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BAYESIAN UPDATING OF NONLINEAR MODEL PREDICTIONS USING MARKOV CHAIN MONTE CARLO SIMULATION

机译:使用马尔可夫链蒙特卡罗模拟的贝叶斯更新非线性模型预测

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摘要

The usual practice in system identification is to use system data to identify one model from a set of possible models and then to use this model for predicting system behavior. In contrast, the present robust predictive approach rigorously combines the predictions of all the possible models, appropriately weighted by their updated probabilities based on the data. This Bayesian system identification approach is applied to update the robust reliability of a dynamical system based on its measured response time histories. A Markov chain simulation method based on the Metropolis-Hastings algorithm and an adaptive scheme is proposed to evaluate the robust reliability integrals. An example for updating the reliability of a Duffing oscillator is given to illustrate the proposed method.
机译:系统识别的通常做法是使用系统数据从一组可能的模型中识别一个模型,然后使用该模型预测系统行为。相反,本鲁棒的预测方法将所有可能模型的预测严格结合,并根据数据根据其更新的概率对其进行适当加权。这种贝叶斯系统识别方法可用于根据其测得的响应时间历史记录更新动态系统的鲁棒可靠性。提出了一种基于Metropolis-Hastings算法和自适应方案的马尔可夫链仿真方法,用于评估鲁棒可靠性积分。给出了一个更新Duffing振荡器可靠性的例子来说明所提出的方法。

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