiring a probabilistic model for the error between predictions and observations. Most often, a zero-mean uncorrelated Gaussian prediction error is assumed, although in many engineering applications prediction errors will show non-negligible spatial and/or temporal correlation (e.g. when densely populated sensor grids are used). In this paper, the effect of prediction error correlation on the results of the Bayesian model updating scheme is studied, and it is investigated how a suitable prediction error correlation structure can be selected. In two illustrative applications, it is demonstrated that Bayesian model class selection can be effectively applied to this end, ensuring more realistic modeling and corresponding Bayesian model updating results. © 2013 Taylor & Francis Group, London.
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