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Bayesian Calibration of Coupled Aerothermal Models Using Time-Dependent Data

机译:使用时间依赖数据耦合耦合空气模型的贝叶斯校准

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Accurately quantifying the uncertainty in coupled aerothermoelastic response predictions for hypersonic aircraft structures is a critical and difficult challenge. A dynamic Bayesian network is constructed to enable Bayesian model calibration and confidence assessment of transient, coupled aerothermal models. Time-dependent temperature data from historic hypersonic wind tunnel experiments are incorporated into the dynamic Bayesian network to calibrate uncertain model parameters and model discrepancies through time. Global and incremental model discrepancy implementations are investigated and compared using the Bayes factor metric.
机译:准确地量化过度飞机结构的耦合空气热弹性响应预测的不确定性是一个关键而困难的挑战。构建动态贝叶斯网络,以使贝叶斯模型校准和跨速度的空气液晶模型的置信度评估。历史超声风洞实验的时间依赖温度数据被纳入动态贝叶斯网络,通过时间校准不确定的模型参数和模型差异。通过贝叶斯因子度量来研究并比较全局和增量模型差异实现。

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