Bayesian Model Updating Approach for Ground-Motion Attenuation Relations
暂无分享,去创建一个
The Bayesian model updating procedure is a powerful and general approach to update the uncertainties in a model response by using the information from available data. It is based on the well-known theorem of Bayes, which states that a posterior (updated) probability distribution for the model parameters conditioned on the data available is proportional to the product between the prior probability distribution and the likelihood function. Herein, the problem of establishing empirical earthquake groundmotion attenuation laws is addressed; in particular, two kinds of regression models are considered. The model parameters are represented by the coefficients of the regression models, and the data consist of a database of strong-motion records from actual earthquakes, where the magnitudes and epicentral distances are known.