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首页> 外文期刊>Journal of Engineering Mechanics >Model selection using response measurements: Bayesian probabilistic approach
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Model selection using response measurements: Bayesian probabilistic approach

机译:使用响应测量进行模型选择:贝叶斯概率方法

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摘要

A Bayesian probabilistic approach is presented for selecting the most plausible class of models for a structural or mechanical system within some specified set of model classes, based on system response data. The crux of the approach is to rank the classes of models based on their probabilities conditional on the response data which can be calculated based on Bayes' theorem and an asymptotic expansion for the evidence for each model class. The approach provides a quantitative expression of a principle of model parsimony or of Ockham's razor which in this context can be stated as "simpler models are to be preferred over unnecessarily complicated ones." Examples are presented to illustrate the method using a single-degree-of-freedom bilinear hysteretic system, a linear two-story frame, and a ten-story shear building, all of which are subjected to seismic excitation.
机译:提出了一种贝叶斯概率方法,用于根据系统响应数据为一组指定的模型类别中的结构或机械系统选择最合理的模型类别。该方法的关键在于根据模型的概率对模型类别进行排序,这些概率可以基于贝叶斯定理和针对每个模型类别的证据的渐近展开式计算得出的响应数据。该方法提供了模型简约性原理或Ockham剃刀原理的定量表达,在这种情况下,可以说是“较简单的模型优于不必要的复杂模型”。举例说明了使用单自由度双线性滞后系统,线性两层框架和十层剪切建筑物的方法,所有这些都受到地震激励。

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