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Sequential Experimental Design and Model Calibration for Targeted Events

机译:针对性事件的顺序实验设计与模型校准

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Model calibration is often performed with a limited number of data points due to the significant cost of high fidelity simulations or experiments. To capture specific events, such as failure, optimal data collection methods can aid in achieving globally accurate models that can also predict targeted events. In this research, the expected information gain criterion for experimental design is used to determine the most informative designs for sequential calibration of uncertain model parameters. For accurate prediction of events of interest, the Targeted Information Gain for Error Reduction (TIGER) method is introduced to balance the placement of exploration points in the design space based on model accuracy and capturing the event of interest. This approach was compared to using sequential and all-at-once random data collection methods. The comparison of global and local prediction errors indicated that this is a feasible approach based on an analytical two-dimensional example. The method was also successful in a classification problem for flutter and critical limit cycle oscillation amplitude for a panel in hypersonic flow.
机译:由于高保真模拟或实验的显着成本,通常具有有限数量的数据点模型校准。捕获特定事件,如失败,最佳数据收集方法可以帮助实现还可以预测目标事件的全局准确的模型。在该研究中,用于实验设计的预期信息增益标准用于确定用于不确定模型参数的连续校准的最具信息性的设计。为了准确预测感兴趣的事件,引入了误差减少(TIGER)方法的目标信息增益,以基于模型精度和捕获感兴趣的事件来平衡设计空间中的探索点的放置。将这种方法进行比较,以使用顺序和全部随机数据收集方法。全局和局部预测误差的比较表明这是基于分析二维示例的可行方法。该方法在超声波流量中的面板的颤动和临界限制周期振荡幅度的分类问题中也是成功的。

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