2023
DOI: 10.3390/aerospace10121029
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Prediction of Transonic Flow over Cascades via Graph Embedding Methods on Large-Scale Point Clouds

Xinyue Lan,
Liyue Wang,
Cong Wang
et al.

Abstract: In this research, we introduce a deep-learning-based framework designed for the prediction of transonic flow through a linear cascade utilizing large-scale point-cloud data. In our experimental cases, the predictions demonstrate a nearly four-fold speed improvement compared to traditional CFD calculations while maintaining a commendable level of accuracy. Taking advantage of a multilayer graph structure, the framework can extract both global and local information from the cascade flow field simultaneously and … Show more

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Cited by 1 publication
(2 citation statements)
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“…Wu et al [77] also leveraged the property of GAN combined with CNN to directly establish a one-to-one mapping between a parameterized supercritical airfoil and its corresponding transonic flow field profile over the parametric space. Lan et al [95] presented a novel framework to predict cascades flow fields, utilizing GCN and point clouds to enhance prediction performance, as shown in Figure 4. It has been proved that the innovative framework can reconstruct the internal flow field at a high speed on a large-scale point cloud, while maintaining the accuracy of the prediction.…”
Section: Flow Field Predictionmentioning
confidence: 99%
See 1 more Smart Citation
“…Wu et al [77] also leveraged the property of GAN combined with CNN to directly establish a one-to-one mapping between a parameterized supercritical airfoil and its corresponding transonic flow field profile over the parametric space. Lan et al [95] presented a novel framework to predict cascades flow fields, utilizing GCN and point clouds to enhance prediction performance, as shown in Figure 4. It has been proved that the innovative framework can reconstruct the internal flow field at a high speed on a large-scale point cloud, while maintaining the accuracy of the prediction.…”
Section: Flow Field Predictionmentioning
confidence: 99%
“…It has been that the innovative framework can reconstruct the internal flow field at a high spe large-scale point cloud, while maintaining the accuracy of the prediction. [95].…”
Section: Flow Field Predictionmentioning
confidence: 99%