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Updating models and their uncertainties. I: Bayesian statistical framework

机译:更新模型及其不确定性。一:贝叶斯统计框架

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The problem of updating a structural model and its associated uncertainties by utilizing dynamic response data is addressed using a Bayesian statistical framework that can handle the inherent ill-conditioning and possible nonuniqueness in model updating applications. The objective is not only to give more accurate response predictions for prescribed dynamic loadings but also to provide a quantitative assessment of this accuracy. In the methodology presented, the updated (optimal) models within a chosen class of structural models are the most probable based on the structural data if all the models are equally plausible a priori. The prediction accuracy of the optimal structural models is given by also updating probability models for the prediction error. The precision of the parameter estimates of the optimal structural models, as well as the precision of the optimal prediction-error parameters, can be examined. A large-sample asymptotic expression is given for the updated predictive probability distribution of the uncertain structural response, which is a weighted average of the predictive probability distributions for each optimal model. This predictive distribution can be used to make model predictions despite possible nonuniqueness in the optimal models. [References: 31]
机译:使用贝叶斯统计框架解决了通过利用动态响应数据更新结构模型及其相关不确定性的问题,该框架可以处理模型更新应用程序中的固有不适和可能的非唯一性。目的不仅是针对规定的动态载荷给出更准确的响应预测,而且还提供对此精度的定量评估。在提出的方法中,如果所有模型都具有合理的先验性,则根据结构数据,在选定的结构模型类别中更新(最优)模型的可能性最大。通过更新预测误差的概率模型,可以得出最佳结构模型的预测精度。可以检查最佳结构模型的参数估计的精度以及最佳预测误差参数的精度。对于不确定结构响应的更新预测概率分布,给出了一个大样本渐近表达式,该表达式是每个最佳模型的预测概率分布的加权平均值。尽管最佳模型中可能存在非唯一性,但该预测分布仍可用于进行模型预测。 [参考:31]

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