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首页> 外文期刊>Journal of Fluids and Structures >Multifidelity flutter prediction using regression cokriging with adaptive sampling
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Multifidelity flutter prediction using regression cokriging with adaptive sampling

机译:利用自适应采样的回归录取的多倍性颤动预测

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摘要

This work presents a flutter prediction approach that uses regression cokriging meta-models of generalized aerodynamic influence coefficients with adaptive sampling based on propagated model uncertainty along the flutter boundary. The use of regression cokriging models is compared to cokriging and regression cokriging with reinterpolation, as well as their single-fidelity counterparts. Comparisons to direct quantity-of-interest-based metamodeling are also shown. Several infill criteria based on the propagated flutter speed uncertainty are demonstrated on common flutter test cases. The value of adaptive sampling, multiple fidelity levels, and metamodeling of intermediate quantities is investigated by quantifying average cost and error metrics for the cases. Scalability with the number of structural modes is also investigated to gauge how the approach might fare for more conventional aircraft. Overall, the main benefits seen in this work stem from modeling intermediate quantities, with direct modeling costing six to eight times as much for multifidelity approaches, and three to five times as much for the single-fidelity comparators. In addition, using multiple fidelities was more accurate and required fewer infill points for convergence, leading to a cost savings of roughly 25% to 70%, depending on the case. Published by Elsevier Ltd.
机译:该工作提出了一种颤动预测方法,其使用基于传播模型不确定性的自适应采样的广义空气动力学影响系数的回归焦化的元模型。将回归焦化模型的使用与重新候解以及单一保真对应物进行比较。还显示了直接兴趣数量的元素的比较。基于传播的颤动速度不确定性的几个填写标准在常见的颤动测试用例上证明。通过量化案例的平均成本和误差度量来研究自适应采样,多种保真度和元素的中间量的元素的值。还研究了结构模式数量的可扩展性,以衡量该方法如何为更传统的飞机提供票价。总的来说,这项工作中所见的主要益处源于中间数量建模,直接建模为多尺寸的多级别方法的速度六到八倍,以及单一保真比较器的三倍至五倍。此外,使用多种保真度更准确,需要更少的收敛点,导致成本节省约为25%至70%,具体取决于案例。 elsevier有限公司出版

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