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Bayesian updating, model class selection and robust stochastic predictions of structural response

机译:贝叶斯更新,模型类选择和结构应答的强大随机预测

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A fundamental issue when predicting structural response by using mathematical models is how to treat both modeling and excitation uncertainty. A general framework for this is presented which uses probability as a multi-valued conditional logic for quantitative plausible reasoning in the presence of uncertainty due to incomplete information. The fundamental probability models that represent the structure's uncertain behavior are specified by the choice of a stochastic system model class: a set of input-output probability models for the structure and a prior probability distribution over this set that quantifies the relative plausibility of each model. A model class can be constructed from a parameterized deterministic structural model by stochastic embedding utilizing Jaynes' Principle of Maximum Information Entropy. Robust predictive analyses use the entire model class with the probabilistic predictions of each model being weighted by its prior probability, or if structural response data is available, by its posterior probability from Bayes' Theorem for the model class. Additional robustness to modeling uncertainty comes from combining the robust predictions of each model class in a set of competing candidates weighted by the prior or posterior probability of the model class, the latter being computed from Bayes' Theorem. This higherlevel application of Bayes' Theorem automatically applies a quantitative Ockham razor that penalizes the data-fit of more complex model classes that extract more information from the data. Robust predictive analyses involve integrals over highdimensional spaces that usually must be evaluated numerically. Published applications have used Laplace's method of asymptotic approximation or Markov Chain Monte Carlo algorithms.
机译:通过使用数学模型预测结构响应时的一个基本问题是如何看待这两种建模和激励的不确定性。提出了一种用于此的总体框架,它使用概率作为在不确定性的存在定量合理推理多值条件逻辑由于不完整的信息。用于结构的一组输入输出概率模型,并且在这个组量化每个模型的相对似然性先验概率分布:表示该结构的不确定行为的基本概率模型由随机系统模型类的选择指定。模型类可以从一个参数确定的结构模型通过利用Jaynes的最大信息熵的原理随机嵌入构成。鲁棒预测分析使用与每个模型的概率预测整个模型类通过事先概率进行加权,或者如果结构响应数据是可用的,通过从贝叶斯定理其后验概率的模型类。额外的鲁棒性模型的不确定性来自于一组由模型类的现有或后验概率加权竞争的候选人的每个模型类的健壮的预测组合,后者从贝叶斯定理来计算。此贝叶斯的更高一级的应用定理自动应用定量奥卡姆剃刀该惩罚该从数据中提取的详细信息更复杂的模型类的数据拟合。强大的预测分析涉及过,通常必须进行数值计算高维空间的积分。发布的应用程序使用了渐进近似或马尔可夫链蒙特卡罗算法的拉普拉斯方法。

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